Improved Orientation Estimation and Detection with Hybrid Object Detection Networks for Automotive Radar

2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC)(2022)

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摘要
This paper presents novel hybrid architectures that combine grid- and point-based processing to improve the detection performance and orientation estimation of radar-based object detection networks. Purely grid-based detection models operate on a bird's-eye-view (BEV) projection of the input point cloud. These approaches suffer from a loss of detailed information through the discrete grid resolution. This applies in particular to radar object detection, where relatively coarse grid resolutions are commonly used to account for the sparsity of radar point clouds. In contrast, point-based models are not affected by this problem as they process point clouds without discretization. However, they generally exhibit worse detection performances than grid-based methods. We show that a point-based model can extract neighborhood features, leveraging the exact relative positions of points, before grid rendering. This has significant benefits for a subsequent grid-based convolutional detection backbone. In experiments on the public nuScenes dataset our hybrid architecture achieves improvements in terms of detection performance (19.7% higher mAP for car class than next-best radar-only submission) and orientation estimates (11.5% relative orientation improvement) over networks from previous literature.
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关键词
orientation estimation,hybrid object detection networks,automotive radar,hybrid architecture,combine grid,detection performance,radar-based object detection networks,purely grid-based detection models,bird,input point cloud,discrete grid resolution,radar object detection,relatively coarse grid resolutions,radar point clouds,point-based model,worse detection performances,grid-based methods,grid rendering,subsequent grid-based convolutional detection backbone,radar-only submission,11.5% relative orientation improvement
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