Detecting Melanoma Fairly: Skin Tone Detection and Debiasing for Skin
Lesion Classification
- URL: http://arxiv.org/abs/2202.02832v2
- Date: Tue, 8 Feb 2022 20:42:06 GMT
- Title: Detecting Melanoma Fairly: Skin Tone Detection and Debiasing for Skin
Lesion Classification
- Authors: Peter J. Bevan and Amir Atapour-Abarghouei
- Abstract summary: We use a modified variational autoencoder to uncover skin tone bias in datasets commonly used as benchmarks.
We propose an efficient yet effective algorithm for automatically labelling the skin tone of lesion images.
We subsequently use two leading bias unlearning techniques to mitigate skin tone bias.
- Score: 5.71097144710995
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Convolutional Neural Networks have demonstrated human-level performance in
the classification of melanoma and other skin lesions, but evident performance
disparities between differing skin tones should be addressed before widespread
deployment. In this work, we utilise a modified variational autoencoder to
uncover skin tone bias in datasets commonly used as benchmarks. We propose an
efficient yet effective algorithm for automatically labelling the skin tone of
lesion images, and use this to annotate the benchmark ISIC dataset. We
subsequently use two leading bias unlearning techniques to mitigate skin tone
bias. Our experimental results provide evidence that our skin tone detection
algorithm outperforms existing solutions and that unlearning skin tone improves
generalisation and can reduce the performance disparity between melanoma
detection in lighter and darker skin tones.
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