avikus-ai / detect_train

YOLOv5 🚀 in PyTorch > ONNX > CoreML > TFLite
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@youngjae-avikus #16

Closed jccmoing-bit closed 1 year ago

jccmoing-bit commented 1 year ago
          @youngjae-avikus 

cap를 mosaic와 함께 적용하고 싶으시면 mosaic에 확률을 주시고, capmosaic에 True로 주신 후 targetclass, objscale, tarobjnum을 설정해주시면 되겠습니다.

mosaic를 적용하지 않고 cap만 적용하려면 mosaic를 0.0 주시고, capmosaic를 False 주신 후 copyandpaste에 확률 값을 주시면 되겠습니다.

예시 hyperparameter)

  1. cap & mosaic
    • mosaic: 1.0
    • capmosaic: True
    • targetclass: 0
    • objscale: 10000
    • tarobjnum: 5
    • copyandpaste: 0.0
  2. cap만 적용
    • mosaic: 0.0
    • capmosaic: False
    • targetclass: 0
    • objscale: 10000
    • tarobjnum: 5
    • copyandpaste: 1.0
  3. mosaic만 적용
    • mosaic: 1.0
    • capmosaic: False
    • copyandpaste: 0.0

_Originally posted by @dongwooshimssss in https://github.com/avikus-ai/detect_train/issues/13#issuecomment-1445877352_

github-actions[bot] commented 1 year ago

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jccmoing-bit commented 1 year ago

hello i want to know how to increase gridmask for data augmentation in YOLOv5 thank you very much

github-actions[bot] commented 1 year ago

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