添加状态分类和液面分割
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131
ultralytics_yolov8-main/tests/test_engine.py
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131
ultralytics_yolov8-main/tests/test_engine.py
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# Ultralytics YOLO 🚀, AGPL-3.0 license
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import sys
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from unittest import mock
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from tests import MODEL
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from ultralytics import YOLO
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from ultralytics.cfg import get_cfg
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from ultralytics.engine.exporter import Exporter
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from ultralytics.models.yolo import classify, detect, segment
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from ultralytics.utils import ASSETS, DEFAULT_CFG, WEIGHTS_DIR
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def test_func(*args): # noqa
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"""Test function callback for evaluating YOLO model performance metrics."""
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print("callback test passed")
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def test_export():
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"""Tests the model exporting function by adding a callback and asserting its execution."""
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exporter = Exporter()
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exporter.add_callback("on_export_start", test_func)
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assert test_func in exporter.callbacks["on_export_start"], "callback test failed"
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f = exporter(model=YOLO("yolov8n.yaml").model)
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YOLO(f)(ASSETS) # exported model inference
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def test_detect():
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"""Test YOLO object detection training, validation, and prediction functionality."""
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overrides = {"data": "coco8.yaml", "model": "yolov8n.yaml", "imgsz": 32, "epochs": 1, "save": False}
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cfg = get_cfg(DEFAULT_CFG)
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cfg.data = "coco8.yaml"
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cfg.imgsz = 32
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# Trainer
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trainer = detect.DetectionTrainer(overrides=overrides)
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trainer.add_callback("on_train_start", test_func)
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assert test_func in trainer.callbacks["on_train_start"], "callback test failed"
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trainer.train()
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# Validator
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val = detect.DetectionValidator(args=cfg)
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val.add_callback("on_val_start", test_func)
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assert test_func in val.callbacks["on_val_start"], "callback test failed"
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val(model=trainer.best) # validate best.pt
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# Predictor
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pred = detect.DetectionPredictor(overrides={"imgsz": [64, 64]})
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pred.add_callback("on_predict_start", test_func)
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assert test_func in pred.callbacks["on_predict_start"], "callback test failed"
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# Confirm there is no issue with sys.argv being empty.
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with mock.patch.object(sys, "argv", []):
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result = pred(source=ASSETS, model=MODEL)
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assert len(result), "predictor test failed"
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overrides["resume"] = trainer.last
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trainer = detect.DetectionTrainer(overrides=overrides)
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try:
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trainer.train()
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except Exception as e:
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print(f"Expected exception caught: {e}")
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return
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Exception("Resume test failed!")
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def test_segment():
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"""Tests image segmentation training, validation, and prediction pipelines using YOLO models."""
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overrides = {"data": "coco8-seg.yaml", "model": "yolov8n-seg.yaml", "imgsz": 32, "epochs": 1, "save": False}
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cfg = get_cfg(DEFAULT_CFG)
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cfg.data = "coco8-seg.yaml"
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cfg.imgsz = 32
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# YOLO(CFG_SEG).train(**overrides) # works
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# Trainer
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trainer = segment.SegmentationTrainer(overrides=overrides)
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trainer.add_callback("on_train_start", test_func)
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assert test_func in trainer.callbacks["on_train_start"], "callback test failed"
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trainer.train()
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# Validator
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val = segment.SegmentationValidator(args=cfg)
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val.add_callback("on_val_start", test_func)
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assert test_func in val.callbacks["on_val_start"], "callback test failed"
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val(model=trainer.best) # validate best.pt
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# Predictor
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pred = segment.SegmentationPredictor(overrides={"imgsz": [64, 64]})
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pred.add_callback("on_predict_start", test_func)
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assert test_func in pred.callbacks["on_predict_start"], "callback test failed"
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result = pred(source=ASSETS, model=WEIGHTS_DIR / "yolov8n-seg.pt")
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assert len(result), "predictor test failed"
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# Test resume
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overrides["resume"] = trainer.last
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trainer = segment.SegmentationTrainer(overrides=overrides)
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try:
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trainer.train()
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except Exception as e:
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print(f"Expected exception caught: {e}")
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return
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Exception("Resume test failed!")
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def test_classify():
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"""Test image classification including training, validation, and prediction phases."""
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overrides = {"data": "imagenet10", "model": "yolov8n-cls.yaml", "imgsz": 32, "epochs": 1, "save": False}
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cfg = get_cfg(DEFAULT_CFG)
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cfg.data = "imagenet10"
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cfg.imgsz = 32
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# YOLO(CFG_SEG).train(**overrides) # works
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# Trainer
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trainer = classify.ClassificationTrainer(overrides=overrides)
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trainer.add_callback("on_train_start", test_func)
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assert test_func in trainer.callbacks["on_train_start"], "callback test failed"
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trainer.train()
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# Validator
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val = classify.ClassificationValidator(args=cfg)
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val.add_callback("on_val_start", test_func)
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assert test_func in val.callbacks["on_val_start"], "callback test failed"
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val(model=trainer.best)
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# Predictor
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pred = classify.ClassificationPredictor(overrides={"imgsz": [64, 64]})
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pred.add_callback("on_predict_start", test_func)
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assert test_func in pred.callbacks["on_predict_start"], "callback test failed"
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result = pred(source=ASSETS, model=trainer.best)
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assert len(result), "predictor test failed"
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