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[2U6-IS-1c-04] Adversarial Self-attention Misdirection
Improving vision transformers performance with adversarial pre-training
[[Online, Working-in-progress]]
Keywords:Vision Transformers, Adversarial Learning, Self-attention
In recent years, the Transformer achieved remarkable results in computer vision related tasks, matching, or even surpassing those of convolutional neural networks. However, to achieve state-of-the-art results, vision transformers rely on large architectures and extensive pre-training on very large datasets. One of the main reasons for this limitation is the fact that vision transformers, whose core is its global self-attention computation, inherently lack inductive biases, with solutions often converging on a local minimum. This work presents a new method to pre-train vision transformers, denoted self-attention misdirection. In this pre-training method, an adversarial U-Net like network pre-processes the input images, altering them with the goal of misdirecting the self-attention computation process in the vision transformer. It uses style representations of image patches to generate inputs that are difficult for self-attention learning, leading the vision transformer to learn representations that generalize better on unseen data.
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