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Cooperative Vehicle Sensing and Obstacle Avoidance for Intelligent Driving Based on Bayesian Frameworks

机译:基于贝叶斯框架的智能驾驶合作车辆感应和避障

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Vehicular Adhoc Networks (VANET) based vehicle sensing and obstacle avoidance is of importance and widely addressed in intelligent driving. Due to the difficulties in the data fusion from various types of observations from different vehicles, a dynamic non-parametric belief propagation (DNBP) method based on the Bayesian framework for target detection and localization is presented. Furthermore, the target detection performance can be jointly improved by adopting observations from multiple vehicles, based on the presented frameworks. The presented method is validated through simulations. The performance advantages achieved from joint detection from multiple vehicles are also evaluated. Bayesian framework Dynamic non-parametric belief propagation (DNBP)
机译:车辆adhoc网络(VANET)的车辆传感和避免避免是重要的,并且广泛寻求智能驾驶。由于来自不同车辆的各种类型观测的数据融合的困难,提出了一种基于贝叶斯框架的用于目标检测和定位的动态非参数信念传播(DNBP)方法。此外,通过基于所提出的框架,可以通过采用来自多辆车的观察来共同改善目标检测性能。通过仿真验证所提出的方法。还评估了从多辆车联合检测所达到的性能优势。贝叶斯框架动态非参数信念传播(DNBP)

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