A Multiple Hypothesis Tracking Approach to Collision Detection for Unmanned Aerial Vehicles

F. d'Apolito, C. Sulzbachner, Felix Bruckmueller
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Abstract

It is obvious that future unmanned aerial vehicle (UAV) applications will have a high degree of automation, up to autonomy, and will be integrated into civil airspace to go beyond line of sight. To ensure the safe operation of these systems, new technologies are required. Currently, the regulatory and technological frameworks are insufficient. For instance, there are no standards for sensors required to detect obstacles and avoid possible collisions. It is evident that data from several sensors need to be combined to obtain a robust environmental map in order to cope with the high standards of aviation. This paper aims to introduce a Multiple Hypothesis Tracking (MHT) approach to multi-sensor data fusion for future collision avoidance systems. The data from several sensors are merged to obtain new and more accurate measurement data to capture the environment more robustly. The sensors consist of several optical and thermal sensors, radar and transponder systems. This combined measurement data is processed by an avoidance algorithm to calculate avoidance maneuvers. So far, simulations and ground based tests have shown that the implemented MHT approach provides qualitatively better results than conventional probabilistic data fusion approaches. In a next step, test flights will be performed to evaluate the proposed MHT data fusion approach in an airborne environment.
基于多假设跟踪的无人机碰撞检测方法
显然,未来无人机的应用将具有高度自动化,甚至自主,并将融入民用空域以超越视线。为了确保这些系统的安全运行,需要新的技术。目前,监管和技术框架是不够的。例如,检测障碍物和避免可能的碰撞所需的传感器没有标准。显然,需要将来自多个传感器的数据结合起来,以获得可靠的环境地图,以应对高标准的航空。本文旨在为未来的避碰系统引入多传感器数据融合的多假设跟踪(MHT)方法。将多个传感器的数据合并,得到新的、更精确的测量数据,从而更稳健地捕获环境。传感器由几个光学和热传感器、雷达和应答器系统组成。该组合测量数据通过避碰算法进行处理,计算避碰机动。到目前为止,模拟和地面测试表明,所实现的MHT方法比传统的概率数据融合方法提供了更好的质量结果。下一步,将进行试飞,以评估在机载环境中提出的MHT数据融合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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