Spatially Exclusive Pasting: A General Data Augmentation for the Polyp Segmentation

15 Nov 2022  ·  Lei Zhou ·

Automated polyp segmentation technology plays an important role in diagnosing intestinal diseases, such as tumors and precancerous lesions. Previous works have typically trained convolution-based U-Net or Transformer-based neural network architectures with labeled data. However, the available public polyp segmentation datasets are too small to train the network sufficiently, suppressing each network's potential performance. To alleviate this issue, we propose a universal data augmentation technology to synthesize more data from the existing datasets. Specifically, we paste the polyp area into the same image's background in a spatial-exclusive manner to obtain a combinatorial number of new images. Extensive experiments on various networks and datasets show that the proposed method enhances the data efficiency and achieves consistent improvements over baselines. Finally, we hit a new state of the art in this task. We will release the code soon.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Medical Image Segmentation Kvasir-SEG SEP mean Dice 0.9411 # 4
mIoU 0.9002 # 2

Methods