Understanding Robustness of Transformers for Image Classification

Srinadh Bhojanapalli(Google (United States)), Ayan Chakrabarti(Google (United States)), Daniel Gläsner(Google (United States)), Daliang Li(Google (United States)), Thomas Unterthiner(Google (United States)), Andreas Veit(Google (United States))
2021 IEEE/CVF International Conference on Computer Vision (ICCV)
October 1, 2021
Cited by 393

Abstract

Deep Convolutional Neural Networks (CNNs) have long been the architecture of choice for computer vision tasks. Recently, Transformer-based architectures like Vision Transformer (ViT) have matched or even surpassed ResNets for image classification. However, details of the Transformer architecture –such as the use of non-overlapping patches– lead one to wonder whether these networks are as robust. In this paper, we perform an extensive study of a variety of different measures of robustness of ViT models and compare the findings to ResNet baselines. We investigate robustness to input perturbations as well as robustness to model perturbations. We find that when pre-trained with a sufficient amount of data, ViT models are at least as robust as the ResNet counterparts on a broad range of perturbations. We also find that Transformers are robust to the removal of almost any single layer, and that while activations from later layers are highly correlated with each other, they nevertheless play an important role in classification.


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