CVJun 17, 2020

Self-supervised Knowledge Distillation for Few-shot Learning

arXiv:2006.09785v2123 citationsHas Code
AI Analysis

This addresses the challenge of learning from limited data in real-world scenarios with many object classes, offering an incremental improvement over existing methods.

The paper tackles the problem of few-shot learning by improving feature embeddings through a two-stage process involving self-supervised entropy maximization and distillation, achieving state-of-the-art performance with further gains from distillation.

Real-world contains an overwhelmingly large number of object classes, learning all of which at once is infeasible. Few shot learning is a promising learning paradigm due to its ability to learn out of order distributions quickly with only a few samples. Recent works [7, 41] show that simply learning a good feature embedding can outperform more sophisticated meta-learning and metric learning algorithms for few-shot learning. In this paper, we propose a simple approach to improve the representation capacity of deep neural networks for few-shot learning tasks. We follow a two-stage learning process: First, we train a neural network to maximize the entropy of the feature embedding, thus creating an optimal output manifold using a self-supervised auxiliary loss. In the second stage, we minimize the entropy on feature embedding by bringing self-supervised twins together, while constraining the manifold with student-teacher distillation. Our experiments show that, even in the first stage, self-supervision can outperform current state-of-the-art methods, with further gains achieved by our second stage distillation process. Our codes are available at: https://github.com/brjathu/SKD.

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