Collective PV-RCNN: A Novel Fusion Technique using Collective Detections for Enhanced Local LiDAR-Based Perception

CoRR(2023)

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摘要
Comprehensive perception of the environment is crucial for the safe operation of autonomous vehicles. However, the perception capabilities of autonomous vehicles are limited due to occlusions, limited sensor ranges, or environmental influences. Collective Perception (CP) aims to mitigate these problems by enabling the exchange of information between vehicles. A major challenge in CP is the fusion of the exchanged information. Due to the enormous bandwidth requirement of early fusion approaches and the interchangeability issues of intermediate fusion approaches, only the late fusion of shared detections is practical. Current late fusion approaches neglect valuable information for local detection, this is why we propose a novel fusion method to fuse the detections of cooperative vehicles within the local LiDAR-based detection pipeline. Therefore, we present Collective PV-RCNN (CPV-RCNN), which extends the PV-RCNN++ framework to fuse collective detections. Code is available at https://github.com/ekut-es
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关键词
Local Perceptions,Fusion Method,Fusion Approach,Detection Pipeline,Early Fusion,Late Fusion,Collective Perception,Convolutional Neural Network,Local Features,Input Features,Detection Performance,Sensor Data,Object Detection,Point Cloud,Multilayer Perceptron,Bounding Box,Kalman Filter,Object Location,Average Precision,Feature Points,Region Proposal,Improve Detection Performance,Raw Features,LiDAR Sensor,Region Proposal Network,Raw Sensor Data,Bird’s Eye
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