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Enhanced Point Descriptors for Dense Stereo Matching

机译:用于密集立体声匹配的增强点描述符

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We propose a novel local feature descriptor named Enhanced Point Descriptor (referred to as EPD) for dense stereo matching applications. The existing local feature descriptors, e.g., SIFT and SURF, can only be used to represent sparse image extreme points which make stereo matching sparsely. We design EPDs to represent common image points. To generate an EPD, we first build image characteristics vectors for neighborhood points around interest point in a specific sampled window. An EPD is a covariance matrix of characteristics vectors for all sampled points. The image characteristics we used to build vectors include HSV color, Gaussian-weighted gradient norms and orientations, which make EPD robust to rotation, perspective and illumination change. Experimental results show that EPD's performance is superior to commonly used correlation windows methods in dense stereo matching.
机译:我们为密集立体声匹配应用提出了一种新颖的局部特征描述符,称为增强点描述符(Enhanced Point Descriptor,简称EPD)。现有的局部特征描述符(例如SIFT和SURF)只能用于表示稀疏的图像极端点,从而使稀疏的立体匹配成为可能。我们设计EPD来代表常见的图像点。为了生成EPD,我们首先为特定采样窗口中感兴趣点周围的邻点构建图像特征向量。 EPD是所有采样点的特征向量的协方差矩阵。我们用来构建矢量的图像特征包括HSV颜色,高斯加权梯度范数和方向,这使EPD对旋转,透视和照明变化具有鲁棒性。实验结果表明,EPD在密集立体声匹配方面的性能优于常用的相关窗口方法。

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