数据融合算法提高测试测距传感器的精度和精度

Alessandro Urru, Davide Piras, A. Palmas
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引用次数: 2

摘要

数据融合技术应用于许多研究领域,如图像处理、汽车、机器人、国防和航空航天。需要融合来自不同传感器的数据反映了对提高测量精度的需求。每个传感器都有优点和缺点,在测试范围内用于跟踪目的的数据融合技术应该利用每个传感器的最高质量特征来获得更好的位置估计。本文提出了NT多传感器跟踪算法,该算法用于接收来自不同跟踪传感器、雷达和光电的目标位置信息,并利用数据融合技术获得比单个传感器提供的数据质量更好的数据。该算法使用了一种融合技术,可以极大地提高性能:它将一个权重关联到使用卡尔曼滤波器计算出的每个传感器,适当建模,以估计传感器测量值与估计目标位置的偏差。这些权重帮助算法理解哪个传感器更可靠,并估计出最接近真实目标位置的最佳可能位置。给出了实际案例跟踪场景,对算法进行了测试,并与参考轨迹数据进行了比较,以评估其准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Fusion algorithms to improve test range sensors accuracy and precision
Data fusion technology is used in many research areas, such as image processing, automotive, robotics, defense and aerospace. The need to fuse data from different sensors reflects the demand for enhanced measurements precision. Every sensor has pro and cons, data fusion technology for tracking purposes in a test range is supposed to leverage the highest quality features of each sensor to obtain a better position estimation. This paper presents NT multi-sensor tracking algorithm, it is developed to receive target position information from different tracking sensors, radar and electro-optical, and use data fusion technology to obtain better quality data compared to the one provided by a single sensor alone. The algorithm uses a fusion technique which permits a huge performance boost: it associates a weight to every sensor calculated using Kalman filters, properly modeled, to estimate sensor measurements deviations from the estimated target position. These weights help the algorithm understanding which sensor is more reliable and to estimate the best possible position, which is very close to the real target position. Real case tracking scenarios are presented, where the algorithm is tested and compared with reference trajectory data to estimate its accuracy.
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