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Semi-supervised semantic factorization hashing for fast cross-modal retrieval

机译:半监督语义分解散列算法,用于快速跨模态检索

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摘要

Cross-modal hashing can effectively solve the large-scale cross-modal retrieval by integrating the advantages of traditional cross-modal analysis and hashing techniques. In cross-modal hashing, preserving semantic correlation is important and challenging. However, current hashing methods cannot well preserve the semantic correlation in hash codes. Supervised hashing requires labeled data which is difficult to obtain, and unsupervised hashing cannot effectively learn semantic correlation from multi-modal data. In order to effectively learn semantic correlation to improve hashing performance, we propose a novel approach: Semi-Supervised Semantic Factorization Hashing (S3FH), for large-scale cross-modal retrieval. The main purpose of S3FH is to improve semantic labels and factorize it into hash codes. It optimizes a joint framework which consists of three interactive parts, including semantic factorization, multi-graph learning and multi-modal correlation. Then, an efficient alternating algorithm is derived for optimizing S3FH. Extensive experiments on two real world multi-modal datasets demonstrate the effectiveness of S3FH.
机译:跨模态哈希可以通过整合传统跨模态分析和哈希技术的优势,有效地解决大规模跨模态检索问题。在跨模式哈希中,保留语义相关性非常重要且具有挑战性。但是,当前的哈希方法不能很好地保持哈希码中的语义相关性。有监督的散列需要难以获得的标记数据,无监督的散列不能有效地从多模式数据中学习语义相关性。为了有效地学习语义相关性以提高哈希性能,我们提出了一种新颖的方法:半监督语义因子分解哈希(S3FH),用于大规模的交叉模式检索。 S3FH的主要目的是改进语义标签并将其分解为哈希码。它优化了一个包含三个交互部分的联合框架,包括语义分解,多图学习和多模式关联。然后,导出了用于优化S3FH的高效交替算法。在两个现实世界的多模式数据集上进行的大量实验证明了S3FH的有效性。

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