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Local stereo matching algorithm: Using small-color census and sparse adaptive support weight

机译:局部立体匹配算法:采用彩色普查和稀疏自适应支持权重

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This paper proposed an effective disparity estimation algorithm based on census transform with adaptive support weight, called small-color census and sparse adaptive support weight (SCCADSW). Census transform provides high resistance to radiometric distortion, vignette, and noise because it are based on the relative ordering of local pixel intensity values rather than the pixel values themselves. This transform is widely used in many computer vision applications. A simplification technique such as using small-color census is used to determine the initial matching cost. The color distances are transformed using small census transform to keep the information of the color. To derive support weights, Manhattan distances are used for all pixels of the support window to the window's center point. Property of adaptive support weight leads to improved segmentation results and consequently to improved disparity maps. This work is still on process, to test the algorithm; it will use the Middlebury benchmark. According to analysis of each step of the algorithms, the proposed SCCADSW can achieve good performance among stereo methods that rely on local optimization.
机译:提出了一种基于普适变换的自适应支持权重视差估计算法,称为彩色普查和稀疏自适应支持权重(SCCADSW)。人口普查变换具有很高的抗辐射变形,小插图和噪声的能力,因为它基于局部像素强度值的相对顺序而不是像素值本身。这种转换被广泛用于许多计算机视觉应用中。简化技术(例如使用彩色人口普查)用于确定初始匹配成本。使用小人口普查变换来变换颜色距离,以保留颜色信息。为了得出支持权重,曼哈顿距离用于支持窗口的所有像素到窗口中心点的距离。自适应支撑权重的属性导致改进的分割结果,并因此导致改进的视差图。这项工作仍在进行中,以测试算法;它将使用Middlebury基准。通过对算法每一步的分析,提出的SCCADSW可以在依赖局部优化的立体方法中获得良好的性能。

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