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Measuring the Gain of a Microchannel Plate/Phosphor Assembly Using a Convolutional Neural Network

机译:使用卷积神经网络测量微通道板/荧光粉组件的增益

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This article presents a technique to measure the gain of a single-plate microchannel plate (MCP)/phosphor assembly by using a convolutional neural network to analyze the images of the phosphor screen, which are recorded by a charge-coupled device. The neural network reduces the background noise in the images sufficiently that individual electron events can be identified. From the denoised images, an algorithm determines the average intensity recorded on the phosphor associated with a single electron hitting the MCP. From this average single-particle intensity, along with the measurements of the charge of bunches after amplification by the MCP, we were able to deduce the gain curve of the MCP.
机译:本文介绍一种通过使用卷积神经网络分析荧光屏的图像来测量单板微通道板(MCP)/荧光粉组件的增益的技术,该图像由电荷耦合装置记录。神经网络充分降低了图像中的背景噪声,从而可以识别出各个电子事件。从降噪后的图像中,算法确定记录在荧光粉上的平均强度,该荧光粉与击中MCP的单个电子相关。根据该平均单粒子强度,以及通过MCP放大后的束电荷的测量,我们能够得出MCP的增益曲线。

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