Comments (1)
The way you are following does not work with YOLO. You must add your new class data to the existing 80 classes dataset and train the model if you want to detect the newly added custom class with the existing 80 classes.
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Related Issues (20)
- Is incremental training possible?
- Hyper-parameter optimization of YOLOv7 model
- Real-time video detection detect.py
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- wandb
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- labels, shapes, self.segments = zip(*cache.values())
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- David
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