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A Multi-Sensor Simulation Environment for Autonomous Cars

机译:自动驾驶汽车的多传感器仿真环境

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This paper describes a multi-sensor simulation environment. This environment is being used to develop tracking methods to improve the accuracy of environmental perception and obstacle detection for autonomous vehicles. The system is being developed as part of a collaborative project entitled: Artificial Learning Environment for Autonomous Driving (ALEAD). The system currently incorporates a range of different sensor models, such as camera, infrared (IR) camera and LiDAR, with radar and GNSS-aided navigation systems to be added at a later stage. Each sensor model has been developed to be as realistic as possible - incorporating physical defects and other artefacts found in real sensors. This paper describes the environment, sensors and demonstrates the use of a Kalman filter based tracking algorithm to fuse data to predict the trajectories of dynamic obstacles. The multi-sensor tracking system has been tested to track a ball bouncing in a 3D environment constructed using Unity3D software.
机译:本文介绍了一种多传感器仿真环境。这种环境正用于开发跟踪方法,以提高自动驾驶汽车的环境感知和障碍物检测的准确性。该系统是作为名为“自动驾驶人工学习环境(ALEAD)”的合作项目的一部分而开发的。该系统目前结合了一系列不同的传感器模型,例如摄像机,红外(IR)摄像机和LiDAR,并在稍后阶段添加了雷达和GNSS辅助导航系统。每个传感器模型均已开发为尽可能逼真-结合了实际传感器中发现的物理缺陷和其他伪像。本文描述了环境,传感器,并演示了基于卡尔曼滤波器的跟踪算法如何融合数据以预测动态障碍物的轨迹。多传感器跟踪系统已经过测试,可以跟踪使用Unity3D软件构建的3D环境中的球弹跳。

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