资源论文Multi-View Feature Engineering and Learning

Multi-View Feature Engineering and Learning

2019-12-17 | |  65 |   55 |   0

Abstract

We frame the problem of local representation of imaging data as the computation of minimal suffificient statistics that are invariant to nuisance variability induced by viewpoint and illumination. We show that, under very stringent conditions, these are related to feature descriptorscommonly used in Computer Vision. Such conditions can be relaxed if multiple views of the same scene are available. We propose a sampling-based and a point-estimate based approximation of such a representation, compared empirically on image-to-(multiple)image matching, for which we introduce a multi-view wide-baseline matching benchmark, consisting of a mixture of real and synthetic objects with ground truth camera motion and dense three-dimensional geometry.

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