立体深度估计的两阶段相关方法

Nils Einecke, J. Eggert
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引用次数: 68

摘要

立体深度的计算是计算机视觉的一个重要领域。虽然已经开发了各种各样的算法,但这些算法的传统的基于相关性的版本是普遍的。这主要是由于易于实现和处理,但与基于扩散过程、图切或双边过滤的更详细的算法相比,线性计算的复杂性也更大。本文在传统匹配方法的基础上,引入了一种新的两阶段匹配代价:求和归一化互相关(SNCC)。这个新的成本函数在第一阶段执行标准化的相互关联,并在第二阶段汇总相关值。我们表明,这种新措施可以有效地实施,并导致传统立体方法的性能有实质性的改进,因为它对高对比度异常值不太敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Two-Stage Correlation Method for Stereoscopic Depth Estimation
The computation of stereoscopic depth is an important field of computer vision. Although a large variety of algorithms has been developed, the traditional correlation-based versions of these algorithms are prevalent. This is mainly due to easy implementation and handling but also to the linear computational complexity, as compared to more elaborated algorithms based on diffusion processes, graph-cut or bilateral filtering. In this paper, we introduce a new two-stage matching cost for the traditional approach: the summed normalized cross-correlation (SNCC). This new cost function performs a normalized cross-correlation in the first stage and aggregates the correlation values in a second stage. We show that this new measure can be implemented efficiently and that it leads to a substantial improvement of the performance of the traditional stereo approach because it is less sensitive to high contrast outliers.
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