2018
DOI: 10.48550/arxiv.1803.00682
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Learning Decorrelated Hashing Codes for Multimodal Retrieval

Dayong Tian

Abstract: In social networks, heterogeneous multimedia data correlate to each other, such as videos and their corresponding tags in YouTube and image-text pairs in Facebook. Nearest neighbor retrieval across multiple modalities on large data sets becomes a hot yet challenging problem. Hashing is expected to be an efficient solution, since it represents data as binary codes. As the bit-wise XOR operations can be fast handled, the retrieval time is greatly reduced. Few existing multimodal hashing methods consider the corr… Show more

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