Discrete Graph Hashing
Liu, Wei, Mu, Cun, Kumar, Sanjiv, Chang, Shih-Fu
–Neural Information Processing Systems
Hashing has emerged as a popular technique for fast nearest neighbor search in gigantic databases. In particular, learning based hashing has received considerable attention due to its appealing storage and search efficiency. However, the performance of most unsupervised learning based hashing methods deteriorates rapidly as the hash code length increases. We argue that the degraded performance is due to inferior optimization procedures used to achieve discrete binary codes. This paper presents a graph-based unsupervised hashing model to preserve the neighborhood structure of massive data in a discrete code space.
Neural Information Processing Systems
Feb-14-2020, 12:57:01 GMT
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