快速PatchMatch立体匹配使用跨尺度成本融合汽车应用

Ji-Ho Cho, M. Humenberger
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引用次数: 5

摘要

由于低成本图像传感器和高性能嵌入式处理硬件的最新发展,未来的汽车和汽车系统将越来越多地使用双目立体视觉进行环境感知。然而,立体视觉的研究和发展仍在进行中,因为有许多挑战尚未解决。在本文中,我们提出了一种快速,准确的立体匹配算法,专为汽车应用。它令人信服地处理包含复杂,无纹理和倾斜表面的现实世界场景。为了实现这一目标,我们提出了一种改进的PatchMatch立体算法,该算法将基于人口普查的成本函数与半全局匹配优化集成在跨尺度融合处理方案中。为了进一步加速算法,我们提出了一种新的基于patchmatch的近似增强方法,该方法允许我们跳过随机搜索或至少显着减少迭代次数。我们的方法在KITTI基准中排名在前三分之一,并且在处理时间方面名列前茅。
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Fast PatchMatch stereo matching using cross-scale cost fusion for automotive applications
Due to recent developments of low-cost image sensors and high-performance embedded processing hardware, future cars and automotive systems will increasingly use binocular stereo vision for environmental perception. However, research and development in stereo vision is still ongoing since there are many challenges unsolved. In this paper, we propose a fast and accurate stereo matching algorithm, designed for automotive applications. It convincingly handles real-world scenes containing complex, textureless, and slanted surfaces. To achieve that, we propose an improved PatchMatch stereo algorithm that combines a census-based cost function with Semi-Global Matching optimization integrated in a cross-scale fusion processing scheme. To further accelerate the algorithm, we propose a novel enhancement approach for PatchMatch-based approximation which allows us to skip the random search or at least significantly reduce the number of iterations. Our method is ranked in the upper third of the KITTI benchmark and among the top performers in terms of processing time.
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