404 lines
11 KiB
Python
404 lines
11 KiB
Python
# backend/ml/train_pose_model.py
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import argparse
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import json
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import shutil
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from datetime import datetime, timezone
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from pathlib import Path
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from ultralytics import YOLO
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from ultralytics.models.yolo.pose.train import PoseTrainer
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BASE_MODEL_NAME = "yolo26n-pose.pt"
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def emit_progress(stage, progress, message="", **extra):
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out = {
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"type": "progress",
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"stage": stage,
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"progress": max(0.0, min(1.0, float(progress))),
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"message": message,
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}
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out.update(extra)
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print(json.dumps(out, ensure_ascii=False), flush=True)
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def count_yolo_samples(dataset_root: Path, split: str) -> int:
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images_dir = dataset_root / "images" / split
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labels_dir = dataset_root / "labels" / split
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if not images_dir.exists() or not labels_dir.exists():
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return 0
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image_exts = {".jpg", ".jpeg", ".png", ".webp"}
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count = 0
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for image_path in images_dir.iterdir():
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if not image_path.is_file():
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continue
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if image_path.suffix.lower() not in image_exts:
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continue
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label_path = labels_dir / f"{image_path.stem}.txt"
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if label_path.exists() and label_path.is_file():
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count += 1
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return count
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def safe_int(value, fallback):
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try:
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return int(value)
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except Exception:
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return fallback
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def existing_file(path):
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try:
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p = Path(path).expanduser().resolve()
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if p.exists() and p.is_file() and p.stat().st_size > 0:
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return p
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except Exception:
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pass
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return None
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def base_model_candidates(root):
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script_dir = Path(__file__).resolve().parent
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return [
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script_dir / BASE_MODEL_NAME,
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Path.cwd() / BASE_MODEL_NAME,
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root / BASE_MODEL_NAME,
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root.parent / BASE_MODEL_NAME,
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root.parent.parent / BASE_MODEL_NAME,
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]
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def resolve_base_model(root, requested):
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requested = str(requested or "").strip()
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if requested and requested != BASE_MODEL_NAME:
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p = existing_file(requested)
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if p:
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return str(p)
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return requested
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for candidate in base_model_candidates(root):
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p = existing_file(candidate)
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if p:
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return str(p)
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return requested or BASE_MODEL_NAME
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def batch_sample_ids(batch):
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if not isinstance(batch, dict):
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return []
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image_paths = batch.get("im_file")
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if not image_paths:
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return []
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if isinstance(image_paths, (str, Path)):
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image_paths = [image_paths]
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out = []
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seen = set()
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for image_path in image_paths:
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stem = Path(str(image_path)).stem.strip()
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if stem and stem not in seen:
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seen.add(stem)
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out.append(stem)
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return out
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def progress_pose_trainer(train_count, val_count, train_device, fallback_epochs):
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class ProgressPoseTrainer(PoseTrainer):
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def __init__(self, *args, **kwargs):
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super().__init__(*args, **kwargs)
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self._preview_epoch = 0
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self._preview_batch = 0
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def preprocess_batch(self, batch):
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epoch = int(getattr(self, "epoch", 0)) + 1
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total_epochs = int(getattr(self, "epochs", fallback_epochs) or fallback_epochs)
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if epoch != self._preview_epoch:
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self._preview_epoch = epoch
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self._preview_batch = 0
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self._preview_batch += 1
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sample_ids = batch_sample_ids(batch)
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if sample_ids:
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total_batches = max(1, len(self.train_loader))
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completed = (epoch - 1) + min(1.0, self._preview_batch / total_batches)
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progress = 0.04 + 0.90 * (completed / max(1, total_epochs))
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emit_progress(
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"pose",
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progress,
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"Pose Detector trainiert…",
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epoch=epoch,
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epochs=total_epochs,
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sampleId=sample_ids[0],
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trainSamples=train_count,
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valSamples=val_count,
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device=str(train_device),
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)
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return super().preprocess_batch(batch)
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return ProgressPoseTrainer
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def main():
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parser = argparse.ArgumentParser()
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parser.add_argument("--root", required=True)
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parser.add_argument("--base", default="yolo26n-pose.pt")
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parser.add_argument("--epochs", default="80")
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parser.add_argument("--imgsz", default="640")
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parser.add_argument("--device", default="auto")
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parser.add_argument("--workers", default="2")
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parser.add_argument("--batch", default="0")
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parser.add_argument("--threads", default="0")
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parser.add_argument("--patience", default="20")
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args = parser.parse_args()
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import torch
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root = Path(args.root).resolve()
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dataset_root = root / "pose" / "dataset"
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yaml_path = dataset_root / "dataset.yaml"
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runs_dir = root / "pose" / "runs"
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out_dir = root / "pose" / "model"
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epochs = max(1, safe_int(args.epochs, 80))
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imgsz = max(64, safe_int(args.imgsz, 640))
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workers = max(0, safe_int(args.workers, 2))
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batch_size = max(0, safe_int(args.batch, 0))
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threads = max(0, safe_int(args.threads, 0))
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patience = max(0, safe_int(args.patience, 20))
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if threads > 0:
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torch.set_num_threads(threads)
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try:
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torch.set_num_interop_threads(max(1, min(threads, 4)))
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except Exception:
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pass
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if str(args.device).lower() == "auto":
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train_device = 0 if torch.cuda.is_available() else "cpu"
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else:
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train_device = args.device
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if not yaml_path.exists():
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raise SystemExit(f"dataset.yaml not found: {yaml_path}")
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train_count = count_yolo_samples(dataset_root, "train")
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val_count = count_yolo_samples(dataset_root, "val")
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emit_progress(
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"pose",
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0.01,
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"YOLO-Pose-Dataset wird geprüft…",
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trainSamples=train_count,
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valSamples=val_count,
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epochs=epochs,
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imgsz=imgsz,
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device=str(train_device),
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)
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if train_count <= 0:
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raise SystemExit("no YOLO pose train samples found")
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if val_count <= 0:
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raise SystemExit("no YOLO pose val samples found")
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emit_progress(
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"pose",
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0.03,
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"YOLO-Pose-Basismodell wird geladen…",
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base=resolve_base_model(root, args.base),
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device=str(train_device),
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)
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base_model = resolve_base_model(root, args.base)
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model = YOLO(base_model)
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best_epoch = 0
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last_epoch = 0
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best_map50 = 0.0
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best_map5095 = 0.0
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def on_train_epoch_start(trainer):
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epoch = int(getattr(trainer, "epoch", 0)) + 1
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total = int(getattr(trainer, "epochs", epochs) or epochs)
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emit_progress(
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"pose",
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0.04 + 0.90 * ((epoch - 1) / max(1, total)),
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"Pose Detector trainiert…",
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epoch=epoch,
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epochs=total,
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trainSamples=train_count,
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valSamples=val_count,
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device=str(train_device),
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)
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def on_train_epoch_end(trainer):
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nonlocal last_epoch
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epoch = int(getattr(trainer, "epoch", 0)) + 1
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total = int(getattr(trainer, "epochs", epochs) or epochs)
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last_epoch = max(last_epoch, epoch)
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emit_progress(
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"pose",
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0.04 + 0.90 * (epoch / max(1, total)),
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"Pose Detector trainiert…",
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epoch=epoch,
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epochs=total,
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trainSamples=train_count,
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valSamples=val_count,
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device=str(train_device),
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)
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def on_fit_epoch_end(trainer):
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nonlocal best_epoch, best_map50, best_map5095
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epoch = int(getattr(trainer, "epoch", 0)) + 1
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total = int(getattr(trainer, "epochs", epochs) or epochs)
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metrics = getattr(trainer, "metrics", None) or {}
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map50 = (
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metrics.get("metrics/mAP50(B)")
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or metrics.get("metrics/mAP50")
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or metrics.get("mAP50")
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)
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map5095 = (
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metrics.get("metrics/mAP50-95(B)")
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or metrics.get("metrics/mAP50-95")
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or metrics.get("mAP50-95")
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)
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if map50 is not None or map5095 is not None:
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best_epoch = epoch
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m50 = float(map50) if map50 is not None else 0.0
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if m50 >= best_map50:
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best_map50 = m50
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if map5095 is not None:
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best_map5095 = float(map5095)
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emit_progress(
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"pose",
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0.04 + 0.90 * (epoch / max(1, total)),
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"Pose Detector validiert…",
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epoch=epoch,
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epochs=total,
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mAP50=map50,
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mAP5095=map5095,
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device=str(train_device),
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)
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model.add_callback("on_train_epoch_start", on_train_epoch_start)
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model.add_callback("on_train_epoch_end", on_train_epoch_end)
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model.add_callback("on_fit_epoch_end", on_fit_epoch_end)
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emit_progress(
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"pose",
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0.05,
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"Pose Detector Training startet…",
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trainSamples=train_count,
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valSamples=val_count,
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epochs=epochs,
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imgsz=imgsz,
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device=str(train_device),
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)
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train_kwargs = {
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"trainer": progress_pose_trainer(
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train_count,
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val_count,
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train_device,
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epochs,
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),
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"data": str(yaml_path),
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"epochs": epochs,
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"imgsz": imgsz,
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"project": str(runs_dir),
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"name": "pose",
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"exist_ok": True,
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"device": train_device,
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"workers": workers,
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"patience": patience,
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}
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if batch_size > 0:
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train_kwargs["batch"] = batch_size
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result = model.train(**train_kwargs)
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emit_progress(
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"pose",
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0.96,
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"Bestes YOLO-Pose-Modell wird übernommen…",
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lastEpoch=last_epoch,
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bestEpoch=best_epoch,
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device=str(train_device),
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)
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best = runs_dir / "pose" / "weights" / "best.pt"
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last = runs_dir / "pose" / "weights" / "last.pt"
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if not best.exists():
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if last.exists():
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best = last
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else:
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raise SystemExit(f"best.pt not found after training: {best}")
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out_dir.mkdir(parents=True, exist_ok=True)
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final_model = out_dir / "best.pt"
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shutil.copy2(best, final_model)
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result_path = runs_dir / "pose"
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status = {
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"ok": True,
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"model": str(final_model),
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"sourceModel": str(best),
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"runs": str(result_path),
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"trainedAt": datetime.now(timezone.utc).isoformat(),
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"trainSamples": train_count,
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"valSamples": val_count,
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"epochs": epochs,
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"imgsz": imgsz,
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"batchSize": batch_size,
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"threads": threads,
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"workers": workers,
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"device": str(train_device),
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"mAP50": round(best_map50, 4),
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"mAP5095": round(best_map5095, 4),
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"bestEpoch": best_epoch,
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}
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with (out_dir / "status.json").open("w", encoding="utf-8") as f:
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json.dump(status, f, ensure_ascii=False, indent=2)
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emit_progress(
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"pose",
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1.0,
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"Pose Detector fertig.",
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**status,
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)
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print(json.dumps(status, ensure_ascii=False), flush=True)
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if __name__ == "__main__":
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main()
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