pose-detect/ultralytics/engine/exporter.py

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2024-08-14 16:10:21 +08:00
# Ultralytics YOLO 🚀, AGPL-3.0 license
"""
Export a YOLOv8 PyTorch model to other formats. TensorFlow exports authored by https://github.com/zldrobit
Format | `format=argument` | Model
--- | --- | ---
PyTorch | - | yolov8n.pt
TorchScript | `torchscript` | yolov8n.torchscript
ONNX | `onnx` | yolov8n.onnx
OpenVINO | `openvino` | yolov8n_openvino_model/
TensorRT | `engine` | yolov8n.engine
CoreML | `coreml` | yolov8n.mlpackage
TensorFlow SavedModel | `saved_model` | yolov8n_saved_model/
TensorFlow GraphDef | `pb` | yolov8n.pb
TensorFlow Lite | `tflite` | yolov8n.tflite
TensorFlow Edge TPU | `edgetpu` | yolov8n_edgetpu.tflite
TensorFlow.js | `tfjs` | yolov8n_web_model/
PaddlePaddle | `paddle` | yolov8n_paddle_model/
NCNN | `ncnn` | yolov8n_ncnn_model/
Requirements:
$ pip install "ultralytics[export]"
Python:
from ultralytics import YOLO
model = YOLO('yolov8n.pt')
results = model.export(format='onnx')
CLI:
$ yolo mode=export model=yolov8n.pt format=onnx
Inference:
$ yolo predict model=yolov8n.pt # PyTorch
yolov8n.torchscript # TorchScript
yolov8n.onnx # ONNX Runtime or OpenCV DNN with dnn=True
yolov8n_openvino_model # OpenVINO
yolov8n.engine # TensorRT
yolov8n.mlpackage # CoreML (macOS-only)
yolov8n_saved_model # TensorFlow SavedModel
yolov8n.pb # TensorFlow GraphDef
yolov8n.tflite # TensorFlow Lite
yolov8n_edgetpu.tflite # TensorFlow Edge TPU
yolov8n_paddle_model # PaddlePaddle
yolov8n_ncnn_model # NCNN
TensorFlow.js:
$ cd .. && git clone https://github.com/zldrobit/tfjs-yolov5-example.git && cd tfjs-yolov5-example
$ npm install
$ ln -s ../../yolov5/yolov8n_web_model public/yolov8n_web_model
$ npm start
"""
import gc
import json
import os
import shutil
import subprocess
import time
import warnings
from copy import deepcopy
from datetime import datetime
from pathlib import Path
import numpy as np
import torch
from ultralytics.cfg import TASK2DATA, get_cfg
from ultralytics.data import build_dataloader
from ultralytics.data.dataset import YOLODataset
from ultralytics.data.utils import check_cls_dataset, check_det_dataset
from ultralytics.nn.autobackend import check_class_names, default_class_names
from ultralytics.nn.modules import C2f, Detect, RTDETRDecoder
from ultralytics.nn.tasks import DetectionModel, SegmentationModel, WorldModel
from ultralytics.utils import (
ARM64,
DEFAULT_CFG,
IS_JETSON,
LINUX,
LOGGER,
MACOS,
PYTHON_VERSION,
ROOT,
WINDOWS,
__version__,
callbacks,
colorstr,
get_default_args,
yaml_save,
)
from ultralytics.utils.checks import check_imgsz, check_is_path_safe, check_requirements, check_version
from ultralytics.utils.downloads import attempt_download_asset, get_github_assets, safe_download
from ultralytics.utils.files import file_size, spaces_in_path
from ultralytics.utils.ops import Profile
from ultralytics.utils.torch_utils import TORCH_1_13, get_latest_opset, select_device, smart_inference_mode
def export_formats():
"""YOLOv8 export formats."""
import pandas # scope for faster 'import ultralytics'
x = [
["PyTorch", "-", ".pt", True, True],
["TorchScript", "torchscript", ".torchscript", True, True],
["ONNX", "onnx", ".onnx", True, True],
["OpenVINO", "openvino", "_openvino_model", True, False],
["TensorRT", "engine", ".engine", False, True],
["CoreML", "coreml", ".mlpackage", True, False],
["TensorFlow SavedModel", "saved_model", "_saved_model", True, True],
["TensorFlow GraphDef", "pb", ".pb", True, True],
["TensorFlow Lite", "tflite", ".tflite", True, False],
["TensorFlow Edge TPU", "edgetpu", "_edgetpu.tflite", True, False],
["TensorFlow.js", "tfjs", "_web_model", True, False],
["PaddlePaddle", "paddle", "_paddle_model", True, True],
["NCNN", "ncnn", "_ncnn_model", True, True],
]
return pandas.DataFrame(x, columns=["Format", "Argument", "Suffix", "CPU", "GPU"])
def gd_outputs(gd):
"""TensorFlow GraphDef model output node names."""
name_list, input_list = [], []
for node in gd.node: # tensorflow.core.framework.node_def_pb2.NodeDef
name_list.append(node.name)
input_list.extend(node.input)
return sorted(f"{x}:0" for x in list(set(name_list) - set(input_list)) if not x.startswith("NoOp"))
def try_export(inner_func):
"""YOLOv8 export decorator, i.e. @try_export."""
inner_args = get_default_args(inner_func)
def outer_func(*args, **kwargs):
"""Export a model."""
prefix = inner_args["prefix"]
try:
with Profile() as dt:
f, model = inner_func(*args, **kwargs)
LOGGER.info(f"{prefix} export success ✅ {dt.t:.1f}s, saved as '{f}' ({file_size(f):.1f} MB)")
return f, model
except Exception as e:
LOGGER.info(f"{prefix} export failure ❌ {dt.t:.1f}s: {e}")
raise e
return outer_func
class Exporter:
"""
A class for exporting a model.
Attributes:
args (SimpleNamespace): Configuration for the exporter.
callbacks (list, optional): List of callback functions. Defaults to None.
"""
def __init__(self, cfg=DEFAULT_CFG, overrides=None, _callbacks=None):
"""
Initializes the Exporter class.
Args:
cfg (str, optional): Path to a configuration file. Defaults to DEFAULT_CFG.
overrides (dict, optional): Configuration overrides. Defaults to None.
_callbacks (dict, optional): Dictionary of callback functions. Defaults to None.
"""
self.args = get_cfg(cfg, overrides)
if self.args.format.lower() in {"coreml", "mlmodel"}: # fix attempt for protobuf<3.20.x errors
os.environ["PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION"] = "python" # must run before TensorBoard callback
self.callbacks = _callbacks or callbacks.get_default_callbacks()
callbacks.add_integration_callbacks(self)
@smart_inference_mode()
def __call__(self, model=None) -> str:
"""Returns list of exported files/dirs after running callbacks."""
self.run_callbacks("on_export_start")
t = time.time()
fmt = self.args.format.lower() # to lowercase
if fmt in {"tensorrt", "trt"}: # 'engine' aliases
fmt = "engine"
if fmt in {"mlmodel", "mlpackage", "mlprogram", "apple", "ios", "coreml"}: # 'coreml' aliases
fmt = "coreml"
fmts = tuple(export_formats()["Argument"][1:]) # available export formats
flags = [x == fmt for x in fmts]
if sum(flags) != 1:
raise ValueError(f"Invalid export format='{fmt}'. Valid formats are {fmts}")
jit, onnx, xml, engine, coreml, saved_model, pb, tflite, edgetpu, tfjs, paddle, ncnn = flags # export booleans
is_tf_format = any((saved_model, pb, tflite, edgetpu, tfjs))
# Device
if fmt == "engine" and self.args.device is None:
LOGGER.warning("WARNING ⚠️ TensorRT requires GPU export, automatically assigning device=0")
self.args.device = "0"
self.device = select_device("cpu" if self.args.device is None else self.args.device)
# Checks
if not hasattr(model, "names"):
model.names = default_class_names()
model.names = check_class_names(model.names)
if self.args.half and self.args.int8:
LOGGER.warning("WARNING ⚠️ half=True and int8=True are mutually exclusive, setting half=False.")
self.args.half = False
if self.args.half and onnx and self.device.type == "cpu":
LOGGER.warning("WARNING ⚠️ half=True only compatible with GPU export, i.e. use device=0")
self.args.half = False
assert not self.args.dynamic, "half=True not compatible with dynamic=True, i.e. use only one."
self.imgsz = check_imgsz(self.args.imgsz, stride=model.stride, min_dim=2) # check image size
if self.args.int8 and (engine or xml):
self.args.dynamic = True # enforce dynamic to export TensorRT INT8; ensures ONNX is dynamic
if self.args.optimize:
assert not ncnn, "optimize=True not compatible with format='ncnn', i.e. use optimize=False"
assert self.device.type == "cpu", "optimize=True not compatible with cuda devices, i.e. use device='cpu'"
if edgetpu:
if not LINUX:
raise SystemError("Edge TPU export only supported on Linux. See https://coral.ai/docs/edgetpu/compiler")
elif self.args.batch != 1: # see github.com/ultralytics/ultralytics/pull/13420
LOGGER.warning("WARNING ⚠️ Edge TPU export requires batch size 1, setting batch=1.")
self.args.batch = 1
if isinstance(model, WorldModel):
LOGGER.warning(
"WARNING ⚠️ YOLOWorld (original version) export is not supported to any format.\n"
"WARNING ⚠️ YOLOWorldv2 models (i.e. 'yolov8s-worldv2.pt') only support export to "
"(torchscript, onnx, openvino, engine, coreml) formats. "
"See https://docs.ultralytics.com/models/yolo-world for details."
)
if self.args.int8 and not self.args.data:
self.args.data = DEFAULT_CFG.data or TASK2DATA[getattr(model, "task", "detect")] # assign default data
LOGGER.warning(
"WARNING ⚠️ INT8 export requires a missing 'data' arg for calibration. "
f"Using default 'data={self.args.data}'."
)
# Input
im = torch.zeros(self.args.batch, 3, *self.imgsz).to(self.device)
file = Path(
getattr(model, "pt_path", None) or getattr(model, "yaml_file", None) or model.yaml.get("yaml_file", "")
)
if file.suffix in {".yaml", ".yml"}:
file = Path(file.name)
# Update model
model = deepcopy(model).to(self.device)
for p in model.parameters():
p.requires_grad = False
model.eval()
model.float()
model = model.fuse()
for m in model.modules():
if isinstance(m, (Detect, RTDETRDecoder)): # includes all Detect subclasses like Segment, Pose, OBB
m.dynamic = self.args.dynamic
m.export = True
m.format = self.args.format
elif isinstance(m, C2f) and not is_tf_format:
# EdgeTPU does not support FlexSplitV while split provides cleaner ONNX graph
m.forward = m.forward_split
y = None
for _ in range(2):
y = model(im) # dry runs
if self.args.half and onnx and self.device.type != "cpu":
im, model = im.half(), model.half() # to FP16
# Filter warnings
warnings.filterwarnings("ignore", category=torch.jit.TracerWarning) # suppress TracerWarning
warnings.filterwarnings("ignore", category=UserWarning) # suppress shape prim::Constant missing ONNX warning
warnings.filterwarnings("ignore", category=DeprecationWarning) # suppress CoreML np.bool deprecation warning
# Assign
self.im = im
self.model = model
self.file = file
self.output_shape = (
tuple(y.shape)
if isinstance(y, torch.Tensor)
else tuple(tuple(x.shape if isinstance(x, torch.Tensor) else []) for x in y)
)
self.pretty_name = Path(self.model.yaml.get("yaml_file", self.file)).stem.replace("yolo", "YOLO")
data = model.args["data"] if hasattr(model, "args") and isinstance(model.args, dict) else ""
description = f'Ultralytics {self.pretty_name} model {f"trained on {data}" if data else ""}'
self.metadata = {
"description": description,
"author": "Ultralytics",
"date": datetime.now().isoformat(),
"version": __version__,
"license": "AGPL-3.0 License (https://ultralytics.com/license)",
"docs": "https://docs.ultralytics.com",
"stride": int(max(model.stride)),
"task": model.task,
"batch": self.args.batch,
"imgsz": self.imgsz,
"names": model.names,
} # model metadata
if model.task == "pose":
self.metadata["kpt_shape"] = model.model[-1].kpt_shape
LOGGER.info(
f"\n{colorstr('PyTorch:')} starting from '{file}' with input shape {tuple(im.shape)} BCHW and "
f'output shape(s) {self.output_shape} ({file_size(file):.1f} MB)'
)
# Exports
f = [""] * len(fmts) # exported filenames
if jit or ncnn: # TorchScript
f[0], _ = self.export_torchscript()
if engine: # TensorRT required before ONNX
f[1], _ = self.export_engine()
if onnx: # ONNX
f[2], _ = self.export_onnx()
if xml: # OpenVINO
f[3], _ = self.export_openvino()
if coreml: # CoreML
f[4], _ = self.export_coreml()
if is_tf_format: # TensorFlow formats
self.args.int8 |= edgetpu
f[5], keras_model = self.export_saved_model()
if pb or tfjs: # pb prerequisite to tfjs
f[6], _ = self.export_pb(keras_model=keras_model)
if tflite:
f[7], _ = self.export_tflite(keras_model=keras_model, nms=False, agnostic_nms=self.args.agnostic_nms)
if edgetpu:
f[8], _ = self.export_edgetpu(tflite_model=Path(f[5]) / f"{self.file.stem}_full_integer_quant.tflite")
if tfjs:
f[9], _ = self.export_tfjs()
if paddle: # PaddlePaddle
f[10], _ = self.export_paddle()
if ncnn: # NCNN
f[11], _ = self.export_ncnn()
# Finish
f = [str(x) for x in f if x] # filter out '' and None
if any(f):
f = str(Path(f[-1]))
square = self.imgsz[0] == self.imgsz[1]
s = (
""
if square
else f"WARNING ⚠️ non-PyTorch val requires square images, 'imgsz={self.imgsz}' will not "
f"work. Use export 'imgsz={max(self.imgsz)}' if val is required."
)
imgsz = self.imgsz[0] if square else str(self.imgsz)[1:-1].replace(" ", "")
predict_data = f"data={data}" if model.task == "segment" and fmt == "pb" else ""
q = "int8" if self.args.int8 else "half" if self.args.half else "" # quantization
LOGGER.info(
f'\nExport complete ({time.time() - t:.1f}s)'
f"\nResults saved to {colorstr('bold', file.parent.resolve())}"
f'\nPredict: yolo predict task={model.task} model={f} imgsz={imgsz} {q} {predict_data}'
f'\nValidate: yolo val task={model.task} model={f} imgsz={imgsz} data={data} {q} {s}'
f'\nVisualize: https://netron.app'
)
self.run_callbacks("on_export_end")
return f # return list of exported files/dirs
def get_int8_calibration_dataloader(self, prefix=""):
"""Build and return a dataloader suitable for calibration of INT8 models."""
LOGGER.info(f"{prefix} collecting INT8 calibration images from 'data={self.args.data}'")
data = (check_cls_dataset if self.model.task == "classify" else check_det_dataset)(self.args.data)
dataset = YOLODataset(
data[self.args.split or "val"],
data=data,
task=self.model.task,
imgsz=self.imgsz[0],
augment=False,
batch_size=self.args.batch * 2, # NOTE TensorRT INT8 calibration should use 2x batch size
)
n = len(dataset)
if n < 300:
LOGGER.warning(f"{prefix} WARNING ⚠️ >300 images recommended for INT8 calibration, found {n} images.")
return build_dataloader(dataset, batch=self.args.batch * 2, workers=0) # required for batch loading
@try_export
def export_torchscript(self, prefix=colorstr("TorchScript:")):
"""YOLOv8 TorchScript model export."""
LOGGER.info(f"\n{prefix} starting export with torch {torch.__version__}...")
f = self.file.with_suffix(".torchscript")
ts = torch.jit.trace(self.model, self.im, strict=False)
extra_files = {"config.txt": json.dumps(self.metadata)} # torch._C.ExtraFilesMap()
if self.args.optimize: # https://pytorch.org/tutorials/recipes/mobile_interpreter.html
LOGGER.info(f"{prefix} optimizing for mobile...")
from torch.utils.mobile_optimizer import optimize_for_mobile
optimize_for_mobile(ts)._save_for_lite_interpreter(str(f), _extra_files=extra_files)
else:
ts.save(str(f), _extra_files=extra_files)
return f, None
@try_export
def export_onnx(self, prefix=colorstr("ONNX:")):
"""YOLOv8 ONNX export."""
requirements = ["onnx>=1.12.0"]
if self.args.simplify:
requirements += ["onnxslim>=0.1.31", "onnxruntime" + ("-gpu" if torch.cuda.is_available() else "")]
check_requirements(requirements)
import onnx # noqa
opset_version = self.args.opset or get_latest_opset()
LOGGER.info(f"\n{prefix} starting export with onnx {onnx.__version__} opset {opset_version}...")
f = str(self.file.with_suffix(".onnx"))
output_names = ["output0", "output1"] if isinstance(self.model, SegmentationModel) else ["output0"]
dynamic = self.args.dynamic
if dynamic:
dynamic = {"images": {0: "batch", 2: "height", 3: "width"}} # shape(1,3,640,640)
if isinstance(self.model, SegmentationModel):
dynamic["output0"] = {0: "batch", 2: "anchors"} # shape(1, 116, 8400)
dynamic["output1"] = {0: "batch", 2: "mask_height", 3: "mask_width"} # shape(1,32,160,160)
elif isinstance(self.model, DetectionModel):
dynamic["output0"] = {0: "batch", 2: "anchors"} # shape(1, 84, 8400)
torch.onnx.export(
self.model.cpu() if dynamic else self.model, # dynamic=True only compatible with cpu
self.im.cpu() if dynamic else self.im,
f,
verbose=False,
opset_version=opset_version,
do_constant_folding=True, # WARNING: DNN inference with torch>=1.12 may require do_constant_folding=False
input_names=["images"],
output_names=output_names,
dynamic_axes=dynamic or None,
)
# Checks
model_onnx = onnx.load(f) # load onnx model
# onnx.checker.check_model(model_onnx) # check onnx model
# Simplify
if self.args.simplify:
try:
import onnxslim
LOGGER.info(f"{prefix} slimming with onnxslim {onnxslim.__version__}...")
model_onnx = onnxslim.slim(model_onnx)
# ONNX Simplifier (deprecated as must be compiled with 'cmake' in aarch64 and Conda CI environments)
# import onnxsim
# model_onnx, check = onnxsim.simplify(model_onnx)
# assert check, "Simplified ONNX model could not be validated"
except Exception as e:
LOGGER.warning(f"{prefix} simplifier failure: {e}")
# Metadata
for k, v in self.metadata.items():
meta = model_onnx.metadata_props.add()
meta.key, meta.value = k, str(v)
onnx.save(model_onnx, f)
return f, model_onnx
@try_export
def export_openvino(self, prefix=colorstr("OpenVINO:")):
"""YOLOv8 OpenVINO export."""
check_requirements(f'openvino{"<=2024.0.0" if ARM64 else ">=2024.0.0"}') # fix OpenVINO issue on ARM64
import openvino as ov
LOGGER.info(f"\n{prefix} starting export with openvino {ov.__version__}...")
assert TORCH_1_13, f"OpenVINO export requires torch>=1.13.0 but torch=={torch.__version__} is installed"
ov_model = ov.convert_model(
self.model,
input=None if self.args.dynamic else [self.im.shape],
example_input=self.im,
)
def serialize(ov_model, file):
"""Set RT info, serialize and save metadata YAML."""
ov_model.set_rt_info("YOLOv8", ["model_info", "model_type"])
ov_model.set_rt_info(True, ["model_info", "reverse_input_channels"])
ov_model.set_rt_info(114, ["model_info", "pad_value"])
ov_model.set_rt_info([255.0], ["model_info", "scale_values"])
ov_model.set_rt_info(self.args.iou, ["model_info", "iou_threshold"])
ov_model.set_rt_info([v.replace(" ", "_") for v in self.model.names.values()], ["model_info", "labels"])
if self.model.task != "classify":
ov_model.set_rt_info("fit_to_window_letterbox", ["model_info", "resize_type"])
ov.runtime.save_model(ov_model, file, compress_to_fp16=self.args.half)
yaml_save(Path(file).parent / "metadata.yaml", self.metadata) # add metadata.yaml
if self.args.int8:
fq = str(self.file).replace(self.file.suffix, f"_int8_openvino_model{os.sep}")
fq_ov = str(Path(fq) / self.file.with_suffix(".xml").name)
check_requirements("nncf>=2.8.0")
import nncf
def transform_fn(data_item) -> np.ndarray:
"""Quantization transform function."""
data_item: torch.Tensor = data_item["img"] if isinstance(data_item, dict) else data_item
assert data_item.dtype == torch.uint8, "Input image must be uint8 for the quantization preprocessing"
im = data_item.numpy().astype(np.float32) / 255.0 # uint8 to fp16/32 and 0 - 255 to 0.0 - 1.0
return np.expand_dims(im, 0) if im.ndim == 3 else im
# Generate calibration data for integer quantization
ignored_scope = None
if isinstance(self.model.model[-1], Detect):
# Includes all Detect subclasses like Segment, Pose, OBB, WorldDetect
head_module_name = ".".join(list(self.model.named_modules())[-1][0].split(".")[:2])
ignored_scope = nncf.IgnoredScope( # ignore operations
patterns=[
f".*{head_module_name}/.*/Add",
f".*{head_module_name}/.*/Sub*",
f".*{head_module_name}/.*/Mul*",
f".*{head_module_name}/.*/Div*",
f".*{head_module_name}\\.dfl.*",
],
types=["Sigmoid"],
)
quantized_ov_model = nncf.quantize(
model=ov_model,
calibration_dataset=nncf.Dataset(self.get_int8_calibration_dataloader(prefix), transform_fn),
preset=nncf.QuantizationPreset.MIXED,
ignored_scope=ignored_scope,
)
serialize(quantized_ov_model, fq_ov)
return fq, None
f = str(self.file).replace(self.file.suffix, f"_openvino_model{os.sep}")
f_ov = str(Path(f) / self.file.with_suffix(".xml").name)
serialize(ov_model, f_ov)
return f, None
@try_export
def export_paddle(self, prefix=colorstr("PaddlePaddle:")):
"""YOLOv8 Paddle export."""
check_requirements(("paddlepaddle", "x2paddle"))
import x2paddle # noqa
from x2paddle.convert import pytorch2paddle # noqa
LOGGER.info(f"\n{prefix} starting export with X2Paddle {x2paddle.__version__}...")
f = str(self.file).replace(self.file.suffix, f"_paddle_model{os.sep}")
pytorch2paddle(module=self.model, save_dir=f, jit_type="trace", input_examples=[self.im]) # export
yaml_save(Path(f) / "metadata.yaml", self.metadata) # add metadata.yaml
return f, None
@try_export
def export_ncnn(self, prefix=colorstr("NCNN:")):
"""
YOLOv8 NCNN export using PNNX https://github.com/pnnx/pnnx.
"""
check_requirements("ncnn")
import ncnn # noqa
LOGGER.info(f"\n{prefix} starting export with NCNN {ncnn.__version__}...")
f = Path(str(self.file).replace(self.file.suffix, f"_ncnn_model{os.sep}"))
f_ts = self.file.with_suffix(".torchscript")
name = Path("pnnx.exe" if WINDOWS else "pnnx") # PNNX filename
pnnx = name if name.is_file() else (ROOT / name)
if not pnnx.is_file():
LOGGER.warning(
f"{prefix} WARNING ⚠️ PNNX not found. Attempting to download binary file from "
"https://github.com/pnnx/pnnx/.\nNote PNNX Binary file must be placed in current working directory "
f"or in {ROOT}. See PNNX repo for full installation instructions."
)
system = "macos" if MACOS else "windows" if WINDOWS else "linux-aarch64" if ARM64 else "linux"
try:
release, assets = get_github_assets(repo="pnnx/pnnx")
asset = [x for x in assets if f"{system}.zip" in x][0]
assert isinstance(asset, str), "Unable to retrieve PNNX repo assets" # i.e. pnnx-20240410-macos.zip
LOGGER.info(f"{prefix} successfully found latest PNNX asset file {asset}")
except Exception as e:
release = "20240410"
asset = f"pnnx-{release}-{system}.zip"
LOGGER.warning(f"{prefix} WARNING ⚠️ PNNX GitHub assets not found: {e}, using default {asset}")
unzip_dir = safe_download(f"https://github.com/pnnx/pnnx/releases/download/{release}/{asset}", delete=True)
if check_is_path_safe(Path.cwd(), unzip_dir): # avoid path traversal security vulnerability
shutil.move(src=unzip_dir / name, dst=pnnx) # move binary to ROOT
pnnx.chmod(0o777) # set read, write, and execute permissions for everyone
shutil.rmtree(unzip_dir) # delete unzip dir
ncnn_args = [
f'ncnnparam={f / "model.ncnn.param"}',
f'ncnnbin={f / "model.ncnn.bin"}',
f'ncnnpy={f / "model_ncnn.py"}',
]
pnnx_args = [
f'pnnxparam={f / "model.pnnx.param"}',
f'pnnxbin={f / "model.pnnx.bin"}',
f'pnnxpy={f / "model_pnnx.py"}',
f'pnnxonnx={f / "model.pnnx.onnx"}',
]
cmd = [
str(pnnx),
str(f_ts),
*ncnn_args,
*pnnx_args,
f"fp16={int(self.args.half)}",
f"device={self.device.type}",
f'inputshape="{[self.args.batch, 3, *self.imgsz]}"',
]
f.mkdir(exist_ok=True) # make ncnn_model directory
LOGGER.info(f"{prefix} running '{' '.join(cmd)}'")
subprocess.run(cmd, check=True)
# Remove debug files
pnnx_files = [x.split("=")[-1] for x in pnnx_args]
for f_debug in ("debug.bin", "debug.param", "debug2.bin", "debug2.param", *pnnx_files):
Path(f_debug).unlink(missing_ok=True)
yaml_save(f / "metadata.yaml", self.metadata) # add metadata.yaml
return str(f), None
@try_export
def export_coreml(self, prefix=colorstr("CoreML:")):
"""YOLOv8 CoreML export."""
mlmodel = self.args.format.lower() == "mlmodel" # legacy *.mlmodel export format requested
check_requirements("coremltools>=6.0,<=6.2" if mlmodel else "coremltools>=7.0")
import coremltools as ct # noqa
LOGGER.info(f"\n{prefix} starting export with coremltools {ct.__version__}...")
assert not WINDOWS, "CoreML export is not supported on Windows, please run on macOS or Linux."
assert self.args.batch == 1, "CoreML batch sizes > 1 are not supported. Please retry at 'batch=1'."
f = self.file.with_suffix(".mlmodel" if mlmodel else ".mlpackage")
if f.is_dir():
shutil.rmtree(f)
bias = [0.0, 0.0, 0.0]
scale = 1 / 255
classifier_config = None
if self.model.task == "classify":
classifier_config = ct.ClassifierConfig(list(self.model.names.values())) if self.args.nms else None
model = self.model
elif self.model.task == "detect":
model = IOSDetectModel(self.model, self.im) if self.args.nms else self.model
else:
if self.args.nms:
LOGGER.warning(f"{prefix} WARNING ⚠️ 'nms=True' is only available for Detect models like 'yolov8n.pt'.")
# TODO CoreML Segment and Pose model pipelining
model = self.model
ts = torch.jit.trace(model.eval(), self.im, strict=False) # TorchScript model
ct_model = ct.convert(
ts,
inputs=[ct.ImageType("image", shape=self.im.shape, scale=scale, bias=bias)],
classifier_config=classifier_config,
convert_to="neuralnetwork" if mlmodel else "mlprogram",
)
bits, mode = (8, "kmeans") if self.args.int8 else (16, "linear") if self.args.half else (32, None)
if bits < 32:
if "kmeans" in mode:
check_requirements("scikit-learn") # scikit-learn package required for k-means quantization
if mlmodel:
ct_model = ct.models.neural_network.quantization_utils.quantize_weights(ct_model, bits, mode)
elif bits == 8: # mlprogram already quantized to FP16
import coremltools.optimize.coreml as cto
op_config = cto.OpPalettizerConfig(mode="kmeans", nbits=bits, weight_threshold=512)
config = cto.OptimizationConfig(global_config=op_config)
ct_model = cto.palettize_weights(ct_model, config=config)
if self.args.nms and self.model.task == "detect":
if mlmodel:
# coremltools<=6.2 NMS export requires Python<3.11
check_version(PYTHON_VERSION, "<3.11", name="Python ", hard=True)
weights_dir = None
else:
ct_model.save(str(f)) # save otherwise weights_dir does not exist
weights_dir = str(f / "Data/com.apple.CoreML/weights")
ct_model = self._pipeline_coreml(ct_model, weights_dir=weights_dir)
m = self.metadata # metadata dict
ct_model.short_description = m.pop("description")
ct_model.author = m.pop("author")
ct_model.license = m.pop("license")
ct_model.version = m.pop("version")
ct_model.user_defined_metadata.update({k: str(v) for k, v in m.items()})
try:
ct_model.save(str(f)) # save *.mlpackage
except Exception as e:
LOGGER.warning(
f"{prefix} WARNING ⚠️ CoreML export to *.mlpackage failed ({e}), reverting to *.mlmodel export. "
f"Known coremltools Python 3.11 and Windows bugs https://github.com/apple/coremltools/issues/1928."
)
f = f.with_suffix(".mlmodel")
ct_model.save(str(f))
return f, ct_model
@try_export
def export_engine(self, prefix=colorstr("TensorRT:")):
"""YOLOv8 TensorRT export https://developer.nvidia.com/tensorrt."""
assert self.im.device.type != "cpu", "export running on CPU but must be on GPU, i.e. use 'device=0'"
# self.args.simplify = True
f_onnx, _ = self.export_onnx() # run before TRT import https://github.com/ultralytics/ultralytics/issues/7016
try:
import tensorrt as trt # noqa
except ImportError:
if LINUX:
check_requirements("tensorrt>7.0.0,<=10.1.0")
import tensorrt as trt # noqa
check_version(trt.__version__, ">=7.0.0", hard=True)
check_version(trt.__version__, "<=10.1.0", msg="https://github.com/ultralytics/ultralytics/pull/14239")
# Setup and checks
LOGGER.info(f"\n{prefix} starting export with TensorRT {trt.__version__}...")
is_trt10 = int(trt.__version__.split(".")[0]) >= 10 # is TensorRT >= 10
assert Path(f_onnx).exists(), f"failed to export ONNX file: {f_onnx}"
f = self.file.with_suffix(".engine") # TensorRT engine file
logger = trt.Logger(trt.Logger.INFO)
if self.args.verbose:
logger.min_severity = trt.Logger.Severity.VERBOSE
# Engine builder
builder = trt.Builder(logger)
config = builder.create_builder_config()
workspace = int(self.args.workspace * (1 << 30))
if is_trt10:
config.set_memory_pool_limit(trt.MemoryPoolType.WORKSPACE, workspace)
else: # TensorRT versions 7, 8
config.max_workspace_size = workspace
flag = 1 << int(trt.NetworkDefinitionCreationFlag.EXPLICIT_BATCH)
network = builder.create_network(flag)
half = builder.platform_has_fast_fp16 and self.args.half
int8 = builder.platform_has_fast_int8 and self.args.int8
# Read ONNX file
parser = trt.OnnxParser(network, logger)
if not parser.parse_from_file(f_onnx):
raise RuntimeError(f"failed to load ONNX file: {f_onnx}")
# Network inputs
inputs = [network.get_input(i) for i in range(network.num_inputs)]
outputs = [network.get_output(i) for i in range(network.num_outputs)]
for inp in inputs:
LOGGER.info(f'{prefix} input "{inp.name}" with shape{inp.shape} {inp.dtype}')
for out in outputs:
LOGGER.info(f'{prefix} output "{out.name}" with shape{out.shape} {out.dtype}')
if self.args.dynamic:
shape = self.im.shape
if shape[0] <= 1:
LOGGER.warning(f"{prefix} WARNING ⚠️ 'dynamic=True' model requires max batch size, i.e. 'batch=16'")
profile = builder.create_optimization_profile()
min_shape = (1, shape[1], 32, 32) # minimum input shape
max_shape = (*shape[:2], *(max(1, self.args.workspace) * d for d in shape[2:])) # max input shape
for inp in inputs:
profile.set_shape(inp.name, min=min_shape, opt=shape, max=max_shape)
config.add_optimization_profile(profile)
LOGGER.info(f"{prefix} building {'INT8' if int8 else 'FP' + ('16' if half else '32')} engine as {f}")
if int8:
config.set_flag(trt.BuilderFlag.INT8)
config.set_calibration_profile(profile)
config.profiling_verbosity = trt.ProfilingVerbosity.DETAILED
class EngineCalibrator(trt.IInt8Calibrator):
def __init__(
self,
dataset, # ultralytics.data.build.InfiniteDataLoader
batch: int,
cache: str = "",
) -> None:
trt.IInt8Calibrator.__init__(self)
self.dataset = dataset
self.data_iter = iter(dataset)
self.algo = trt.CalibrationAlgoType.ENTROPY_CALIBRATION_2
self.batch = batch
self.cache = Path(cache)
def get_algorithm(self) -> trt.CalibrationAlgoType:
"""Get the calibration algorithm to use."""
return self.algo
def get_batch_size(self) -> int:
"""Get the batch size to use for calibration."""
return self.batch or 1
def get_batch(self, names) -> list:
"""Get the next batch to use for calibration, as a list of device memory pointers."""
try:
im0s = next(self.data_iter)["img"] / 255.0
im0s = im0s.to("cuda") if im0s.device.type == "cpu" else im0s
return [int(im0s.data_ptr())]
except StopIteration:
# Return [] or None, signal to TensorRT there is no calibration data remaining
return None
def read_calibration_cache(self) -> bytes:
"""Use existing cache instead of calibrating again, otherwise, implicitly return None."""
if self.cache.exists() and self.cache.suffix == ".cache":
return self.cache.read_bytes()
def write_calibration_cache(self, cache) -> None:
"""Write calibration cache to disk."""
_ = self.cache.write_bytes(cache)
# Load dataset w/ builder (for batching) and calibrate
config.int8_calibrator = EngineCalibrator(
dataset=self.get_int8_calibration_dataloader(prefix),
batch=2 * self.args.batch,
cache=str(self.file.with_suffix(".cache")),
)
elif half:
config.set_flag(trt.BuilderFlag.FP16)
# Free CUDA memory
del self.model
gc.collect()
torch.cuda.empty_cache()
# Write file
build = builder.build_serialized_network if is_trt10 else builder.build_engine
with build(network, config) as engine, open(f, "wb") as t:
# Metadata
meta = json.dumps(self.metadata)
t.write(len(meta).to_bytes(4, byteorder="little", signed=True))
t.write(meta.encode())
# Model
t.write(engine if is_trt10 else engine.serialize())
return f, None
@try_export
def export_saved_model(self, prefix=colorstr("TensorFlow SavedModel:")):
"""YOLOv8 TensorFlow SavedModel export."""
cuda = torch.cuda.is_available()
try:
import tensorflow as tf # noqa
except ImportError:
suffix = "-macos" if MACOS else "-aarch64" if ARM64 else "" if cuda else "-cpu"
version = ">=2.0.0"
check_requirements(f"tensorflow{suffix}{version}")
import tensorflow as tf # noqa
check_requirements(
(
"keras", # required by 'onnx2tf' package
"tf_keras", # required by 'onnx2tf' package
"sng4onnx>=1.0.1", # required by 'onnx2tf' package
"onnx_graphsurgeon>=0.3.26", # required by 'onnx2tf' package
"onnx>=1.12.0",
"onnx2tf>1.17.5,<=1.22.3",
"onnxslim>=0.1.31",
"tflite_support<=0.4.3" if IS_JETSON else "tflite_support", # fix ImportError 'GLIBCXX_3.4.29'
"flatbuffers>=23.5.26,<100", # update old 'flatbuffers' included inside tensorflow package
"onnxruntime-gpu" if cuda else "onnxruntime",
),
cmds="--extra-index-url https://pypi.ngc.nvidia.com", # onnx_graphsurgeon only on NVIDIA
)
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...")
check_version(
tf.__version__,
">=2.0.0",
name="tensorflow",
verbose=True,
msg="https://github.com/ultralytics/ultralytics/issues/5161",
)
import onnx2tf
f = Path(str(self.file).replace(self.file.suffix, "_saved_model"))
if f.is_dir():
shutil.rmtree(f) # delete output folder
# Pre-download calibration file to fix https://github.com/PINTO0309/onnx2tf/issues/545
onnx2tf_file = Path("calibration_image_sample_data_20x128x128x3_float32.npy")
if not onnx2tf_file.exists():
attempt_download_asset(f"{onnx2tf_file}.zip", unzip=True, delete=True)
# Export to ONNX
self.args.simplify = True
f_onnx, _ = self.export_onnx()
# Export to TF
np_data = None
if self.args.int8:
tmp_file = f / "tmp_tflite_int8_calibration_images.npy" # int8 calibration images file
verbosity = "info"
if self.args.data:
f.mkdir()
images = [batch["img"].permute(0, 2, 3, 1) for batch in self.get_int8_calibration_dataloader(prefix)]
images = torch.cat(images, 0).float()
# mean = images.view(-1, 3).mean(0) # imagenet mean [123.675, 116.28, 103.53]
# std = images.view(-1, 3).std(0) # imagenet std [58.395, 57.12, 57.375]
np.save(str(tmp_file), images.numpy().astype(np.float32)) # BHWC
np_data = [["images", tmp_file, [[[[0, 0, 0]]]], [[[[255, 255, 255]]]]]]
else:
verbosity = "error"
LOGGER.info(f"{prefix} starting TFLite export with onnx2tf {onnx2tf.__version__}...")
onnx2tf.convert(
input_onnx_file_path=f_onnx,
output_folder_path=str(f),
not_use_onnxsim=True,
verbosity=verbosity,
output_integer_quantized_tflite=self.args.int8,
quant_type="per-tensor", # "per-tensor" (faster) or "per-channel" (slower but more accurate)
custom_input_op_name_np_data_path=np_data,
)
yaml_save(f / "metadata.yaml", self.metadata) # add metadata.yaml
# Remove/rename TFLite models
if self.args.int8:
tmp_file.unlink(missing_ok=True)
for file in f.rglob("*_dynamic_range_quant.tflite"):
file.rename(file.with_name(file.stem.replace("_dynamic_range_quant", "_int8") + file.suffix))
for file in f.rglob("*_integer_quant_with_int16_act.tflite"):
file.unlink() # delete extra fp16 activation TFLite files
# Add TFLite metadata
for file in f.rglob("*.tflite"):
f.unlink() if "quant_with_int16_act.tflite" in str(f) else self._add_tflite_metadata(file)
return str(f), tf.saved_model.load(f, tags=None, options=None) # load saved_model as Keras model
@try_export
def export_pb(self, keras_model, prefix=colorstr("TensorFlow GraphDef:")):
"""YOLOv8 TensorFlow GraphDef *.pb export https://github.com/leimao/Frozen_Graph_TensorFlow."""
import tensorflow as tf # noqa
from tensorflow.python.framework.convert_to_constants import convert_variables_to_constants_v2 # noqa
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...")
f = self.file.with_suffix(".pb")
m = tf.function(lambda x: keras_model(x)) # full model
m = m.get_concrete_function(tf.TensorSpec(keras_model.inputs[0].shape, keras_model.inputs[0].dtype))
frozen_func = convert_variables_to_constants_v2(m)
frozen_func.graph.as_graph_def()
tf.io.write_graph(graph_or_graph_def=frozen_func.graph, logdir=str(f.parent), name=f.name, as_text=False)
return f, None
@try_export
def export_tflite(self, keras_model, nms, agnostic_nms, prefix=colorstr("TensorFlow Lite:")):
"""YOLOv8 TensorFlow Lite export."""
# BUG https://github.com/ultralytics/ultralytics/issues/13436
import tensorflow as tf # noqa
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...")
saved_model = Path(str(self.file).replace(self.file.suffix, "_saved_model"))
if self.args.int8:
f = saved_model / f"{self.file.stem}_int8.tflite" # fp32 in/out
elif self.args.half:
f = saved_model / f"{self.file.stem}_float16.tflite" # fp32 in/out
else:
f = saved_model / f"{self.file.stem}_float32.tflite"
return str(f), None
@try_export
def export_edgetpu(self, tflite_model="", prefix=colorstr("Edge TPU:")):
"""YOLOv8 Edge TPU export https://coral.ai/docs/edgetpu/models-intro/."""
LOGGER.warning(f"{prefix} WARNING ⚠️ Edge TPU known bug https://github.com/ultralytics/ultralytics/issues/1185")
cmd = "edgetpu_compiler --version"
help_url = "https://coral.ai/docs/edgetpu/compiler/"
assert LINUX, f"export only supported on Linux. See {help_url}"
if subprocess.run(cmd, stdout=subprocess.DEVNULL, stderr=subprocess.DEVNULL, shell=True).returncode != 0:
LOGGER.info(f"\n{prefix} export requires Edge TPU compiler. Attempting install from {help_url}")
sudo = subprocess.run("sudo --version >/dev/null", shell=True).returncode == 0 # sudo installed on system
for c in (
"curl https://packages.cloud.google.com/apt/doc/apt-key.gpg | sudo apt-key add -",
'echo "deb https://packages.cloud.google.com/apt coral-edgetpu-stable main" | '
"sudo tee /etc/apt/sources.list.d/coral-edgetpu.list",
"sudo apt-get update",
"sudo apt-get install edgetpu-compiler",
):
subprocess.run(c if sudo else c.replace("sudo ", ""), shell=True, check=True)
ver = subprocess.run(cmd, shell=True, capture_output=True, check=True).stdout.decode().split()[-1]
LOGGER.info(f"\n{prefix} starting export with Edge TPU compiler {ver}...")
f = str(tflite_model).replace(".tflite", "_edgetpu.tflite") # Edge TPU model
cmd = f'edgetpu_compiler -s -d -k 10 --out_dir "{Path(f).parent}" "{tflite_model}"'
LOGGER.info(f"{prefix} running '{cmd}'")
subprocess.run(cmd, shell=True)
self._add_tflite_metadata(f)
return f, None
@try_export
def export_tfjs(self, prefix=colorstr("TensorFlow.js:")):
"""YOLOv8 TensorFlow.js export."""
check_requirements("tensorflowjs")
if ARM64:
# Fix error: `np.object` was a deprecated alias for the builtin `object` when exporting to TF.js on ARM64
check_requirements("numpy==1.23.5")
import tensorflow as tf
import tensorflowjs as tfjs # noqa
LOGGER.info(f"\n{prefix} starting export with tensorflowjs {tfjs.__version__}...")
f = str(self.file).replace(self.file.suffix, "_web_model") # js dir
f_pb = str(self.file.with_suffix(".pb")) # *.pb path
gd = tf.Graph().as_graph_def() # TF GraphDef
with open(f_pb, "rb") as file:
gd.ParseFromString(file.read())
outputs = ",".join(gd_outputs(gd))
LOGGER.info(f"\n{prefix} output node names: {outputs}")
quantization = "--quantize_float16" if self.args.half else "--quantize_uint8" if self.args.int8 else ""
with spaces_in_path(f_pb) as fpb_, spaces_in_path(f) as f_: # exporter can not handle spaces in path
cmd = (
"tensorflowjs_converter "
f'--input_format=tf_frozen_model {quantization} --output_node_names={outputs} "{fpb_}" "{f_}"'
)
LOGGER.info(f"{prefix} running '{cmd}'")
subprocess.run(cmd, shell=True)
if " " in f:
LOGGER.warning(f"{prefix} WARNING ⚠️ your model may not work correctly with spaces in path '{f}'.")
# f_json = Path(f) / 'model.json' # *.json path
# with open(f_json, 'w') as j: # sort JSON Identity_* in ascending order
# subst = re.sub(
# r'{"outputs": {"Identity.?.?": {"name": "Identity.?.?"}, '
# r'"Identity.?.?": {"name": "Identity.?.?"}, '
# r'"Identity.?.?": {"name": "Identity.?.?"}, '
# r'"Identity.?.?": {"name": "Identity.?.?"}}}',
# r'{"outputs": {"Identity": {"name": "Identity"}, '
# r'"Identity_1": {"name": "Identity_1"}, '
# r'"Identity_2": {"name": "Identity_2"}, '
# r'"Identity_3": {"name": "Identity_3"}}}',
# f_json.read_text(),
# )
# j.write(subst)
yaml_save(Path(f) / "metadata.yaml", self.metadata) # add metadata.yaml
return f, None
def _add_tflite_metadata(self, file):
"""Add metadata to *.tflite models per https://www.tensorflow.org/lite/models/convert/metadata."""
import flatbuffers
try:
# TFLite Support bug https://github.com/tensorflow/tflite-support/issues/954#issuecomment-2108570845
from tensorflow_lite_support.metadata import metadata_schema_py_generated as schema # noqa
from tensorflow_lite_support.metadata.python import metadata # noqa
except ImportError: # ARM64 systems may not have the 'tensorflow_lite_support' package available
from tflite_support import metadata # noqa
from tflite_support import metadata_schema_py_generated as schema # noqa
# Create model info
model_meta = schema.ModelMetadataT()
model_meta.name = self.metadata["description"]
model_meta.version = self.metadata["version"]
model_meta.author = self.metadata["author"]
model_meta.license = self.metadata["license"]
# Label file
tmp_file = Path(file).parent / "temp_meta.txt"
with open(tmp_file, "w") as f:
f.write(str(self.metadata))
label_file = schema.AssociatedFileT()
label_file.name = tmp_file.name
label_file.type = schema.AssociatedFileType.TENSOR_AXIS_LABELS
# Create input info
input_meta = schema.TensorMetadataT()
input_meta.name = "image"
input_meta.description = "Input image to be detected."
input_meta.content = schema.ContentT()
input_meta.content.contentProperties = schema.ImagePropertiesT()
input_meta.content.contentProperties.colorSpace = schema.ColorSpaceType.RGB
input_meta.content.contentPropertiesType = schema.ContentProperties.ImageProperties
# Create output info
output1 = schema.TensorMetadataT()
output1.name = "output"
output1.description = "Coordinates of detected objects, class labels, and confidence score"
output1.associatedFiles = [label_file]
if self.model.task == "segment":
output2 = schema.TensorMetadataT()
output2.name = "output"
output2.description = "Mask protos"
output2.associatedFiles = [label_file]
# Create subgraph info
subgraph = schema.SubGraphMetadataT()
subgraph.inputTensorMetadata = [input_meta]
subgraph.outputTensorMetadata = [output1, output2] if self.model.task == "segment" else [output1]
model_meta.subgraphMetadata = [subgraph]
b = flatbuffers.Builder(0)
b.Finish(model_meta.Pack(b), metadata.MetadataPopulator.METADATA_FILE_IDENTIFIER)
metadata_buf = b.Output()
populator = metadata.MetadataPopulator.with_model_file(str(file))
populator.load_metadata_buffer(metadata_buf)
populator.load_associated_files([str(tmp_file)])
populator.populate()
tmp_file.unlink()
def _pipeline_coreml(self, model, weights_dir=None, prefix=colorstr("CoreML Pipeline:")):
"""YOLOv8 CoreML pipeline."""
import coremltools as ct # noqa
LOGGER.info(f"{prefix} starting pipeline with coremltools {ct.__version__}...")
_, _, h, w = list(self.im.shape) # BCHW
# Output shapes
spec = model.get_spec()
out0, out1 = iter(spec.description.output)
if MACOS:
from PIL import Image
img = Image.new("RGB", (w, h)) # w=192, h=320
out = model.predict({"image": img})
out0_shape = out[out0.name].shape # (3780, 80)
out1_shape = out[out1.name].shape # (3780, 4)
else: # linux and windows can not run model.predict(), get sizes from PyTorch model output y
out0_shape = self.output_shape[2], self.output_shape[1] - 4 # (3780, 80)
out1_shape = self.output_shape[2], 4 # (3780, 4)
# Checks
names = self.metadata["names"]
nx, ny = spec.description.input[0].type.imageType.width, spec.description.input[0].type.imageType.height
_, nc = out0_shape # number of anchors, number of classes
# _, nc = out0.type.multiArrayType.shape
assert len(names) == nc, f"{len(names)} names found for nc={nc}" # check
# Define output shapes (missing)
out0.type.multiArrayType.shape[:] = out0_shape # (3780, 80)
out1.type.multiArrayType.shape[:] = out1_shape # (3780, 4)
# spec.neuralNetwork.preprocessing[0].featureName = '0'
# Flexible input shapes
# from coremltools.models.neural_network import flexible_shape_utils
# s = [] # shapes
# s.append(flexible_shape_utils.NeuralNetworkImageSize(320, 192))
# s.append(flexible_shape_utils.NeuralNetworkImageSize(640, 384)) # (height, width)
# flexible_shape_utils.add_enumerated_image_sizes(spec, feature_name='image', sizes=s)
# r = flexible_shape_utils.NeuralNetworkImageSizeRange() # shape ranges
# r.add_height_range((192, 640))
# r.add_width_range((192, 640))
# flexible_shape_utils.update_image_size_range(spec, feature_name='image', size_range=r)
# Print
# print(spec.description)
# Model from spec
model = ct.models.MLModel(spec, weights_dir=weights_dir)
# 3. Create NMS protobuf
nms_spec = ct.proto.Model_pb2.Model()
nms_spec.specificationVersion = 5
for i in range(2):
decoder_output = model._spec.description.output[i].SerializeToString()
nms_spec.description.input.add()
nms_spec.description.input[i].ParseFromString(decoder_output)
nms_spec.description.output.add()
nms_spec.description.output[i].ParseFromString(decoder_output)
nms_spec.description.output[0].name = "confidence"
nms_spec.description.output[1].name = "coordinates"
output_sizes = [nc, 4]
for i in range(2):
ma_type = nms_spec.description.output[i].type.multiArrayType
ma_type.shapeRange.sizeRanges.add()
ma_type.shapeRange.sizeRanges[0].lowerBound = 0
ma_type.shapeRange.sizeRanges[0].upperBound = -1
ma_type.shapeRange.sizeRanges.add()
ma_type.shapeRange.sizeRanges[1].lowerBound = output_sizes[i]
ma_type.shapeRange.sizeRanges[1].upperBound = output_sizes[i]
del ma_type.shape[:]
nms = nms_spec.nonMaximumSuppression
nms.confidenceInputFeatureName = out0.name # 1x507x80
nms.coordinatesInputFeatureName = out1.name # 1x507x4
nms.confidenceOutputFeatureName = "confidence"
nms.coordinatesOutputFeatureName = "coordinates"
nms.iouThresholdInputFeatureName = "iouThreshold"
nms.confidenceThresholdInputFeatureName = "confidenceThreshold"
nms.iouThreshold = 0.45
nms.confidenceThreshold = 0.25
nms.pickTop.perClass = True
nms.stringClassLabels.vector.extend(names.values())
nms_model = ct.models.MLModel(nms_spec)
# 4. Pipeline models together
pipeline = ct.models.pipeline.Pipeline(
input_features=[
("image", ct.models.datatypes.Array(3, ny, nx)),
("iouThreshold", ct.models.datatypes.Double()),
("confidenceThreshold", ct.models.datatypes.Double()),
],
output_features=["confidence", "coordinates"],
)
pipeline.add_model(model)
pipeline.add_model(nms_model)
# Correct datatypes
pipeline.spec.description.input[0].ParseFromString(model._spec.description.input[0].SerializeToString())
pipeline.spec.description.output[0].ParseFromString(nms_model._spec.description.output[0].SerializeToString())
pipeline.spec.description.output[1].ParseFromString(nms_model._spec.description.output[1].SerializeToString())
# Update metadata
pipeline.spec.specificationVersion = 5
pipeline.spec.description.metadata.userDefined.update(
{"IoU threshold": str(nms.iouThreshold), "Confidence threshold": str(nms.confidenceThreshold)}
)
# Save the model
model = ct.models.MLModel(pipeline.spec, weights_dir=weights_dir)
model.input_description["image"] = "Input image"
model.input_description["iouThreshold"] = f"(optional) IoU threshold override (default: {nms.iouThreshold})"
model.input_description["confidenceThreshold"] = (
f"(optional) Confidence threshold override (default: {nms.confidenceThreshold})"
)
model.output_description["confidence"] = 'Boxes × Class confidence (see user-defined metadata "classes")'
model.output_description["coordinates"] = "Boxes × [x, y, width, height] (relative to image size)"
LOGGER.info(f"{prefix} pipeline success")
return model
def add_callback(self, event: str, callback):
"""Appends the given callback."""
self.callbacks[event].append(callback)
def run_callbacks(self, event: str):
"""Execute all callbacks for a given event."""
for callback in self.callbacks.get(event, []):
callback(self)
class IOSDetectModel(torch.nn.Module):
"""Wrap an Ultralytics YOLO model for Apple iOS CoreML export."""
def __init__(self, model, im):
"""Initialize the IOSDetectModel class with a YOLO model and example image."""
super().__init__()
_, _, h, w = im.shape # batch, channel, height, width
self.model = model
self.nc = len(model.names) # number of classes
if w == h:
self.normalize = 1.0 / w # scalar
else:
self.normalize = torch.tensor([1.0 / w, 1.0 / h, 1.0 / w, 1.0 / h]) # broadcast (slower, smaller)
def forward(self, x):
"""Normalize predictions of object detection model with input size-dependent factors."""
xywh, cls = self.model(x)[0].transpose(0, 1).split((4, self.nc), 1)
return cls, xywh * self.normalize # confidence (3780, 80), coordinates (3780, 4)