Bit-Scalable Deep Hashing with Regularized Similarity Learning for Image Retrieval and Person Re-identification
Ruimao Zhang, Liang Lin, Rui Zhang, Wangmeng Zuo, Lei Zhang

TL;DR
This paper introduces a deep learning framework for generating compact, bit-scalable hashing codes directly from raw images, optimizing similarity learning with regularization for improved image retrieval and person re-identification.
Contribution
It presents a novel end-to-end deep hashing method that produces flexible-length codes by regularized similarity learning from triplet samples, outperforming existing methods.
Findings
Outperforms state-of-the-art in image retrieval benchmarks
Achieves promising results in person re-identification
Codes preserve discriminative power at shorter lengths
Abstract
Extracting informative image features and learning effective approximate hashing functions are two crucial steps in image retrieval . Conventional methods often study these two steps separately, e.g., learning hash functions from a predefined hand-crafted feature space. Meanwhile, the bit lengths of output hashing codes are preset in most previous methods, neglecting the significance level of different bits and restricting their practical flexibility. To address these issues, we propose a supervised learning framework to generate compact and bit-scalable hashing codes directly from raw images. We pose hashing learning as a problem of regularized similarity learning. Specifically, we organize the training images into a batch of triplet samples, each sample containing two images with the same label and one with a different label. With these triplet samples, we maximize the margin between…
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