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Receptive Fields Selection for Binary Feature Description | IEEE Journals & Magazine | IEEE Xplore

Receptive Fields Selection for Binary Feature Description


Abstract:

Feature description for local image patch is widely used in computer vision. While the conventional way to design local descriptor is based on expert experience and knowl...Show More

Abstract:

Feature description for local image patch is widely used in computer vision. While the conventional way to design local descriptor is based on expert experience and knowledge, learning-based methods for designing local descriptor become more and more popular because of their good performance and data-driven property. This paper proposes a novel data-driven method for designing binary feature descriptor, which we call receptive fields descriptor (RFD). Technically, RFD is constructed by thresholding responses of a set of receptive fields, which are selected from a large number of candidates according to their distinctiveness and correlations in a greedy way. Using two different kinds of receptive fields (namely rectangular pooling area and Gaussian pooling area) for selection, we obtain two binary descriptors {\rm RFD}_{\rm R} and {\rm RFD}_{\rm G} .accordingly. Image matching experiments on the well-known patch data set and Oxford data set demonstrate that RFD significantly outperforms the state-of-the-art binary descriptors, and is comparable with the best float-valued descriptors at a fraction of processing time. Finally, experiments on object recognition tasks confirm that both {\rm RFD}_{\rm R} and {\rm RFD}_{\rm G} successfully bridge the performance gap between binary descriptors and their floating-point competitors.
Published in: IEEE Transactions on Image Processing ( Volume: 23, Issue: 6, June 2014)
Page(s): 2583 - 2595
Date of Publication: 16 April 2014

ISSN Information:

PubMed ID: 24759990

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