Compact Hash Code Learning with Binary Deep Neural Network
In this work, we firstly propose deep network models and learning algorithms for learning binary hash codes given image representations under both unsupervised and supervised manners. Then, by leveraging the powerful capacity of convolutional neural networks, we propose an end-to-end architecture which jointly learns to extract visual features and produce binary hash codes. Our novel network designs constrain one hidden layer to directly output the binary codes. This addresses a challenging issue in some previous works: optimizing nonsmooth objective functions due to binarization. Additionally, we incorporate independence and balance properties in the direct and strict forms into the learning schemes. Furthermore, we also include similarity preserving property in our objective functions. Our resulting optimizations involving these binary, independence, and balance constraints are difficult to solve. We propose to attack them with alternating optimization and careful relaxation. Experimental results on the benchmark datasets show that our proposed methods compare favorably with the state of the art.
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