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Using Independent Component Analysis for Electrical Impedance Tomography

机译:对电阻抗断层扫描的独立分量分析

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Independent component analysis (ICA) is a way to resolve signals into independent components based on the statistical characteristics of the signals. It is a method for factoring probability densities of measured signals into a set of densities that are as statistically independent as possible under the assumptions of a linear model. Electrical impedance tomography (EIT) is used to detect variations of the electric conductivity of the human body. Because there are variations of the conductivity distributions inside the body, EIT presents multi-channel data. In order to get all information contained in different location of tissue it is necessary to image the individual conductivity distribution. In this paper we consider to apply ICA to EIT on the signal subspace (individual conductivity distribution). Using ICA the signal subspace will then be decomposed into statistically independent components. The individual conductivity distribution can be reconstructed by the sensitivity theorem in this paper. Compute simulations show that the full information contained in the multi-conductivity distribution will be obtained by this method.
机译:独立分量分析(ICA)是一种基于信号的统计特征将信号解析为独立组件的方法。它是将测量信号的概率密度分解成一组密度,该密度在线性模型的假设下尽可能独立于统计上独立。电阻抗断层扫描(EIT)用于检测人体电导率的变化。因为身体内部导电分布的变化,所以EIT呈现多通道数据。为了获得包含在组织的不同位置的所有信息,需要将各个电导率分布图像。在本文中,我们考虑将ICA应用于信号子空间(单独的电导率分布)。然后使用ICA信号子空间将分解成统计上独立的组件。本文中的灵敏度定理可以重建各个电导率分布。计算模拟表明,通过该方法获得多电导率分布中包含的完整信息。

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