2,806 research outputs found
Ranking-based Deep Cross-modal Hashing
Cross-modal hashing has been receiving increasing interests for its low
storage cost and fast query speed in multi-modal data retrievals. However, most
existing hashing methods are based on hand-crafted or raw level features of
objects, which may not be optimally compatible with the coding process.
Besides, these hashing methods are mainly designed to handle simple pairwise
similarity. The complex multilevel ranking semantic structure of instances
associated with multiple labels has not been well explored yet. In this paper,
we propose a ranking-based deep cross-modal hashing approach (RDCMH). RDCMH
firstly uses the feature and label information of data to derive a
semi-supervised semantic ranking list. Next, to expand the semantic
representation power of hand-crafted features, RDCMH integrates the semantic
ranking information into deep cross-modal hashing and jointly optimizes the
compatible parameters of deep feature representations and of hashing functions.
Experiments on real multi-modal datasets show that RDCMH outperforms other
competitive baselines and achieves the state-of-the-art performance in
cross-modal retrieval applications
Hashing for Similarity Search: A Survey
Similarity search (nearest neighbor search) is a problem of pursuing the data
items whose distances to a query item are the smallest from a large database.
Various methods have been developed to address this problem, and recently a lot
of efforts have been devoted to approximate search. In this paper, we present a
survey on one of the main solutions, hashing, which has been widely studied
since the pioneering work locality sensitive hashing. We divide the hashing
algorithms two main categories: locality sensitive hashing, which designs hash
functions without exploring the data distribution and learning to hash, which
learns hash functions according the data distribution, and review them from
various aspects, including hash function design and distance measure and search
scheme in the hash coding space
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