Stereo vision matching over single-channel color-based segmentation

Pablo Revuelta, B. Ruíz-Mezcua, J. M. S. Peña, J. Thiran
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引用次数: 2

Abstract

Stereo vision is one of the most important passive methods to extract depth maps. Among them, there are several approaches with advantages and disadvantages. Computational load is especially important in both the block matching and graphical cues approaches. In a previous work, we proposed a region growing segmentation solution to the matching process. In that work, matching was carried out over statistical descriptors of the image regions, commonly referred to as characteristic vectors, whose number is, by definition, lower than the possible block matching possibilities. This first version was defined for gray scale images. Although efficient, the gray scale algorithm presented some important disadvantages, mostly related to the segmentation process. In this article, we present a pre-processing tool to compute gray scale images that maintains the relevant color information, preserving both the advantages of gray scale segmentation and those of color image processing. The results of this improved algorithm are shown and compared to those obtained by the gray scale segmentation and matching algorithm, demonstrating a significant improvement of the computed depth maps.
基于单通道颜色分割的立体视觉匹配
立体视觉是提取深度图最重要的被动方法之一。其中,有几种方法的优点和缺点。在块匹配和图形线索方法中,计算负荷尤为重要。在之前的工作中,我们提出了一种区域增长分割的匹配过程解决方案。在这项工作中,对图像区域的统计描述符进行匹配,通常称为特征向量,其数量根据定义低于可能的块匹配可能性。第一个版本是为灰度图像定义的。灰度算法虽然有效,但也存在一些重要的缺点,主要与分割过程有关。在本文中,我们提出了一种预处理工具来计算灰度图像,保持相关的颜色信息,同时保留了灰度分割和彩色图像处理的优点。最后给出了改进算法的结果,并与灰度分割匹配算法的结果进行了比较,结果表明该算法在深度图计算上有了明显的改进。
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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