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81 lines
2.9 KiB
81 lines
2.9 KiB
1 year ago
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# Ultralytics YOLO 🚀, AGPL-3.0 license
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1 year ago
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from copy import copy
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import torch
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1 year ago
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from ultralytics.models.yolo.detect import DetectionTrainer
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1 year ago
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from ultralytics.nn.tasks import RTDETRDetectionModel
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1 year ago
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from ultralytics.utils import DEFAULT_CFG, RANK, colorstr
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1 year ago
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from .val import RTDETRDataset, RTDETRValidator
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class RTDETRTrainer(DetectionTrainer):
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def get_model(self, cfg=None, weights=None, verbose=True):
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"""Return a YOLO detection model."""
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model = RTDETRDetectionModel(cfg, nc=self.data['nc'], verbose=verbose and RANK == -1)
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if weights:
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model.load(weights)
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return model
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def build_dataset(self, img_path, mode='val', batch=None):
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"""Build RTDETR Dataset
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Args:
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img_path (str): Path to the folder containing images.
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mode (str): `train` mode or `val` mode, users are able to customize different augmentations for each mode.
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batch (int, optional): Size of batches, this is for `rect`. Defaults to None.
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"""
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return RTDETRDataset(
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img_path=img_path,
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imgsz=self.args.imgsz,
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batch_size=batch,
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augment=mode == 'train', # no augmentation
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hyp=self.args,
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rect=False, # no rect
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cache=self.args.cache or None,
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prefix=colorstr(f'{mode}: '),
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data=self.data)
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def get_validator(self):
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"""Returns a DetectionValidator for RTDETR model validation."""
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self.loss_names = 'giou_loss', 'cls_loss', 'l1_loss'
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return RTDETRValidator(self.test_loader, save_dir=self.save_dir, args=copy(self.args))
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def preprocess_batch(self, batch):
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"""Preprocesses a batch of images by scaling and converting to float."""
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batch = super().preprocess_batch(batch)
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bs = len(batch['img'])
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batch_idx = batch['batch_idx']
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gt_bbox, gt_class = [], []
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for i in range(bs):
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gt_bbox.append(batch['bboxes'][batch_idx == i].to(batch_idx.device))
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gt_class.append(batch['cls'][batch_idx == i].to(device=batch_idx.device, dtype=torch.long))
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return batch
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def train(cfg=DEFAULT_CFG, use_python=False):
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"""Train and optimize RTDETR model given training data and device."""
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model = 'rtdetr-l.yaml'
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data = cfg.data or 'coco128.yaml' # or yolo.ClassificationDataset("mnist")
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device = cfg.device if cfg.device is not None else ''
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# NOTE: F.grid_sample which is in rt-detr does not support deterministic=True
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# NOTE: amp training causes nan outputs and end with error while doing bipartite graph matching
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args = dict(model=model,
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data=data,
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device=device,
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imgsz=640,
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exist_ok=True,
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batch=4,
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deterministic=False,
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amp=False)
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trainer = RTDETRTrainer(overrides=args)
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trainer.train()
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if __name__ == '__main__':
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train()
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