Segment-Tree Based Cost Aggregation for Stereo Matching

Peng Yao, Hua Zhang, Yanbing Xue, Mian Zhou, Guangping Xu, Zan Gao, Shengyong Chen
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引用次数: 137

Abstract

This paper presents a novel tree-based cost aggregation method for dense stereo matching. Instead of employing the minimum spanning tree (MST) and its variants, a new tree structure, "Segment-Tree", is proposed for non-local matching cost aggregation. Conceptually, the segment-tree is constructed in a three-step process: first, the pixels are grouped into a set of segments with the reference color or intensity image, second, a tree graph is created for each segment, and in the final step, these independent segment graphs are linked to form the segment-tree structure. In practice, this tree can be efficiently built in time nearly linear to the number of the image pixels. Compared to MST where the graph connectivity is determined with local edge weights, our method introduces some 'non-local' decision rules: the pixels in one perceptually consistent segment are more likely to share similar disparities, and therefore their connectivity within the segment should be first enforced in the tree construction process. The matching costs are then aggregated over the tree within two passes. Performance evaluation on 19 Middlebury data sets shows that the proposed method is comparable to previous state-of-the-art aggregation methods in disparity accuracy and processing speed. Furthermore, the tree structure can be refined with the estimated disparities, which leads to consistent scene segmentation and significantly better aggregation results.
基于分割树的成本聚合立体匹配
提出了一种基于树的密集立体匹配成本聚合方法。针对非局部匹配成本聚合问题,提出了一种新的树结构“分段树”,取代了最小生成树及其变体。从概念上讲,段树的构建分为三个步骤:首先,像素被分成一组具有参考颜色或强度图像的段,其次,为每个段创建一个树状图,在最后一步,这些独立的段图被连接起来形成段树结构。在实践中,该树可以在与图像像素数近似线性的时间内有效地构建。与MST相比,图的连通性是由局部边缘权重决定的,我们的方法引入了一些“非局部”决策规则:在一个感知一致的段中的像素更有可能共享相似的差异,因此它们在段内的连通性应该首先在树构建过程中强制执行。然后,匹配成本在两个通道内对树进行汇总。对19个Middlebury数据集的性能评估表明,所提出的方法在视差精度和处理速度方面与以前最先进的聚合方法相当。此外,可以利用估计的差异对树结构进行细化,从而实现一致的场景分割和明显更好的聚合效果。
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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