With the recent boost in autonomous driving, increased attention has been paid on radars as an input for occupancy mapping. Besides their many benefits, the inference of occupied space based on radar detections is notoriously difficult because of the data sparsity and the environment dependent noise (e.g. multipath reflections). Recently, deep learning-based inverse sensor models, from here on called deep ISMs, have been shown to improve over their geometric counterparts in retrieving occupancy information. Nevertheless, these methods perform a data-driven interpolation which has to be verified later on in the presence of measurements. In this work, we describe a novel approach to integrate deep ISMs together with geometric ISMs into the evidential occupancy mapping framework. Our method leverages both the capabilities of the data-driven approach to initialize cells not yet observable for the geometric model effectively enhancing the perception field and convergence speed, while at the same time use the precision of the geometric ISM to converge to sharp boundaries. We further define a lower limit on the deep ISM estimate's certainty together with analytical proofs of convergence which we use to distinguish cells that are solely allocated by the deep ISM from cells already verified using the geometric approach.
翻译:随着最近自主驱动的增强,人们更加关注雷达,将其作为占用量绘图的一种投入。除了许多好处外,基于雷达探测的占用空间由于数据宽度和依赖环境的噪音(例如多路反射)而臭名昭著地难以推断。最近,从这里到所谓的深ISMs,深基于学习的反感应模型显示,在检索占用信息时,从这里到深IMSs,其几何对等模型在获取占用率信息方面有所改进。然而,这些方法采用了数据驱动的内插法,在测量时必须稍后加以核实。在这项工作中,我们描述了一种新颖的方法,将深ISMs和几何计量的IMS结合纳入证据占用量绘图框架。我们的方法利用数据驱动法的能力来初始化尚未观测到的细胞,以有效增强感知场和趋同速度,同时利用几何计量ISM的精确度使精确度与精确度测得的细胞的精确度一致。我们进一步界定了深度ISM的精确度的下限,并用分析证据来辨别已经完全由深地SIMSM所配置的细胞所分配的细胞。