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# Ultralytics YOLO 🚀, AGPL-3.0 license
import contextlib
from copy import copy
from pathlib import Path
import cv2
import numpy as np
import pytest
import torch
from PIL import Image
from torchvision.transforms import ToTensor
from ultralytics import RTDETR, YOLO
from ultralytics.cfg import TASK2DATA
from ultralytics.data.build import load_inference_source
from ultralytics.utils import (
ASSETS,
DEFAULT_CFG,
DEFAULT_CFG_PATH,
LINUX,
MACOS,
ONLINE,
ROOT,
WEIGHTS_DIR,
WINDOWS,
Retry,
checks,
is_dir_writeable,
)
from ultralytics.utils.downloads import download
from ultralytics.utils.torch_utils import TORCH_1_9
MODEL = WEIGHTS_DIR / "path with spaces" / "yolov8n.pt" # test spaces in path
CFG = "yolov8n.yaml"
SOURCE = ASSETS / "bus.jpg"
TMP = (ROOT / "../tests/tmp").resolve() # temp directory for test files
IS_TMP_WRITEABLE = is_dir_writeable(TMP)
def test_model_forward():
"""Test the forward pass of the YOLO model."""
model = YOLO(CFG)
model(source=None, imgsz=32, augment=True) # also test no source and augment
def test_model_methods():
"""Test various methods and properties of the YOLO model."""
model = YOLO(MODEL)
# Model methods
model.info(verbose=True, detailed=True)
model = model.reset_weights()
model = model.load(MODEL)
model.to("cpu")
model.fuse()
model.clear_callback("on_train_start")
model.reset_callbacks()
# Model properties
_ = model.names
_ = model.device
_ = model.transforms
_ = model.task_map
def test_model_profile():
"""Test profiling of the YOLO model with 'profile=True' argument."""
from ultralytics.nn.tasks import DetectionModel
model = DetectionModel() # build model
im = torch.randn(1, 3, 64, 64) # requires min imgsz=64
_ = model.predict(im, profile=True)
@pytest.mark.skipif(not IS_TMP_WRITEABLE, reason="directory is not writeable")
def test_predict_txt():
"""Test YOLO predictions with sources (file, dir, glob, recursive glob) specified in a text file."""
txt_file = TMP / "sources.txt"
with open(txt_file, "w") as f:
for x in [ASSETS / "bus.jpg", ASSETS, ASSETS / "*", ASSETS / "**/*.jpg"]:
f.write(f"{x}\n")
_ = YOLO(MODEL)(source=txt_file, imgsz=32)
def test_predict_img():
"""Test YOLO prediction on various types of image sources."""
model = YOLO(MODEL)
seg_model = YOLO(WEIGHTS_DIR / "yolov8n-seg.pt")
cls_model = YOLO(WEIGHTS_DIR / "yolov8n-cls.pt")
pose_model = YOLO(WEIGHTS_DIR / "yolov8n-pose.pt")
obb_model = YOLO(WEIGHTS_DIR / "yolov8n-obb.pt")
im = cv2.imread(str(SOURCE))
assert len(model(source=Image.open(SOURCE), save=True, verbose=True, imgsz=32)) == 1 # PIL
assert len(model(source=im, save=True, save_txt=True, imgsz=32)) == 1 # ndarray
assert len(model(source=[im, im], save=True, save_txt=True, imgsz=32)) == 2 # batch
assert len(list(model(source=[im, im], save=True, stream=True, imgsz=32))) == 2 # stream
assert len(model(torch.zeros(320, 640, 3).numpy(), imgsz=32)) == 1 # tensor to numpy
batch = [
str(SOURCE), # filename
Path(SOURCE), # Path
"https://ultralytics.com/images/zidane.jpg" if ONLINE else SOURCE, # URI
cv2.imread(str(SOURCE)), # OpenCV
Image.open(SOURCE), # PIL
np.zeros((320, 640, 3)),
] # numpy
assert len(model(batch, imgsz=32)) == len(batch) # multiple sources in a batch
# Test tensor inference
im = cv2.imread(str(SOURCE)) # OpenCV
t = cv2.resize(im, (32, 32))
t = ToTensor()(t)
t = torch.stack([t, t, t, t])
results = model(t, imgsz=32)
assert len(results) == t.shape[0]
results = seg_model(t, imgsz=32)
assert len(results) == t.shape[0]
results = cls_model(t, imgsz=32)
assert len(results) == t.shape[0]
results = pose_model(t, imgsz=32)
assert len(results) == t.shape[0]
results = obb_model(t, imgsz=32)
assert len(results) == t.shape[0]
def test_predict_grey_and_4ch():
"""Test YOLO prediction on SOURCE converted to greyscale and 4-channel images."""
im = Image.open(SOURCE)
directory = TMP / "im4"
directory.mkdir(parents=True, exist_ok=True)
source_greyscale = directory / "greyscale.jpg"
source_rgba = directory / "4ch.png"
source_non_utf = directory / "non_UTF_测试文件_tést_image.jpg"
source_spaces = directory / "image with spaces.jpg"
im.convert("L").save(source_greyscale) # greyscale
im.convert("RGBA").save(source_rgba) # 4-ch PNG with alpha
im.save(source_non_utf) # non-UTF characters in filename
im.save(source_spaces) # spaces in filename
# Inference
model = YOLO(MODEL)
for f in source_rgba, source_greyscale, source_non_utf, source_spaces:
for source in Image.open(f), cv2.imread(str(f)), f:
results = model(source, save=True, verbose=True, imgsz=32)
assert len(results) == 1 # verify that an image was run
f.unlink() # cleanup
@pytest.mark.slow
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
@Retry(times=3, delay=10)
def test_youtube():
"""
Test YouTube inference.
Marked --slow to reduce YouTube API rate limits risk.
"""
model = YOLO(MODEL)
model.predict("https://youtu.be/G17sBkb38XQ", imgsz=96, save=True)
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
@pytest.mark.skipif(not IS_TMP_WRITEABLE, reason="directory is not writeable")
def test_track_stream():
"""
Test streaming tracking (short 10 frame video) with non-default ByteTrack tracker.
Note imgsz=160 required for tracking for higher confidence and better matches
"""
import yaml
video_url = "https://ultralytics.com/assets/decelera_portrait_min.mov"
model = YOLO(MODEL)
model.track(video_url, imgsz=160, tracker="bytetrack.yaml")
model.track(video_url, imgsz=160, tracker="botsort.yaml", save_frames=True) # test frame saving also
# Test Global Motion Compensation (GMC) methods
for gmc in "orb", "sift", "ecc":
with open(ROOT / "cfg/trackers/botsort.yaml", encoding="utf-8") as f:
data = yaml.safe_load(f)
tracker = TMP / f"botsort-{gmc}.yaml"
data["gmc_method"] = gmc
with open(tracker, "w", encoding="utf-8") as f:
yaml.safe_dump(data, f)
model.track(video_url, imgsz=160, tracker=tracker)
def test_val():
"""Test the validation mode of the YOLO model."""
YOLO(MODEL).val(data="coco8.yaml", imgsz=32, save_hybrid=True)
def test_train_scratch():
"""Test training the YOLO model from scratch."""
model = YOLO(CFG)
model.train(data="coco8.yaml", epochs=2, imgsz=32, cache="disk", batch=-1, close_mosaic=1, name="model")
model(SOURCE)
def test_train_pretrained():
"""Test training the YOLO model from a pre-trained state."""
model = YOLO(WEIGHTS_DIR / "yolov8n-seg.pt")
model.train(data="coco8-seg.yaml", epochs=1, imgsz=32, cache="ram", copy_paste=0.5, mixup=0.5, name=0)
model(SOURCE)
def test_export_torchscript():
"""Test exporting the YOLO model to TorchScript format."""
f = YOLO(MODEL).export(format="torchscript", optimize=False)
YOLO(f)(SOURCE) # exported model inference
def test_export_onnx():
"""Test exporting the YOLO model to ONNX format."""
f = YOLO(MODEL).export(format="onnx", dynamic=True)
YOLO(f)(SOURCE) # exported model inference
def test_export_openvino():
"""Test exporting the YOLO model to OpenVINO format."""
f = YOLO(MODEL).export(format="openvino")
YOLO(f)(SOURCE) # exported model inference
def test_export_coreml():
"""Test exporting the YOLO model to CoreML format."""
if not WINDOWS: # RuntimeError: BlobWriter not loaded with coremltools 7.0 on windows
if MACOS:
f = YOLO(MODEL).export(format="coreml")
YOLO(f)(SOURCE) # model prediction only supported on macOS for nms=False models
else:
YOLO(MODEL).export(format="coreml", nms=True)
def test_export_tflite(enabled=False):
"""
Test exporting the YOLO model to TFLite format.
Note TF suffers from install conflicts on Windows and macOS.
"""
if enabled and LINUX:
model = YOLO(MODEL)
f = model.export(format="tflite")
YOLO(f)(SOURCE)
def test_export_pb(enabled=False):
"""
Test exporting the YOLO model to *.pb format.
Note TF suffers from install conflicts on Windows and macOS.
"""
if enabled and LINUX:
model = YOLO(MODEL)
f = model.export(format="pb")
YOLO(f)(SOURCE)
def test_export_paddle(enabled=False):
"""
Test exporting the YOLO model to Paddle format.
Note Paddle protobuf requirements conflicting with onnx protobuf requirements.
"""
if enabled:
YOLO(MODEL).export(format="paddle")
@pytest.mark.slow
def test_export_ncnn():
"""Test exporting the YOLO model to NCNN format."""
f = YOLO(MODEL).export(format="ncnn")
YOLO(f)(SOURCE) # exported model inference
def test_all_model_yamls():
"""Test YOLO model creation for all available YAML configurations."""
for m in (ROOT / "cfg" / "models").rglob("*.yaml"):
if "rtdetr" in m.name:
if TORCH_1_9: # torch<=1.8 issue - TypeError: __init__() got an unexpected keyword argument 'batch_first'
_ = RTDETR(m.name)(SOURCE, imgsz=640) # must be 640
else:
YOLO(m.name)
def test_workflow():
"""Test the complete workflow including training, validation, prediction, and exporting."""
model = YOLO(MODEL)
model.train(data="coco8.yaml", epochs=1, imgsz=32, optimizer="SGD")
model.val(imgsz=32)
model.predict(SOURCE, imgsz=32)
model.export(format="onnx") # export a model to ONNX format
def test_predict_callback_and_setup():
"""Test callback functionality during YOLO prediction."""
def on_predict_batch_end(predictor):
"""Callback function that handles operations at the end of a prediction batch."""
path, im0s, _, _ = predictor.batch
im0s = im0s if isinstance(im0s, list) else [im0s]
bs = [predictor.dataset.bs for _ in range(len(path))]
predictor.results = zip(predictor.results, im0s, bs) # results is List[batch_size]
model = YOLO(MODEL)
model.add_callback("on_predict_batch_end", on_predict_batch_end)
dataset = load_inference_source(source=SOURCE)
bs = dataset.bs # noqa access predictor properties
results = model.predict(dataset, stream=True, imgsz=160) # source already setup
for r, im0, bs in results:
print("test_callback", im0.shape)
print("test_callback", bs)
boxes = r.boxes # Boxes object for bbox outputs
print(boxes)
def test_results():
"""Test various result formats for the YOLO model."""
for m in "yolov8n-pose.pt", "yolov8n-seg.pt", "yolov8n.pt", "yolov8n-cls.pt":
results = YOLO(WEIGHTS_DIR / m)([SOURCE, SOURCE], imgsz=160)
for r in results:
r = r.cpu().numpy()
r = r.to(device="cpu", dtype=torch.float32)
r.save_txt(txt_file=TMP / "runs/tests/label.txt", save_conf=True)
r.save_crop(save_dir=TMP / "runs/tests/crops/")
r.tojson(normalize=True)
r.plot(pil=True)
r.plot(conf=True, boxes=True)
print(r, len(r), r.path)
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
def test_data_utils():
"""Test utility functions in ultralytics/data/utils.py."""
from ultralytics.data.utils import HUBDatasetStats, autosplit
from ultralytics.utils.downloads import zip_directory
# from ultralytics.utils.files import WorkingDirectory
# with WorkingDirectory(ROOT.parent / 'tests'):
for task in "detect", "segment", "pose", "classify":
file = Path(TASK2DATA[task]).with_suffix(".zip") # i.e. coco8.zip
download(f"https://github.com/ultralytics/hub/raw/main/example_datasets/{file}", unzip=False, dir=TMP)
stats = HUBDatasetStats(TMP / file, task=task)
stats.get_json(save=True)
stats.process_images()
autosplit(TMP / "coco8")
zip_directory(TMP / "coco8/images/val") # zip
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
def test_data_converter():
"""Test dataset converters."""
from ultralytics.data.converter import coco80_to_coco91_class, convert_coco
file = "instances_val2017.json"
download(f"https://github.com/ultralytics/yolov5/releases/download/v1.0/{file}", dir=TMP)
convert_coco(labels_dir=TMP, save_dir=TMP / "yolo_labels", use_segments=True, use_keypoints=False, cls91to80=True)
coco80_to_coco91_class()
def test_data_annotator():
"""Test automatic data annotation."""
from ultralytics.data.annotator import auto_annotate
auto_annotate(
ASSETS,
det_model=WEIGHTS_DIR / "yolov8n.pt",
sam_model=WEIGHTS_DIR / "mobile_sam.pt",
output_dir=TMP / "auto_annotate_labels",
)
def test_events():
"""Test event sending functionality."""
from ultralytics.hub.utils import Events
events = Events()
events.enabled = True
cfg = copy(DEFAULT_CFG) # does not require deepcopy
cfg.mode = "test"
events(cfg)
def test_cfg_init():
"""Test configuration initialization utilities."""
from ultralytics.cfg import check_dict_alignment, copy_default_cfg, smart_value
with contextlib.suppress(SyntaxError):
check_dict_alignment({"a": 1}, {"b": 2})
copy_default_cfg()
(Path.cwd() / DEFAULT_CFG_PATH.name.replace(".yaml", "_copy.yaml")).unlink(missing_ok=False)
[smart_value(x) for x in ["none", "true", "false"]]
def test_utils_init():
"""Test initialization utilities."""
from ultralytics.utils import get_git_branch, get_git_origin_url, get_ubuntu_version, is_github_action_running
get_ubuntu_version()
is_github_action_running()
get_git_origin_url()
get_git_branch()
def test_utils_checks():
"""Test various utility checks."""
checks.check_yolov5u_filename("yolov5n.pt")
checks.git_describe(ROOT)
checks.check_requirements() # check requirements.txt
checks.check_imgsz([600, 600], max_dim=1)
checks.check_imshow()
checks.check_version("ultralytics", "8.0.0")
checks.print_args()
# checks.check_imshow(warn=True)
def test_utils_benchmarks():
"""Test model benchmarking."""
from ultralytics.utils.benchmarks import ProfileModels
ProfileModels(["yolov8n.yaml"], imgsz=32, min_time=1, num_timed_runs=3, num_warmup_runs=1).profile()
def test_utils_torchutils():
"""Test Torch utility functions."""
from ultralytics.nn.modules.conv import Conv
from ultralytics.utils.torch_utils import get_flops_with_torch_profiler, profile, time_sync
x = torch.randn(1, 64, 20, 20)
m = Conv(64, 64, k=1, s=2)
profile(x, [m], n=3)
get_flops_with_torch_profiler(m)
time_sync()
@pytest.mark.slow
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
def test_utils_downloads():
"""Test file download utilities."""
from ultralytics.utils.downloads import get_google_drive_file_info
get_google_drive_file_info("https://drive.google.com/file/d/1cqT-cJgANNrhIHCrEufUYhQ4RqiWG_lJ/view?usp=drive_link")
def test_utils_ops():
"""Test various operations utilities."""
from ultralytics.utils.ops import (
ltwh2xywh,
ltwh2xyxy,
make_divisible,
xywh2ltwh,
xywh2xyxy,
xywhn2xyxy,
xywhr2xyxyxyxy,
xyxy2ltwh,
xyxy2xywh,
xyxy2xywhn,
xyxyxyxy2xywhr,
)
make_divisible(17, torch.tensor([8]))
boxes = torch.rand(10, 4) # xywh
torch.allclose(boxes, xyxy2xywh(xywh2xyxy(boxes)))
torch.allclose(boxes, xyxy2xywhn(xywhn2xyxy(boxes)))
torch.allclose(boxes, ltwh2xywh(xywh2ltwh(boxes)))
torch.allclose(boxes, xyxy2ltwh(ltwh2xyxy(boxes)))
boxes = torch.rand(10, 5) # xywhr for OBB
boxes[:, 4] = torch.randn(10) * 30
torch.allclose(boxes, xyxyxyxy2xywhr(xywhr2xyxyxyxy(boxes)), rtol=1e-3)
def test_utils_files():
"""Test file handling utilities."""
from ultralytics.utils.files import file_age, file_date, get_latest_run, spaces_in_path
file_age(SOURCE)
file_date(SOURCE)
get_latest_run(ROOT / "runs")
path = TMP / "path/with spaces"
path.mkdir(parents=True, exist_ok=True)
with spaces_in_path(path) as new_path:
print(new_path)
@pytest.mark.slow
def test_utils_patches_torch_save():
"""Test torch_save backoff when _torch_save throws RuntimeError."""
from unittest.mock import patch, MagicMock
from ultralytics.utils.patches import torch_save
mock = MagicMock(side_effect=RuntimeError)
with patch("ultralytics.utils.patches._torch_save", new=mock):
with pytest.raises(RuntimeError):
torch_save(torch.zeros(1), TMP / "test.pt")
assert mock.call_count == 4, "torch_save was not attempted the expected number of times"
def test_nn_modules_conv():
"""Test Convolutional Neural Network modules."""
from ultralytics.nn.modules.conv import CBAM, Conv2, ConvTranspose, DWConvTranspose2d, Focus
c1, c2 = 8, 16 # input and output channels
x = torch.zeros(4, c1, 10, 10) # BCHW
# Run all modules not otherwise covered in tests
DWConvTranspose2d(c1, c2)(x)
ConvTranspose(c1, c2)(x)
Focus(c1, c2)(x)
CBAM(c1)(x)
# Fuse ops
m = Conv2(c1, c2)
m.fuse_convs()
m(x)
def test_nn_modules_block():
"""Test Neural Network block modules."""
from ultralytics.nn.modules.block import C1, C3TR, BottleneckCSP, C3Ghost, C3x
c1, c2 = 8, 16 # input and output channels
x = torch.zeros(4, c1, 10, 10) # BCHW
# Run all modules not otherwise covered in tests
C1(c1, c2)(x)
C3x(c1, c2)(x)
C3TR(c1, c2)(x)
C3Ghost(c1, c2)(x)
BottleneckCSP(c1, c2)(x)
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
def test_hub():
"""Test Ultralytics HUB functionalities."""
from ultralytics.hub import export_fmts_hub, logout
from ultralytics.hub.utils import smart_request
export_fmts_hub()
logout()
smart_request("GET", "https://github.com", progress=True)
@pytest.fixture
def image():
return cv2.imread(str(SOURCE))
@pytest.mark.parametrize(
"auto_augment, erasing, force_color_jitter",
[
(None, 0.0, False),
("randaugment", 0.5, True),
("augmix", 0.2, False),
("autoaugment", 0.0, True),
],
)
def test_classify_transforms_train(image, auto_augment, erasing, force_color_jitter):
import torchvision.transforms as T
from ultralytics.data.augment import classify_augmentations
transform = classify_augmentations(
size=224,
mean=(0.5, 0.5, 0.5),
std=(0.5, 0.5, 0.5),
scale=(0.08, 1.0),
ratio=(3.0 / 4.0, 4.0 / 3.0),
hflip=0.5,
vflip=0.5,
auto_augment=auto_augment,
hsv_h=0.015,
hsv_s=0.4,
hsv_v=0.4,
force_color_jitter=force_color_jitter,
erasing=erasing,
interpolation=T.InterpolationMode.BILINEAR,
)
transformed_image = transform(Image.fromarray(cv2.cvtColor(image, cv2.COLOR_BGR2RGB)))
assert transformed_image.shape == (3, 224, 224)
assert torch.is_tensor(transformed_image)
assert transformed_image.dtype == torch.float32
@pytest.mark.slow
@pytest.mark.skipif(not ONLINE, reason="environment is offline")
def test_model_tune():
"""Tune YOLO model for performance."""
YOLO("yolov8n-pose.pt").tune(data="coco8-pose.yaml", plots=False, imgsz=32, epochs=1, iterations=2, device="cpu")
YOLO("yolov8n-cls.pt").tune(data="imagenet10", plots=False, imgsz=32, epochs=1, iterations=2, device="cpu")
def test_model_embeddings():
"""Test YOLO model embeddings."""
model_detect = YOLO(MODEL)
model_segment = YOLO(WEIGHTS_DIR / "yolov8n-seg.pt")
for batch in [SOURCE], [SOURCE, SOURCE]: # test batch size 1 and 2
assert len(model_detect.embed(source=batch, imgsz=32)) == len(batch)
assert len(model_segment.embed(source=batch, imgsz=32)) == len(batch)