构建用于接触跟踪的神经网络

C. DeAngelis, R. Green
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引用次数: 4

摘要

提出了一种基于神经网络的接触状态估计方法。该神经网络被称为NICE(神经启发接触估计),用于直接体现均匀接触速度和方向的主要问题域约束。NICE网络是构建的,而不是训练的,用于从到达角(AOA)测量中估计接触位置和运动。与现有方法相比,NICE系统的主要优势在于执行速度、溶液灵敏度评估以及传感器融合的潜力。这个系统提供了许多吸引人的功能。首先,一条方位线约束了在给定时间内接触点的轨迹。此外,不同的AOA传感器仅产生不同的位点;所有这些都是等效的,可以使用该系统进行融合。间歇性数据可以通过配置相关神经元来忽略缺失的数据,并且地理网格分辨率可以根据传感器读数的质量进行调整。此外,神经网络可以以高度并行的方式执行,利用最先进的并行硬件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing neural networks for contact tracking
A neural network approach for contact state estimation is presented. This neural network, NICE (neurally inspired contact estimation), has been constructed to directly embody the major problem domain constraint of uniform contact velocity and heading. NICE networks are constructed, not trained, to estimate contact position and motion from angle-of-arrival (AOA) measurements. The major advantages of the NICE system over existing methods are execution speed, an assessment of solution sensitivity, and the potential for sensor fusion. This system offers a number of attractive features. Foremost, a bearing line constrains the locus of points where a contact might be at a given time. Furthermore, different AOA sensors merely produce different loci; all are equivalent and can be fused using the system. Intermittent data can be accommodated by configuring correlation neurons to ignore the missing data, and the geographical grid resolutions can be varied to adjust to the quality of the sensor readings. In addition, the neural network can be executed in a highly parallel manner, taking advantage of the state-of-the-art parallel hardware.<>
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