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A hybrid algorithm for disparity calculation from sparse disparity estimates based on stereo vision

机译:基于立体视觉的稀疏视差估计的视差混合算法

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In this paper, we have proposed a novel method for stereo disparity estimation by combining the existing methods of block based and region based stereo matching. Our method can generate dense disparity maps from disparity measurements of only 18% pixels of either the left or the right image of a stereo image pair. It works by segmenting the lightness values of image pixels using a fast implementation of K-Means clustering. It then refines those segment boundaries by morphological filtering and connected components analysis, thus removing a lot of redundant boundary pixels. This is followed by determining the boundaries' disparities by the SAD cost function. Lastly, we reconstruct the entire disparity map of the scene from the boundaries' disparities through disparity propagation along the scan lines and disparity prediction of regions of uncertainty by considering disparities of the neighboring regions. Experimental results on the Middlebury stereo vision dataset demonstrate that the proposed method outperforms traditional disparity determination methods like SAD and NCC by up to 30% and achieves an improvement of 2.6% when compared to a recent approach based on absolute difference (AD) cost function for disparity calculations [1].
机译:在本文中,我们结合了现有的基于块和基于区域的立体声匹配方法,提出了一种新的立体视差估计方法。我们的方法可以从立体图像对的左图像或右图像的仅18%像素的视差测量结果生成密集视差图。它通过使用K-Means聚类的快速实现对图像像素的亮度值进行分段来工作。然后,它通过形态过滤和连接的分量分析来细化那些段边界,从而消除了很多多余的边界像素。接下来是通过SAD成本函数确定边界的差异。最后,我们通过沿扫描线的视差传播以及通过考虑相邻区域的视差对不确定区域的视差进行预测,从边界的视差中重建场景的整个视差图。在Middlebury立体视觉数据集上的实验结果表明,与最新的基于绝对差(AD)成本函数的方法相比,该方法优于传统的视差确定方法(如SAD和NCC)最多可提高30%,并提高了2.6%。视差计算[1]。

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