Few-Shot Image Classification via Contrastive Self-Supervised Learning
The success of Vision Transformer (ViT) in various computer vision tasks has
promoted the ever-increasing prevalence of this convolution-free network. The
fact that ViT works on image patches makes it potentially relevant to the
problem of jigsaw puzzle solving, which is a classical self-supervised task
aiming at reordering shuffled sequential image patches back to their natural
form. Despite its simplicity, solving jigsaw puzzle has been demonstrated to be
helpful for diverse tasks using Convolutional Neural Networks (CNNs), such as
self-supervised feature representation learning, domain generalization, and
fine-grained classification.
In this paper, we explore solving jigsaw puzzle as a self-supervised
auxiliary loss in ViT for image classification, named Jigsaw-ViT. We show two
modifications that can make Jigsaw-ViT superior to standard ViT: discarding
positional embeddings and masking patches randomly. Yet simple, we find that
Jigsaw-ViT is able to improve both in generalization and robustness over the
standard ViT, which is usually rather a trade-off. Experimentally, we show that
adding the jigsaw puzzle branch provides better generalization than ViT on
large-scale image classification on ImageNet. Moreover, the auxiliary task also
improves robustness to noisy labels on Animal-10N, Food-101N, and Clothing1M as
well as adversarial examples. Our implementation is available at
https://yingyichen-cyy.github.io/Jigsaw-ViT/.