基于分割的离群点抑制的局部立体匹配

M. Gerrits, P. Bekaert
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引用次数: 130

摘要

提出了一种新的基于窗口的立体匹配算法,该算法的重点是在聚合过程中对异常值的鲁棒抑制。基于窗口的方法的主要困难在于确定每个像素的最佳窗口形状和大小。基于深度不连续发生在颜色边界的假设,我们对参考图像进行分割,并将包含所考虑像素的图像分割之外的所有窗口像素视为异常值,并在聚合过程中大大降低其权重。我们开发了一种递归移动平均实现的变体,以保持处理时间与窗口大小无关。结合鲁棒匹配成本和左右视差图的组合,这为我们提供了一个鲁棒的局部算法,它接近全局技术的质量,而不会牺牲基于窗口的聚合的速度和简单性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Stereo Matching with Segmentation-based Outlier Rejection
We present a new window-based stereo matching algorithm which focuses on robust outlier rejection during aggregation. The main difficulty for window-based methods lies in determining the best window shape and size for each pixel. Working from the assumption that depth discontinuities occur at colour boundaries, we segment the reference image and consider all window pixels outside the image segment that contains the pixel under consideration as outliers and greatly reduce their weight in the aggregation process. We developed a variation on the recursive moving average implementation to keep processing times independent from window size. Together with a robust matching cost and the combination of the left and right disparity maps, this gives us a robust local algorithm that approximates the quality of global techniques without sacrificing the speed and simplicity of window-based aggregation.
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