基于激光雷达与相机协同融合的感知系统

Martin D. Dimitrievski, D. V. Hamme, Wilfried Philips
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引用次数: 0

摘要

本文提出了一种新的传感器融合方法,能够在系统运行的名义和边界情况下检测和跟踪道路使用者。该方法基于与传感器无关的贝叶斯后期融合框架,增强了传感器之间探测器激活信息的可选交换,称为合作反馈。实验评价表明,在正常运行情况下,我们获得了具有竞争力的检测和跟踪性能。所提出的方法的主要优点是在传感器故障的情况下,由于概率建模,我们观察到检测和跟踪精度比现有技术水平都有显着提高。
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Perception System based on Cooperative Fusion of Lidar and Cameras
This paper proposes a novel sensor fusion method capable of detection and tracking of road users under nominal as well as in border cases of system operation. The proposed method is based on a sensor-agnostic Bayesian late fusion framework, augmented with an optional exchange of detector activation information between sensors, referred to as cooperative feedback. Experimental evaluation confirms that we obtain competitive detection and tracking performance in normal operation. The main benefit of the proposed method is in cases of sensor failure where, due to the probabilistic modeling, we observed significant improvements of both detection and tracking accuracy over the state of the art.
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