首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Illuminant-invariant stereo matching using cost volume and confidence-based disparity refinement
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Illuminant-invariant stereo matching using cost volume and confidence-based disparity refinement

机译:使用成本卷和基于置信差异细化的光源不变立体声匹配

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摘要

In stereo-matching techniques for three-dimensional (3D) vision, illumination change is a major problem that degrades matching accuracy. When large intensity differences are observed between a pair of stereos, it is difficult to find the similarity in the matching process. In addition, inaccurately estimated disparities are obtained in textureless regions, since there are no distinguishable features in the region. To solve these problems, this paper presents a robust stereo-matching method using illuminant-invariant cost volume and confidence-based disparity refinement. In the step of matching a stereo pair, the proposed method combines two cost volumes using an invariant image and Weber local descriptor (WLD), which was originally motivated by human visual characteristics. The invariant image used in the matching step is insensitive to sudden brightness changes by shadow or light sources, and WLD reflects structural features of the invariant image with consideration of a gradual illumination change. After aggregating the cost using a guided filter, we refine the initially estimated disparity map based on the confidence map computed by the combined cost volume. Experimental results verify that the matching computation of the proposed method improves the accuracy of the disparity map under a radiometrically dynamic environment. Since the proposed disparity refinement method can also reduce the error of the initial disparity map in textureless areas, it can be applied to various 3D vision systems such as industrial robots and autonomous vehicles. (C) 2019 Optical Society of America
机译:在立体声匹配技术中的三维(3D)视觉中,照明变化是降低匹配精度的主要问题。当在一对立体声之间观察到大的强度差异时,很难在匹配过程中找到相似性。此外,在Textubless区域中获得了不准确的差异,因为该地区没有可区分特征。为解决这些问题,本文介绍了一种使用光源不变成本体积和基于置信度的差异细化的强大立体匹配方法。在匹配立体对对的步骤中,所提出的方法使用不变的图像和韦伯本地描述符(WLD)组合了两个成本卷,其最初是由人类视觉特征的激励。匹配步骤中使用的不变图像对阴影或光源的突然亮度更改,并且WLD考虑了逐渐照明变化来反映不变图像的结构特征。在使用引导滤波器聚合成本之后,我们基于由组合成本卷计算的置信度图来细化最初估计的视差图。实验结果验证了所提出的方法的匹配计算在放射测定动态环境下提高了视差图的准确性。由于所提出的差异细化方法还可以减少Textulifliful区域中初始视差图的误差,因此它可以应用于各种3D视觉系统,例如工业机器人和自主车辆。 (c)2019年光学学会

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