用于高灵敏度物体动力学检测的无图像电阻抗断层扫描

Mingde Zheng, Hassan Jahanandish, Bibek R. Samanta
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引用次数: 0

摘要

用于光谱学和断层扫描的电刺激传感器已被广泛采用,因为它们是非侵入性的,相对便宜,并且实现简单。尽管经过了几十年的发展,但由于其低空间分辨率,其广泛采用受到限制。在这项工作中,我们提出了一种基于电阻抗层析成像传感原理的技术,而不需要图像重建和层析成像处理模块。通过定制刺激和测量方案,并评估高度可识别模式标记的原始数据输出,我们证明了该技术在识别关键物理参数(如运动、大小、形状和导电性)中的微小物体变化方面的能力。通过简单的硬件系统设置,我们观察到原始阻抗数据对典型电阻抗模态中的微小变化非常敏感。通过通用的机器学习模型,我们进一步揭示了这些信号模式可以高精度地自主分类,从而形成一种敏感且操作简单的传感方法,适用于生物生理传感等应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imageless Electrical Impedance Tomography for Highly Sensitive Object Dynamics Detection
Electrically-stimulated sensors for spectroscopy and tomography have been widely adopted because they are non-invasive, relatively inexpensive, and straightforward in implementation. Despite decades of development, their widespread adoption is limited partly due to their low-spatial resolution. In this work, we propose a technique based on the electrical impedance tomography sensing principle without the image reconstruction and tomographic processing modules. By tailoring the stimulation and measurement protocols and evaluating the raw data output for markers of highly discernible patterns, we demonstrate the technique's ability in identifying minute object variance in key physical parameters such as movement, size, shape, and conductivity. With a bare-bones hardware system setup, we observed that raw impedance data are discernably sensitive to minute variations within a typical electrical impedance phantom. With generic machine learning models, we further reveal these signal patterns are autonomously classifiable at high accuracy, leading to a sensitive, and operationally simplistic sensing approach adaptable to applications such as biophysiological sensing.
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