http://10.10.120.238:8080/xmlui/handle/123456789/813
Title: | Learning to hash: a comprehensive survey of deep learning-based hashing methods |
Authors: | Singh A. Gupta S. |
Keywords: | Deep learning Hashing Nearest neighbor retrieval Taxonomy |
Issue Date: | 2022 |
Publisher: | Springer Science and Business Media Deutschland GmbH |
Abstract: | Explosive growth of big data demands efficient and fast algorithms for nearest neighbor search. Deep learning-based hashing methods have proved their efficacy to learn advanced hash functions that suit the desired goal of nearest neighbor search in large image-based data-sets. In this work, we present a comprehensive review of different deep learning-based supervised hashing methods particularly for image data-sets suggested by various researchers till date to generate advanced hash functions. We categorize prior works into a five-tier taxonomy based on: (i) the design of network architecture, (ii) training strategy based on nature of data-set, (iii) the type of loss function, (iv) the similarity measure and, (v) the nature of quantization. Further, different data-sets used in prior works are reported and compared based on various challenges in the characteristics of images that are part of the data-sets. Lastly, different future directions such as incremental hashing, cross-modality hashing and guidelines to improve design of hash functions are discussed. Based on our comparative review, it has been observed that generative adversarial networks-based hashing models outperform other methods. This is due to the fact that they leverage more data in the form of both real world and synthetically generated data. Furthermore, it has been perceived that triplet-loss-based loss functions learn better discriminative representations by pushing similar patterns together and dis-similar patterns away from each other. This study and its observations shall be useful for the researchers and practitioners working in this emerging research field. © 2022, The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature. |
URI: | https://dx.doi.org/10.1007/s10115-022-01734-0 http://localhost:8080/xmlui/handle/123456789/813 |
ISSN: | 0219-1377 |
Appears in Collections: | Journal Article |
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