作者
Lili Fan, Changxian Zeng, Yunjie Li, Xu Wang, Dongpu Cao
发表日期
2023/12/31
期号
2023-01-7088
出版商
SAE Technical Paper
简介
The fusion of multi-modal perception in autonomous driving plays a pivotal role in vehicle behavior decision-making. However, much of the previous research has predominantly focused on the fusion of Lidar and cameras. Although Lidar offers an ample supply of point cloud data, its high cost and the substantial volume of point cloud data can lead to computational delays. Consequently, investigating perception fusion under the context of 4D millimeter-wave radar is of paramount importance for cost reduction and enhanced safety. Nevertheless, 4D millimeterwave radar faces challenges including sparse point clouds, limited information content, and a lack of fusion strategies.
In this paper, we introduce, for the first time, an approach that leverages Graph Neural Networks to assist in expressing features from 4D millimeter-wave radar point clouds. This approach effectively extracts unstructured point cloud features …
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