Authors
Kevin Joslyn, Kai Li, Kien Hua
Publication date
2018/6
Conference
Proceedings of the 2018 ACM on International Conference on Multimedia Retrieval
Pages
55-63
Publisher
https://dl.acm.org/citation.cfm?doid=3206025.3206066
Description
Cross-modal hashing has become a popular research topic in recent years due to the efficiency of storing and retrieving high-dimensional multimodal data represented by compact binary codes. While most cross-modal hash functions use binary space partitioning functions (e.g. the sign function), our method uses ranking-based hashing, which is based on numerically stable and scale-invariant rank correlation measures. In this paper, we propose a novel deep learning architecture called Deep De-correlated Subspace Ranking Hashing (DDSRH) that uses feature-ranking methods to determine the hash codes for the image and text modalities in a common hamming space. Specifically, DDSRH learns a set of de-correlated nonlinear subspaces on which to project the original features, so that the hash code can be determined by the relative ordering of projected feature values in a given optimized subspace. The …
Total citations
2018201920202021202211111
Scholar articles
K Joslyn, K Li, KA Hua - Proceedings of the 2018 ACM on International …, 2018