基于一致半全局匹配的结构化环境立体视觉

H. Hirschmüller
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引用次数: 182

摘要

本文考虑了立体视觉在结构化环境中的应用。必须预料到尖锐的不连续和大面积的无纹理区域,但也应处理复杂或自然形状的物体和精细结构。此外,在实际应用中,经常会出现输入图像的辐射差异。最后,计算时间是在可接受的时间内处理大型或许多图像的一个问题。选择半全局匹配方法是因为它已经满足了许多要求。仔细分析了结构化环境中存在的问题,并提出了两个新的扩展。首先,提出了处理非纹理区域的强度一致视差选择方法。其次,针对某些滤波器在视差图像中造成的孔洞,提出了保持不连续的插值方法。实验结果表明,该方法在具有地面真值的测试图像上的性能与目前最好的立体图像方法相当,但复杂度和运行时间大大降低。
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Stereo Vision in Structured Environments by Consistent Semi-Global Matching
This paper considers the use of stereo vision in structured environments. Sharp discontinuities and large untextured areas must be anticipated, but complex or natural shapes of objects and fine structures should be handled as well. Additionally, radiometric differences of input images often occur in practice. Finally, computation time is an issue for handling large or many images in acceptable time. The Semi-Global Matching method is chosen as it fulfills already many of the requirements. Remaining problems in structured environments are carefully analyzed and two novel extensions suggested. Firstly, intensity consistent disparity selection is proposed for handling untextured areas. Secondly, discontinuity preserving interpolation is suggested for filling holes in the disparity images that are caused by some filters. It is shown that the performance of the new method on test images with ground truth is comparable to the currently best stereo methods, but the complexity and runtime is much lower.
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