Optimizing affinity-based binary hashing using auxiliary coordinates
Raziperchikolaei, Ramin, Carreira-Perpinan, Miguel A.
–Neural Information Processing Systems
In supervised binary hashing, one wants to learn a function that maps a high-dimensional feature vector to a vector of binary codes, for application to fast image retrieval. This typically results in a difficult optimization problem, nonconvex and nonsmooth, because of the discrete variables involved. Much work has simply relaxed the problem during training, solving a continuous optimization, and truncating the codes a posteriori. This gives reasonable results but is quite suboptimal. Recent work has tried to optimize the objective directly over the binary codes and achieved better results, but the hash function was still learned a posteriori, which remains suboptimal.
Neural Information Processing Systems
Feb-14-2020, 06:25:59 GMT
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