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@@ -317,8 +317,9 @@ You can train your own model based on either pretrained classification model or |
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1. Convert your own dataset to COCO or VOC style. Otherwise you have to add your own data preprocess code. |
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2. Change config.py according to your own dataset, especially the `num_classes`. |
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3. Set argument `filter_weight` to `True` while calling `train.py`, this will filter the final detection box weight from the pretrained model. |
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4. Build your own bash scripts using new config and arguments for further convenient. |
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3. Prepare a pretrained checkpoint. You can load the pretrained checkpoint by `pre_trained` argument. Transfer training means a new training job, so just keep `pre_trained_epoch_size` same as default value `0`. |
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4. Set argument `filter_weight` to `True` while calling `train.py`, this will filter the final detection box weight from the pretrained model. |
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5. Build your own bash scripts using new config and arguments for further convenient. |
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### [Evaluation Process](#contents) |
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