论文标题

模拟汽车LIDAR传感器模型中的道路喷雾效应

Simulating Road Spray Effects in Automotive Lidar Sensor Models

论文作者

Linnhoff, Clemens, Scheuble, Dominik, Bijelic, Mario, Elster, Lukas, Rosenberger, Philipp, Ritter, Werner, Dai, Dengxin, Winner, Hermann

论文摘要

建模感知传感器是基于模拟自动驾驶功能测试的关键。除了天气条件本身,传感器还受到依赖对象的环境影响,例如由车辆在湿路面上移动的车辆引起的轮胎喷雾。在这项工作中,引入了一种新型的喷雾剂模型方法。该模型符合开放的仿真界面(OSI)标准,并基于喷雾羽流中检测簇的形成。这些检测是通过简单的自定义射线铸造算法渲染的,而无需进行流体动力学模拟或物理引擎。该模型随后用于生成训练数据以进行对象检测算法。结果表明,该模型有助于显着改善现实喷雾场景中的检测。此外,记录并发布了系统的现实世界数据集,以分析主动感知传感器中喷雾效应的分析,模型校准和验证。实验是在测试轨道上通过人为浇水的路面行驶,车速,车辆类型和路面湿度水平的行驶。这项工作的所有模型和数据都可以使用。

Modeling perception sensors is key for simulation based testing of automated driving functions. Beyond weather conditions themselves, sensors are also subjected to object dependent environmental influences like tire spray caused by vehicles moving on wet pavement. In this work, a novel modeling approach for spray in lidar data is introduced. The model conforms to the Open Simulation Interface (OSI) standard and is based on the formation of detection clusters within a spray plume. The detections are rendered with a simple custom ray casting algorithm without the need of a fluid dynamics simulation or physics engine. The model is subsequently used to generate training data for object detection algorithms. It is shown that the model helps to improve detection in real-world spray scenarios significantly. Furthermore, a systematic real-world data set is recorded and published for analysis, model calibration and validation of spray effects in active perception sensors. Experiments are conducted on a test track by driving over artificially watered pavement with varying vehicle speeds, vehicle types and levels of pavement wetness. All models and data of this work are available open source.

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