基于动态规划的成对序列对齐立体匹配方法

Shi Wanli, Wang Hongyong
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引用次数: 3

摘要

本文提出了一种实用高效的立体匹配方法,利用基于动态规划的成对序列对齐算法生成密集的视差图。首先,介绍了基于动态规划的成对序列比对算法,该算法利用动态规划算法根据序列的特征构造相似度矩阵,通过回溯得到序列的最优比对;其次,我们将两幅图像中所有同义极线的像素灰度值依次视为两个字符串序列,然后通过每两个字符串序列中插入最优对齐的间隙数来计算两幅图像中对应点的视差。此外,根据极极约束,我们可以知道两幅图像的同义极极线平行于扫描线,从而将图像的二维匹配简化为一维匹配。实验结果表明,该方法稳定高效,具有较高的匹配精度和较低的计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approach for Stereo Matching Using Pair-wise Sequence Alignment Algorithm Based on Dynamic Programming
We present a practical and efficient stereo matching approach which produces a dense disparity map with the pair-wise sequence alignment algorithm based on dynamic programming in this paper. Firstly, pair-wise sequence alignment algorithm based on the dynamic programming is introduced where the optimal alignment of two sequences could be acquired by tracing back the similarity matrix which is constructed according to characters in two sequences using dynamic programming algorithm. Second, we think of pixel gray value of all homonymy epipolar lines in two images in turn as two string sequences, and then disparity of corresponding point in two images is calculated by the number of gaps inserted the optimal alignment in every two string sequences. Additionally, according to epipolar constraint we can know that homonymy epipolar lines in two images parallel to the scan-lines, so the 2D matching of images is simplified to that of 1D. The experiment result shows that the proposed approach is stable and efficient, and it has a high matching accuracy and low computational complexity.
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