首页> 外文会议>Progress in Pattern Recognition, Image Analysis and Applications; Lecture Notes in Computer Science; 4225 >An Application of Neural Networks for Image Reconstruction in Electrical Capacitance Tomography Applied to Oil Industry
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An Application of Neural Networks for Image Reconstruction in Electrical Capacitance Tomography Applied to Oil Industry

机译:神经网络图像重建技术在石油工业电容层析成像中的应用

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The article presents a possible solution to a typical tomographic images generation problem from data of an industrial process located in a pipeline or vessel. These data are capacitance measurements obtained non-invasively according to the well known ECT technique (Electrical Capacitance Tomography). Every 313 pixels image frame is derived from 66 capacitance measurements sampled from the real time process. The neural nets have been trained using the backpropagation algorithm where training samples have been created synthetically from a computational model of the real ECT sensor. To create the image 313 neuronal nets, each with 66 inputs and one output, are used in parallel. The resulting image is finally filtered and displayed. The different ECT system stages along with the different tests performed with synthetic and real data are reported. We show that the image resulting from our method is a faster and more precise practical alternative to previously reported ones.
机译:这篇文章提出了一种典型的层析图像生成问题的可能解决方案,该问题来自位于管道或容器中的工业过程的数据。这些数据是根据众所周知的ECT技术(电子断层扫描)以非侵入方式获得的电容测量值。每313个像素的图像帧均来自实时过程中采样的66个电容测量值。使用反向传播算法对神经网络进行了训练,其中,训练样本是根据实际ECT传感器的计算模型综合创建的。为了创建图像,并行使用了313个神经网络,每个网络有66个输入和一个输出。最终的图像最终被过滤并显示。报告了不同的ECT系统阶段以及对合成数据和真实数据执行的不同测试。我们表明,由我们的方法得出的图像是对先前报道的图像的更快,更精确的实用替代。

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