CVLGJun 22, 2025

Enhancing VICReg: Random-Walk Pairing for Improved Generalization and Better Global Semantics Capturing

arXiv:2506.18104v1h-index: 30
Originality Incremental advance
AI Analysis

This is an incremental improvement for self-supervised learning in computer vision, addressing generalization and global semantics in image representations.

The paper tackles VICReg's potential generalization issues in self-supervised learning by introducing SAG-VICReg, which improves global semantics capturing and matches or surpasses state-of-the-art baselines.

In this paper, we argue that viewing VICReg-a popular self-supervised learning (SSL) method--through the lens of spectral embedding reveals a potential source of sub-optimality: it may struggle to generalize robustly to unseen data due to overreliance on the training data. This observation invites a closer look at how well this method achieves its goal of producing meaningful representations of images outside of the training set as well. Here, we investigate this issue and introduce SAG-VICReg (Stable and Generalizable VICReg), a method that builds on VICReg by incorporating new training techniques. These enhancements improve the model's ability to capture global semantics within the data and strengthen the generalization capabilities. Experiments demonstrate that SAG-VICReg effectively addresses the generalization challenge while matching or surpassing diverse state-of-the-art SSL baselines. Notably, our method exhibits superior performance on metrics designed to evaluate global semantic understanding, while simultaneously maintaining competitive results on local evaluation metrics. Furthermore, we propose a new standalone evaluation metric for embeddings that complements the standard evaluation methods and accounts for the global data structure without requiring labels--a key issue when tagged data is scarce or not available.

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