2,123 research outputs found

    The Power of Asymmetry in Binary Hashing

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    When approximating binary similarity using the hamming distance between short binary hashes, we show that even if the similarity is symmetric, we can have shorter and more accurate hashes by using two distinct code maps. I.e. by approximating the similarity between xx and x′x' as the hamming distance between f(x)f(x) and g(x′)g(x'), for two distinct binary codes f,gf,g, rather than as the hamming distance between f(x)f(x) and f(x′)f(x').Comment: Accepted to NIPS 2013, 9 pages, 5 figure

    Region-DH: Region-based Deep Hashing for Multi-Instance Aware Image Retrieval

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    This paper introduces an instance-aware hashing approach Region-DH for large-scale multi-label image retrieval. The accurate object bounds can significantly increase the hashing performance of instance features. We design a unified deep neural network that simultaneously localizes and recognizes objects while learning the hash functions for binary codes. Region-DH focuses on recognizing objects and building compact binary codes that represent more foreground patterns. Region-DH can flexibly be used with existing deep neural networks or more complex object detectors for image hashing. Extensive experiments are performed on benchmark datasets and show the efficacy and robustness of the proposed Region-DH model
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