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Bi-exponential Edge-Preserving Smoother Based Cost Aggregation for Stereo Matching

机译:基于双指数边缘的边缘保留STEREO匹配的成本聚集

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Stereo matching is one of the most important steps in computer vision systems. Broadly methods of stereo matching can be categorized into 2 types: the local support weight algorithms and global support weight algorithms. Recently adaptive local support weight algorithms have achieved state-of-art performance. However, they are still far from perfect. One of major problems of these local support weight algorithms is that they are computational complex and this complexity increases as the window size increases. In this paper we present a novel stereo matching algorithm based on Bi-Exponential Edge-Preserving Smoother (BEEPS) to make the computation efficient. The computation cost of proposed algorithm is independent of input data, filter parameters, and the degrees of smoothing. Experiments show that our algorithm greatly boost efficiency while preserve similar precision compared to state-of-art methods.
机译:立体声匹配是计算机视觉系统中最重要的步骤之一。广泛的立体匹配方法可以分为2种类型:本地支持权重算法和全局支持权重算法。最近自适应的本地支持权重算法已经实现了最先进的性能。然而,他们仍然远非完美。这些本地支持权重算法的主要问题之一是它们是计算复杂,并且随着窗口大小的增加而增加,这种复杂性增加。在本文中,我们提出了一种基于双指数边缘保留更顺畅(蜂鸣声)的新型立体声匹配算法,以使计算有效。所提出的算法的计算成本与输入数据,滤波器参数和平滑度无关。实验表明,与最先进的方法相比,我们的算法大大提高了效率,同时保持了类似的精度。

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