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Constructing Binary Descriptors with a Stochastic Hill Climbing Search (1501.04782v2)

Published 20 Jan 2015 in cs.CV

Abstract: Binary descriptors of image patches provide processing speed advantages and require less storage than methods that encode the patch appearance with a vector of real numbers. We provide evidence that, despite its simplicity, a stochastic hill climbing bit selection procedure for descriptor construction defeats recently proposed alternatives on a standard discriminative power benchmark. The method is easy to implement and understand, has no free parameters that need fine tuning, and runs fast.

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