资源论文Learning Compact Binary Descriptors with Unsupervised Deep Neural Networks

Learning Compact Binary Descriptors with Unsupervised Deep Neural Networks

2019-12-30 | |  164 |   50 |   0

Abstract

In this paper, we propose a new unsupervised deep learning approach called DeepBit to learn compact binary descriptor for effificient visual object matching. Unlike most existing binary descriptors which were designed with random projections or linear hash functions, we develop a deep neural network to learn binary descriptors in an unsupervised manner. We enforce three criterions on binary codes which are learned at the top layer of our network: 1) minimal loss quantization, 2) evenly distributed codes and 3) uncorrelated bits. Then, we learn the parameters of the networks with a back-propagation technique. Experimental results on three different visual analysis tasks including image matching, image retrieval, and object recognition clearly demonstrate the effectiveness of the proposed approach

上一篇:Joint Unsupervised Learning of Deep Representations and Image Clusters

下一篇:Large Scale Semi-supervised Object Detection using Visual and Semantic Knowledge Transfer

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