多传感器雷达融合贝叶斯分组在汽车环视行人分类中的应用

Santhana Raj, Dipanjan Ghosh
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引用次数: 2

摘要

汽车环视系统使用摄像头来提供车辆周围环境的完整视图,以辅助停车或避免驾驶时出现盲点。基于雷达的汽车环视进一步提高了目标检测能力。本文阐述了在多传感器雷达数据上进行的点云处理以及进一步处理的优势。初始处理处理四个雷达传感器的点云数据的合并,这些点云数据位于汽车的四面。在对数据进行适当的变换合并后,根据传感器的位置和面向角度,对重叠视场中出现的目标点进行贝叶斯分组,避免被检测为多个目标。合并后的目标提供了额外的信息,可以有效地用于行人分类。本文详细介绍了使用77GHz雷达传感器实现环视的具体挑战以及行人分类的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Grouping of Multi Sensor Radar Fusion for effective Pedestrian Classification in Automotive Surround View
Surround view for automotive are being performed using cameras to provide a complete view of the vehicle surrounding for parking assist or to avoid any blind spot while driving. Radar based surround view for automotive further improves the object detection capability. This paper explains the point cloud processing that has been performed on multi sensor Radar data and the increased advantage for further processing. The initial processing handles the merging of four radar sensors’ point cloud data which are positioned on four sides of the automobile. Once the data is merged by appropriate transformation, based on sensor position and facing angle, a Bayesian approach to grouping of object points which appear in the overlapping field of view is implemented to avoid it being detected as multiple objects. This merged object provides additional information which can be effectively utilized for pedestrian classification. This paper details the specific challenges related to achieving surround view by using a 77GHz radar sensor and the advantages in pedestrian classification.
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