用电磁波分类

IF 1.1 4区 计算机科学 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Ergun Simsek, Harish Reddy Manyam
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引用次数: 0

摘要

神经网络和机器学习技术的融合在包括电磁反演、地球物理勘探和微波成像在内的各个领域引发了一场革命。虽然这些技术显著改善了图像重建和复杂逆散射问题的解决,但本文探讨了一个不同的问题:能否利用近场电磁波进行目标分类?为了回答这个问题,我们首先基于MNIST数据集创建了一个数据集,在该数据集中,我们将灰度像素值转换为相对介电常数值以形成散射体,并使用二维电磁有限差分频域求解器计算这些物体散射的电磁波。然后,我们用这个数据集训练各种机器学习模型来对对象进行分类。当我们比较这些模型的分类精度和效率时,我们观察到神经网络优于其他模型,仅从数据中获得90%的分类精度,而不需要将输入数据投影到潜在空间中。研究了训练数据集大小、天线数量和天线位置对训练精度和训练时间的影响。这些结果证明了在一个简单的设置中使用近场电磁波对物体进行分类的潜力,并为这一令人兴奋的方向的进一步研究奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classification with electromagnetic waves

Classification with electromagnetic waves

The integration of neural networks and machine learning techniques has ushered in a revolution in various fields, including electromagnetic inversion, geophysical exploration, and microwave imaging. While these techniques have significantly improved image reconstruction and the resolution of complex inverse scattering problems, this paper explores a different question: Can near-field electromagnetic waves be harnessed for object classification? To answer this question, we first create a dataset based on the MNIST dataset, where we transform the grayscale pixel values into relative electrical permittivity values to form scatterers and calculate the electromagnetic waves scattered from these objects using a 2D electromagnetic finite-difference frequency-domain solver. Then, we train various machine learning models with this dataset to classify the objects. When we compare the classification accuracy and efficiency of these models, we observe that the neural networks outperform others, achieving a 90% classification accuracy solely from the data without a need for projecting the input data into a latent space. The impacts of the training dataset size, the number of antennas, and the location of antennas on the accuracy and time spent during training are also investigated. These results demonstrate the potential for classifying objects with near-field electromagnetic waves in a simple setup and lay the groundwork for further research in this exciting direction.

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来源期刊
Iet Microwaves Antennas & Propagation
Iet Microwaves Antennas & Propagation 工程技术-电信学
CiteScore
4.30
自引率
5.90%
发文量
109
审稿时长
7 months
期刊介绍: Topics include, but are not limited to: Microwave circuits including RF, microwave and millimetre-wave amplifiers, oscillators, switches, mixers and other components implemented in monolithic, hybrid, multi-chip module and other technologies. Papers on passive components may describe transmission-line and waveguide components, including filters, multiplexers, resonators, ferrite and garnet devices. For applications, papers can describe microwave sub-systems for use in communications, radar, aerospace, instrumentation, industrial and medical applications. Microwave linear and non-linear measurement techniques. Antenna topics including designed and prototyped antennas for operation at all frequencies; multiband antennas, antenna measurement techniques and systems, antenna analysis and design, aperture antenna arrays, adaptive antennas, printed and wire antennas, microstrip, reconfigurable, conformal and integrated antennas. Computational electromagnetics and synthesis of antenna structures including phased arrays and antenna design algorithms. Radiowave propagation at all frequencies and environments. Current Special Issue. Call for papers: Metrology for 5G Technologies - https://digital-library.theiet.org/files/IET_MAP_CFP_M5GT_SI2.pdf
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