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Logistic Regression for Machine Learning in Process Tomography

机译:过程层析成像中机器学习的Logistic回归

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摘要

The main goal of the research presented in this paper was to develop a refined machine learning algorithm for industrial tomography applications. The article presents algorithms based on logistic regression in relation to image reconstruction using electrical impedance tomography (EIT) and ultrasound transmission tomography (UST). The test object was a tank filled with water in which reconstructed objects were placed. For both EIT and UST, a novel approach was used in which each pixel of the output image was reconstructed by a separately trained prediction system. Therefore, it was necessary to use many predictive systems whose number corresponds to the number of pixels of the output image. Thanks to this approach the under-completed problem was changed to an over-completed one. To reduce the number of predictors in logistic regression by removing irrelevant and mutually correlated entries, the elastic net method was used. The developed algorithm that reconstructs images pixel-by-pixel is insensitive to the shape, number and position of the reconstructed objects. In order to assess the quality of mappings obtained thanks to the new algorithm, appropriate metrics were used: compatibility ratio (CR) and relative error (RE). The obtained results enabled the assessment of the usefulness of logistic regression in the reconstruction of EIT and UST images.
机译:本文提出的研究的主要目的是为工业层析成像应用开发一种改进的机器学习算法。本文介绍了基于逻辑回归的算法,该算法与使用电阻抗断层扫描(EIT)和超声透射断层扫描(UST)的图像重建有关。测试对象是装满水的水箱,其中放置了重建的物体。对于EIT和UST,都使用了一种新颖的方法,其中输出图像的每个像素都由单独训练的预测系统重建。因此,有必要使用许多预测系统,其数量与输出图像的像素数量相对应。由于采用了这种方法,未​​完成的问题就变成了未完成的问题。为了通过除去无关的和相互关联的条目来减少逻辑回归中的预测变量数量,使用了弹性网法。逐像素重建图像的开发算法对重建对象的形状,数量和位置不敏感。为了评估由于新算法而获得的映射质量,使用了适当的度量标准:兼容性比率(CR)和相对误差(RE)。获得的结果使得能够评估逻辑回归在重建EIT和UST图像中的有用性。

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