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SORT-SGM: Subpixel Optimized Real-Time Semiglobal Matching for Intelligent Vehicles

机译:SORT-SGM:智能汽车的亚像素优化实时半全局匹配

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摘要

The suitability of stereo algorithms for intelligent vehicle applications is conditioned by their ability to compute dense accurate disparity maps in real time. In this paper, an original stereo reconstruction system that is designed for automotive applications is presented. The system is based on the semiglobal matching algorithm (SGM), which is widely known for its high quality and potential for real-time implementation. Several improvements that target the matching, disparity optimization, and disparity refinement steps are proposed. Pixel-level matching uses the census transform because of its invariance to intensity differences due to camera bias or gain that affects the images. The huge memory bandwidth requirements for the SGM disparity optimization step are reduced through a new integration strategy. At the subpixel level, accuracy is increased by devising a new methodology for generating dedicated subpixel interpolation functions. Using this methodology, two novel subpixel interpolation functions for the SGM algorithm are implemented and evaluated. The proposed algorithm has been implemented on a graphics processing unit in the Compute Unified Device Architecture (CUDA). The result is an increased speed and accuracy algorithm profiled for complex real-traffic scenarios. The proposed algorithm has been evaluated at a large scale, and evidence that was collected from both standard benchmarks and real-world images confirm the findings and show a significant improvement over existing solutions.
机译:立体算法对智能车辆应用的适用性取决于它们实时计算密集的准确视差图的能力。本文介绍了一种专为汽车应用设计的原始立体声重建系统。该系统基于半全局匹配算法(SGM),该算法以其高质量和实时实现潜力而闻名。提出了一些针对匹配,视差优化和视差细化步骤的改进。像素级匹配使用人口普查变换,因为由于摄像机偏置或增益会影响图像,因此亮度不变不会改变强度。通过一种新的集成策略,减少了SGM差异优化步骤所需的巨大内存带宽。在子像素级别,通过设计一种用于生成专用子像素内插函数的新方法来提高准确性。使用这种方法,可以实现和评估SGM算法的两个新颖的亚像素内插函数。所提出的算法已在Compute Unified Device Architecture(CUDA)中的图形处理单元上实现。结果是针对复杂的真实交通场景配置了提高速度和准确性的算法。所提出的算法已得到大规模评估,并且从标准基准和实际图像中收集的证据证实了这一发现,并显示出对现有解决方案的显着改进。

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