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Deep stochastic radar models

机译:深度随机雷达模型

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摘要

Accurate simulation and validation of advanced driver assistance systems requires accurate sensor models. Modeling automotive radar is complicated by effects such as multipath reflections, interference, reflective surfaces, discrete cells, and attenuation. Detailed radar simulations based on physical principles exist but are computationally intractable for realistic automotive scenes. This paper describes a methodology for the construction of stochastic automotive radar models based on deep learning with adversarial loss connected to real-world data. The resulting model exhibits fundamental radar effects while remaining real-time capable.
机译:先进驾驶员辅助系统的准确仿真和验证需要准确的传感器模型。汽车雷达的建模由于诸如多径反射,干涉,反射面,离散单元和衰减之类的影响而变得复杂。存在基于物理原理的详细雷达仿真,但是在现实的汽车场景中在计算上难以处理。本文介绍了一种基于深度学习的随机汽车雷达模型的构建方法,该模型具有与实际数据相关的对抗性损失。生成的模型展示了基本的雷达效应,同时保持了实时功能。

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