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Multi-target multi-object tracking, sensor fusion of radar and infrared

机译:多目标多目标跟踪,雷达与红外传感器融合

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This paper presents algorithms and techniques for single-sensor tracking and multi-sensor fusion of infrared and radar data. The results show that fusing radar data with infrared data considerably increases detection range, reliability and accuracy of the object tracking. This is mandatory for further development of driver assistance systems. Using multiple model filtering for sensor fusion applications helps to capture the dynamics of maneuvering objects while still achieving smooth object tracking for not maneuvering objects. This is important when safety and comfort systems have to make use of the same sensor information. Comfort systems generally require smoothly filtered data whereas for safety systems it is crucial to capture maneuvers of other road users as fast as possible. Multiple model filtering and probabilistic data association techniques are presented and all presented algorithms are tested in real-time on standard PC systems.
机译:本文介绍了用于红外和雷达数据的单传感器跟踪和多传感器融合的算法和技术。结果表明,将雷达数据与红外数据融合会大大增加目标跟踪的检测范围,可靠性和准确性。这对于驾驶员辅助系统的进一步开发是必不可少的。在传感器融合应用程序中使用多模型过滤有助于捕获机动对象的动态,同时仍然为未机动对象实现平滑的对象跟踪。当安全和舒适系统必须使用相同的传感器信息时,这一点很重要。舒适系统通常需要平滑过滤的数据,而对于安全系统,至关重要的是尽快捕获其他道路使用者的操作。提出了多种模型过滤和概率数据关联技术,并在标准PC系统上实时测试了所有提出的算法。

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