多视图特征工程与学习

Jingming Dong, Nikolaos Karianakis, Damek Davis, Joshua Hernandez, Jonathan Balzer, Stefano Soatto
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引用次数: 27

摘要

我们将成像数据的局部表示问题定义为最小充分统计量的计算,这些统计量对视点和光照引起的讨厌变化是不变的。我们表明,在非常严格的条件下,这些与计算机视觉中常用的“特征描述符”相关。如果同一场景的多个视图可用,这些条件可以放松。我们提出了一种基于采样和基于点估计的近似表示,并对图像到(多)图像匹配进行了经验比较,为此我们引入了一种多视图宽基线匹配基准,该基准由真实物体和合成物体混合组成,具有真实的相机运动和密集的三维几何形状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-view feature engineering and learning
We frame the problem of local representation of imaging data as the computation of minimal sufficient statistics that are invariant to nuisance variability induced by viewpoint and illumination. We show that, under very stringent conditions, these are related to “feature descriptors” commonly 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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