Miao Linliang, Zhang Tianyi, Zuo Chao, Chen Zijie, Yang Xiaofei, Ouyang Jun
School of Integrated Circuits, Huazhong University of Science and Technology, Wuhan 430074, China.
Hubei Key Laboratory of Marine Electromagnetic Detection and Control, Wuhan 430064, China.
Sensors (Basel). 2024 May 19;24(10):3226. doi: 10.3390/s24103226.
A rapid method that uses super-resolution magnetic array data is proposed to localize an unknown number of magnets in a magnetic array. A magnetic data super-resolution (SR) neural network was developed to improve the resolution of a magnetic sensor array. The approximate 3D positions of multiple targets were then obtained based on the normalized source strength (NSS) and magnetic gradient tensor (MGT) inversion. Finally, refined inversion of the position and magnetic moment was performed using a trust region reflective algorithm (TRR). The effectiveness of the proposed method was examined using experimental field data collected from a magnetic sensor array. The experimental results showed that all the targets were successfully captured in multiple trials with three to five targets with an average positioning error of less than 3 mm and an average time of less than 300 ms.
提出了一种利用超分辨率磁阵列数据的快速方法,用于在磁阵列中定位数量未知的磁体。开发了一种磁数据超分辨率(SR)神经网络,以提高磁传感器阵列的分辨率。然后基于归一化源强度(NSS)和磁梯度张量(MGT)反演获得多个目标的近似三维位置。最后,使用信赖域反射算法(TRR)对位置和磁矩进行精细反演。利用从磁传感器阵列收集的实验场数据检验了所提方法的有效性。实验结果表明,在对三到五个目标进行的多次试验中,所有目标均被成功捕获,平均定位误差小于3毫米,平均时间小于300毫秒。