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A robust Bayesian multisensor fusion algorithm for joint lane and pavement boundary detection

机译:一种坚固的贝叶斯多传感器融合算法,用于联合车道和路面边界检测

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In this paper we propose to simultaneously detect lane and pavement boundaries by fusing information from both optical and radar images. The boundaries are described with concentric circular models, whose parameters are compatible and will result in better conditioned estimation problems than previous parabolic models. The optical and radar imaging processes are represented with Gaussian and log-normal probability densities, with which we successfully avoid the ad hoc weighting scheme carried on the two likelihood functions. The multisensor fusion boundary detection problem is posed in a Bayesian framework and a joint maximum a posteriori (MAP) estimate is employed to locate the lane and pavement boundaries. Experimental results have shown that the fusion algorithm outperforms single sensor based boundary detection algorithms in a variety of road scenarios. And it also yields better boundary detection results than the fusion algorithm that took advantage of existing prior and likelihood formulations.
机译:在本文中,我们建议通过从光学和雷达图像融合信息来同时检测车道和路面边界。使用同心圆形模型来描述边界,其参数兼容,并且将导致比先前抛物面模型更好的条件估计问题。光学和雷达成像过程用高斯和日志正常概率密度表示,我们成功避免了在两个似然函数上进行的临时加权方案。多传感器融合边界检测问题在贝叶斯框架中提出,并且采用关节最大(MAP)估计来定位车道和路面边界。实验结果表明,融合算法在各种道路场景中占此基于单个传感器的边界检测算法。它还产生比利用现有的先前和似然制剂的融合算法更好的边界检测结果。

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