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Multiple hypothesis tracking for automated vehicle perception

机译:多重假设跟踪可实现自动车辆感知

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The use of multiple hypothesis tracking has proven to provide significant performance benefits over the single hypothesis GNN or the PDA algorithm. Automotive sensors like radars, laser-scanners or vision systems are being integrated into vehicles for commercial or scientific purposes, in increasing numbers over the last years. As a result, there is profound literature on this area and several approaches have been proposed to the problem of multi-target, multi-sensor target tracking. The most advanced vehicle applications allow the use of highly or even fully automated driving. Of course, these applications require an accurate, robust and reliable perception output so that the vehicle can be driven autonomously. The HAVEit EU project investigates the application and validation of automated vehicles applications, technologies that are going to have great impact in transport safety and comfort. In this paper the MHT algorithm is applied to real sensor data, installed in Volvo Technology vehicle demonstrating Automated Queue Assistance. In conjunction with simulated scenarios, the benefits in tracking performance compared to conventional GNN tracking are presented.
机译:事实证明,与单个假设GNN或PDA算法相比,使用多个假设跟踪可提供显着的性能优势。近年来,诸如雷达,激光扫描仪或视觉系统之类的汽车传感器已被集成到用于商业或科研目的的车辆中。结果,在该领域有大量的文献,并且已经提出了几种方法来解决多目标,多传感器目标跟踪的问题。最先进的车辆应用允许使用高度甚至全自动驾驶。当然,这些应用需要准确,稳健和可靠的感知输出,以便可以自动驾驶车辆。 HAVEit EU项目调查了自动车辆应用的应用和验证,这些技术将对运输安全性和舒适性产生重大影响。本文将MHT算法应用于实际的传感器数据,该数据安装在沃尔沃技术公司的车辆上,演示了自动队列辅助系统。结合模拟场景,提出了与常规GNN跟踪相比在跟踪性能方面的优势。

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