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We investigated corruption robustness across different architectures including Convolutional Neural Networks, Vision Transformers, and the MLP-Mixer.

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CorruptionRobustness

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Paper

This work presented at the Uncertainty & Robustness in Deep Learning workshop at ICML 2021. You can view our current arXiv paper here. Note: some of the normalization techniques we used we later found out were not appropriate for certain models. However, originally, normalziation for all models was the same values (imagenet normalization). This is a workshop paper and is preliminary work done by all undergraduates. We appreciate the kind feedback.

Summary

We explored corruption robustness across different Convolutional Neural Networks, Vision Transformer architectures, and the MLP-Mixer.

Corruption Robustness

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Shape Bias

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Analysis

Coming soon - view appendix in the meantime!

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We investigated corruption robustness across different architectures including Convolutional Neural Networks, Vision Transformers, and the MLP-Mixer.

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