Stereo correspondence using an assisted discrete cosine transform method

Edward Rosales, L. Guan
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Abstract

In this paper, a stereo matching algorithm using a window based frequency comparison method is formulated. The algorithm works with a local matching stereo model where a normalized cost function between frequency components and intensity values is used. The algorithm determines matching points in a stereo pair and uses a weighted cost function to determine the true disparity of the stereo pair. Unlike classical stereo correspondence algorithms that determine initial disparity maps through window based color intensity comparisons, the proposed algorithm uses window based frequency comparisons to exemplify the ability of frequency components to accurately find high detailed segments of the image. The algorithm is evaluated on the Middlebury data sets, and shows that it is noise and distortion resistant similar to the work in [1], thus allowing for higher reliability during comparisons. Additionally, this provides an advantage over typical color intensity comparisons as noise present in an image may cause mismatching when color intensity comparisons are executed.
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立体对应使用辅助离散余弦变换方法
本文提出了一种基于窗口的频率比较方法的立体匹配算法。该算法在局部匹配立体模型中工作,其中频率分量和强度值之间使用归一化代价函数。该算法确定立体对中的匹配点,并使用加权代价函数确定立体对的真实视差。与传统的立体对应算法通过基于窗口的颜色强度比较来确定初始视差图不同,该算法使用基于窗口的频率比较来举例说明频率分量准确找到图像高细节部分的能力。该算法在Middlebury数据集上进行了评估,并表明它与[1]中的工作相似,具有抗噪声和抗失真能力,从而在比较过程中具有更高的可靠性。此外,这比典型的颜色强度比较提供了一个优势,因为当执行颜色强度比较时,图像中存在的噪声可能导致不匹配。
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