一种融合区域信息的抗噪声立体匹配算法

Feng Huahui, Zhang Geng, Zhang Xin, Hu Bingliang
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引用次数: 1

摘要

针对夜间采集的低信噪比图像在立体匹配中存在的问题,提出了一种基于半全局匹配算法和AD-Census的立体匹配框架。该算法从两个方面对原有算法进行了扩展。首先,加入图像分割信息作为附加约束,解决了路径不完全的问题,提高了代价计算的准确性;其次,采用AD-SoftCensus方法计算匹配成本体积,该方法通过将普查描述符的模式从二进制更改为二进制,从而最大限度地减少噪声对匹配质量的影响。Middlebury标准测试数据的结果表明,该算法显著提高了匹配精度。此外,还搭建了一个微光双目平台,在夜间环境下对该方法进行了测试。结果表明,与以往的方法相比,视差图的精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Noise-Resistant Stereo Matching Algorithm Integrating Regional Information
Focusing on the problem existing in stereo matching that low-SNR image, such as images collected at night, we propose a novel matching framework based on semi-global matching algorithm and AD-Census. This algorithm extends the original algorithms in two ways. First, image segmentation information as an additional constraint is added that solve the problem of incomplete path and improve the accuracy of cost calculation. Second, the matching cost volume is calculated with AD-SoftCensus measure that minimizes the impact of noise on the quality of matching by changing the pattern of census descriptor from binary to trinary. Results of Middlebury standard test data show that the algorithm significantly improves the precision of matching. In addition, a low-light binocular platform is built to test our method in night environment. Results show the disparity maps are more accurate compared to previous methods.
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