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02594nam a2200469Ia 4500 |
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10.1016-j.neucom.2022.04.082 |
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|a 09252312 (ISSN)
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|a Delving into the representation learning of deep hashing
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|b Elsevier B.V.
|c 2022
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|z View Fulltext in Publisher
|u https://doi.org/10.1016/j.neucom.2022.04.082
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|a Searching for the nearest neighbor is a fundamental problem in the computer vision field, and deep hashing has become one of the most representative and widely used methods, which learns to generate compact binary codes for visual data. In this paper, we first delve into the representation learning of deep hashing and surprisingly find that deep hashing could be a double-edged sword, i.e., deep hashing can accelerate the query speed and decrease the storage cost in the nearest neighbor search progress, but it greatly sacrifices the discriminability of deep representations especially with extremely short target code lengths. To solve this problem, we propose a two-step deep hashing learning framework. The first step focuses on learning deep discriminative representations with metric learning. Subsequently, the learning framework concentrates on simultaneously learning compact binary codes and preserving representations learned in the former step from being sacrificed. Extensive experiments on two general image datasets and four challenging image datasets validate the effectiveness of our proposed learning framework. Moreover, the side effect of deep hashing is successfully mitigated with our learning framework. © 2022 The Author(s)
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|a article
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|a Binary codes
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|a computer vision
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|a Computer vision
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|a Computer vision
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|a Deep hashing
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|a Deep hashing
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|a Deep learning
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|a Digital storage
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|a feature learning (machine learning)
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|a Image datasets
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|a Learn+
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|a learning
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|a Learning frameworks
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|a Metric learning
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|a Metric learning
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|a Nearest neighbor search
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|a Nearest-neighbour
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|a Representation learning
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|a Representation learning
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|a Storage costs
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|a Transfer learning
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|a Transfer learning
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|a transfer of learning
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|a velocity
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|a Visual data
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|a Chen, Z.-M.
|e author
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|a Cui, Q.
|e author
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|a Yoshie, O.
|e author
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|t Neurocomputing
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