CVDec 9, 2021

Exploring the Equivalence of Siamese Self-Supervised Learning via A Unified Gradient Framework

arXiv:2112.05141v372 citationsHas Code
Originality Incremental advance
AI Analysis

This work provides a unifying theoretical framework for self-supervised learning in computer vision, which is incremental but clarifies the equivalence of existing methods.

The paper demonstrates that various self-supervised learning methods can be unified into a single gradient framework, revealing little performance gap between them and identifying the momentum encoder as key to boosting performance; it proposes UniGrad, a simple gradient form that achieves state-of-the-art results without requiring a memory bank or predictor network.

Self-supervised learning has shown its great potential to extract powerful visual representations without human annotations. Various works are proposed to deal with self-supervised learning from different perspectives: (1) contrastive learning methods (e.g., MoCo, SimCLR) utilize both positive and negative samples to guide the training direction; (2) asymmetric network methods (e.g., BYOL, SimSiam) get rid of negative samples via the introduction of a predictor network and the stop-gradient operation; (3) feature decorrelation methods (e.g., Barlow Twins, VICReg) instead aim to reduce the redundancy between feature dimensions. These methods appear to be quite different in the designed loss functions from various motivations. The final accuracy numbers also vary, where different networks and tricks are utilized in different works. In this work, we demonstrate that these methods can be unified into the same form. Instead of comparing their loss functions, we derive a unified formula through gradient analysis. Furthermore, we conduct fair and detailed experiments to compare their performances. It turns out that there is little gap between these methods, and the use of momentum encoder is the key factor to boost performance. From this unified framework, we propose UniGrad, a simple but effective gradient form for self-supervised learning. It does not require a memory bank or a predictor network, but can still achieve state-of-the-art performance and easily adopt other training strategies. Extensive experiments on linear evaluation and many downstream tasks also show its effectiveness. Code is released at https://github.com/fundamentalvision/UniGrad.

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