Deep Metric Learning with Spherical Embedding

November 05, 2020 ยท Entered Twilight ยท ๐Ÿ› Neural Information Processing Systems

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Repo contents: .gitignore, LICENSE, README.md, config.py, data_engine.py, datasets, evaluation.py, imgs, learner.py, loss.py, models, mytrain.py, mytrain.sh, myutils.py, test_sop.py, test_sop.sh

Authors Dingyi Zhang, Yingming Li, Zhongfei Zhang arXiv ID 2011.02785 Category cs.CV: Computer Vision Cross-listed cs.LG Citations 48 Venue Neural Information Processing Systems Repository https://github.com/Dyfine/SphericalEmbedding โญ 42 Last Checked 1 month ago
Abstract
Deep metric learning has attracted much attention in recent years, due to seamlessly combining the distance metric learning and deep neural network. Many endeavors are devoted to design different pair-based angular loss functions, which decouple the magnitude and direction information for embedding vectors and ensure the training and testing measure consistency. However, these traditional angular losses cannot guarantee that all the sample embeddings are on the surface of the same hypersphere during the training stage, which would result in unstable gradient in batch optimization and may influence the quick convergence of the embedding learning. In this paper, we first investigate the effect of the embedding norm for deep metric learning with angular distance, and then propose a spherical embedding constraint (SEC) to regularize the distribution of the norms. SEC adaptively adjusts the embeddings to fall on the same hypersphere and performs more balanced direction update. Extensive experiments on deep metric learning, face recognition, and contrastive self-supervised learning show that the SEC-based angular space learning strategy significantly improves the performance of the state-of-the-art.
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