Mixture of Experts Residual Learning for Hamming Hashing

被引:0
|
作者
Jinyu Xu
Qing Xie
Jiachen Li
Yanchun Ma
Yuhan Liu
机构
[1] Wuhan University of Technology,School of Computer Science and Artificial Intelligence
[2] Engineering Research Center of Intelligent Service Technology for Digital Publishing,School of Management
[3] Ministry of Education,School of Architecture and Urban Planning
[4] Wuhan University of Technology,undefined
[5] Huazhong University of Science and Technology,undefined
[6] State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body,undefined
来源
Neural Processing Letters | 2023年 / 55卷
关键词
Image retrieval; Hamming hashing; Mixture of experts; Attentional mechanism;
D O I
暂无
中图分类号
学科分类号
摘要
Image retrieval has drawn growing attention due to the rapid emergence of images on the Internet. Due to the high storage and computation efficiency, hashing methods are widely employed in approximate nearest neighbor search for large-scale image retrieval. Existing deep supervised hashing methods mainly utilize the labels to analyze the semantic similarity and preserve it in hash codes, but the collected label information may be incomplete or unreliable in real-world. Meanwhile, the features extracted by a single convolutional neural network (CNN) from complex images are difficult to express the latent information, or potential to miss certain semantic information. Thus, this work further exploits existing knowledge from the pre-trained semantic features of higher quality, and proposes mixture of experts residual learning for Hamming hashing (MoE-hash), which brings in the experts for image hashing in Hamming space. Specifically, we separately extract the basic visual features by a CNN, and different semantic features by existing expert models. To better preserve the semantic information in compact hash codes, we learn the hash codes by the mixture of experts (MoE) residual learning block with max-margin t-distribution-based loss. Extensive experiments on MS-COCO and NUS-WIDE demonstrate that our model can achieve clear improvement in retrieval performance, and validate the role of mixture of experts residual learning in image hashing task.
引用
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页码:7077 / 7093
页数:16
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