A Study on the Metal Detection Development for CNN and RNN Algorithm Based

Sung-Kil Ha, Mikyoung Kim
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Abstract

This paper is a study on the efficiency of the filtering method of signal processing and the metal detection method using deep learning for data obtained from multiple MI sensors. The MI sensor is a principle that detects changes in magnetic field and is a passive sensor that detects metal objects. However, when detecting a metal object, the amount of change in the magnetic field caused by the metal is small, so there is a limit to the detectable distance. In order to effectively detect and analyze this, a method using deep learning was applied. In addition, the performance of the deep learning model was compared and analyzed using the filtering method of signal processing. In this paper, the detection performance of CNN and RNN networks was compared and analyzed from the data extracted from the self-impedance sensor. The RNN model showed higher performance than the CNN model. However, in the shallow stage, the CNN model showed higher performance than the RNN model.
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基于CNN和RNN算法的金属检测发展研究
本文研究了信号处理的滤波方法和基于深度学习的金属检测方法对多个MI传感器获得的数据的效率。MI传感器是一种探测磁场变化的原理,是一种探测金属物体的被动传感器。但是,在探测金属物体时,由于金属引起的磁场变化量很小,所以探测距离是有限制的。为了有效地检测和分析这种情况,采用了一种基于深度学习的方法。此外,利用信号处理中的滤波方法对深度学习模型的性能进行了比较和分析。本文利用自阻抗传感器提取的数据,对CNN和RNN网络的检测性能进行了比较和分析。RNN模型比CNN模型表现出更高的性能。然而,在浅层阶段,CNN模型比RNN模型表现出更高的性能。
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