Deep Semantic Cross Modal Hashing Based on Graph Similarity of Modal-Specific

With the advantages of low storage cost and fast query speed, cross modal hashing has attracted increasing attention recently. However, most existing cross-modal hashing methods adopt the same measurement metric when processing data of different modalities or cannot explore heterogeneous correlation...

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Bibliographic Details
Main Author: Junzheng Li
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9467315/
Description
Summary:With the advantages of low storage cost and fast query speed, cross modal hashing has attracted increasing attention recently. However, most existing cross-modal hashing methods adopt the same measurement metric when processing data of different modalities or cannot explore heterogeneous correlation between different modalities well, which will result in information loss and heterogeneous correlation cannot be solved. In this paper, we propose a Deep semantic Cross Modal Hashing based on Graph similarity of Modal-Specific (DCMHGMS) method, which not only considers the inter-modal similarity but also designs two graphs to characterize the intra-modal similarity of modal-specific models. First, we use a weighted measurement metric of Euclidean distance and cosine distance to measure the inter-modal similarity between image and text, which can solve the heterogeneous correlation problem. Next, for image graph, we build the intra-modal similarity with Euclidean distance function. Then, for text graph, we build the intra-modal similarity with cosine distance function. Paying attention to the specifics of each modality can improve the retrieval accuracy, thus solving the problem of information loss. Moreover, the semantic information embedding, quantization loss, and bit balanced constraint are considered in this model. Experimental results on two datasets show the effectiveness of our proposed DCMHGMS method.
ISSN:2169-3536