RAS:递归式汽车立体声

Sebastian Schneider, G. Mueller, Jan Kallwies, Hans-Joachim Wünsche
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引用次数: 3

摘要

避障是汽车导航的一个关键功能,它需要准确地表示环境。在视觉感知领域,这项任务通常通过立体算法来解决,立体算法试图通过对单个图像的视差计算来获得环境的深度图。这些算法没有利用特别是在汽车场景中,两个连续帧之间的视场有很大的重叠区域。相反,视差图是为每个立体帧从头开始计算的,没有信息从一帧传播到下一帧。由于单眼图像处理长期受益于递归估计技术,如4D方法,本文提出了一种新的递归汽车立体算法,称为RAS。RAS内部维护一个递归估计的3D点列表,该列表根据车辆的运动和当前立体框架中的测量值不断更新。我们表明RAS不仅保留了跨框架的环境知识,而且还考虑了测量模式,并且对错误甚至缺失的测量具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RAS: Recursive automotive stereo
Obstacle avoidance is a key feature for automotive navigation that requires an accurate representation of the environment. In the field of visual perception this task has often been addressed with stereo algorithms that try to obtain a depth map of the environment via disparity calculations on a single pair of images. These algorithms do not exploit that especially in automotive scenarios the fields of view between two consecutive frames have large overlapping regions. Instead, the disparity map is computed from scratch for each stereo frame and no information is propagated from one frame to the next. Since monocular image processing has long benefited from recursive estimation techniques, such as the 4D Approach, this paper presents a novel recursive automotive stereo algorithm, called RAS. RAS internally maintains a list of recursively estimated 3D points that are continuously updated based on the vehicle's movement and measurements in the current stereo frame. We show that RAS not only preserves the knowledge of the environment across frames, but also accounts for measurement modalities and is robust against faulty or even missing measurements.
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