Similarity measures for depth estimation

K. Wegner, O. Stankiewicz
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引用次数: 11

Abstract

This paper deals with similarity measures for stereoscopic depth estimation. These measures are used for matching of image pairs, which is the first step of the estimation process. We analyze influence of these similarity measures on performance of depth estimation with use of commonly known measures and compare the results with some novel proposals. The performance is judged by increase of quality of view synthesis, which is the main aim of this paper. Experimental results over a variety of moving material demonstrate that considerable gain can be attained without any modifications to estimation core and with tuning of matching stage only. Finally, some guidelines on design of well performing similarity measures are given. For the sake of paper, the whole work is described in context of belief-propagation algorithm, but the results and conclusions apply in general for many other state-of-the art optimization techniques.
深度估计的相似度量
本文讨论了立体深度估计的相似度量。这些度量用于图像对的匹配,这是估计过程的第一步。我们分析了这些相似测度对常用测度深度估计性能的影响,并将结果与一些新的测度进行了比较。通过提高视图综合质量来判断其性能,这是本文的主要目的。在各种运动材料上的实验结果表明,在不修改估计核和只调整匹配级的情况下,可以获得可观的增益。最后,给出了设计性能良好的相似度量的一些指导原则。为了本文的目的,整个工作是在信念传播算法的背景下描述的,但结果和结论一般适用于许多其他最先进的优化技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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