Low Latency And Low-Level Sensor Fusion For Automotive Use-Cases

Matthias Pollach, Felix Schiegg, A. Knoll
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引用次数: 5

Abstract

This work proposes a probabilistic low level automotive sensor fusion approach using LiDAR, RADAR and camera data. The method is stateless and directly operates on associated data from all sensor modalities. Tracking is not used, in order to reduce the object detection latency and create existence hypotheses per frame. The probabilistic fusion uses input from 3D and 2D space. An association method using a combination of overlap and distance metrics, avoiding the need for sensor synchronization is proposed. A Bayesian network executes the sensor fusion. The proposed approach is compared with a state of the art fusion system, which is using multiple sensors of the same modality and relies on tracking for object detection. Evaluation was done using low level sensor data recorded in an urban environment. The test results show that the low level sensor fusion reduces the object detection latency.
汽车用例的低延迟和低水平传感器融合
本研究提出了一种利用激光雷达、雷达和相机数据的概率低水平汽车传感器融合方法。该方法是无状态的,直接对来自所有传感器模态的相关数据进行操作。不使用跟踪,以减少对象检测延迟和创建每帧存在假设。概率融合使用来自3D和2D空间的输入。提出了一种利用重叠和距离度量相结合的关联方法,避免了传感器同步的需要。采用贝叶斯网络进行传感器融合。将该方法与当前最先进的融合系统进行了比较,该融合系统使用相同模态的多个传感器并依赖于跟踪进行目标检测。评估是使用在城市环境中记录的低水平传感器数据完成的。实验结果表明,低水平传感器融合降低了目标检测延迟。
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