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Papers/BiaSwap: Removing dataset bias with bias-tailored swapping...

BiaSwap: Removing dataset bias with bias-tailored swapping augmentation

Eungyeup Kim, Jihyeon Lee, Jaegul Choo

2021-08-23ICCV 2021 10Facial Attribute ClassificationAction Recognition
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Abstract

Deep neural networks often make decisions based on the spurious correlations inherent in the dataset, failing to generalize in an unbiased data distribution. Although previous approaches pre-define the type of dataset bias to prevent the network from learning it, recognizing the bias type in the real dataset is often prohibitive. This paper proposes a novel bias-tailored augmentation-based approach, BiaSwap, for learning debiased representation without requiring supervision on the bias type. Assuming that the bias corresponds to the easy-to-learn attributes, we sort the training images based on how much a biased classifier can exploits them as shortcut and divide them into bias-guiding and bias-contrary samples in an unsupervised manner. Afterwards, we integrate the style-transferring module of the image translation model with the class activation maps of such biased classifier, which enables to primarily transfer the bias attributes learned by the classifier. Therefore, given the pair of bias-guiding and bias-contrary, BiaSwap generates the bias-swapped image which contains the bias attributes from the bias-contrary images, while preserving bias-irrelevant ones in the bias-guiding images. Given such augmented images, BiaSwap demonstrates the superiority in debiasing against the existing baselines over both synthetic and real-world datasets. Even without careful supervision on the bias, BiaSwap achieves a remarkable performance on both unbiased and bias-guiding samples, implying the improved generalization capability of the model.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingbFFHQBias-Conflicting Accuracy58.87BiaSwap
Activity RecognitionBARAccuracy52.44BiaSwap
Face ReconstructionbFFHQBias-Conflicting Accuracy58.87BiaSwap
3DbFFHQBias-Conflicting Accuracy58.87BiaSwap
3D Face ModellingbFFHQBias-Conflicting Accuracy58.87BiaSwap
Action RecognitionBARAccuracy52.44BiaSwap
3D Face ReconstructionbFFHQBias-Conflicting Accuracy58.87BiaSwap

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