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Detector Output Prediction for CT Detector Array Manufacturing

机译:CT检测器阵列制造的检测器输出预测

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The detector panel on a typical CT machine today is made of more than 500 detector boards, nicknamed chiclets. Each chiclet contains a number of detectors (i.e., pixels). In the manufacturing process, the chiclets on the panel need to go through an iterative test, swap, and test (TST) process, till some image quality level is achieved. Currently, this process is largely manual and can take hours to several days to complete. This is inefficient and the results can also be inconsistent. In this work, we investigate techniques that can be used to automate the iterative TST process. Specifically, we develop novel prediction techniques that can be used to simulate the iterative TST process. Our results indicate that deep neural networks produce significantly better results than linear regression in the more difficult prediction scenarios.
机译:今天典型CT机器上的探测器面板由500多个探测器板制成,绰号奇迹。每个Chiclet都包含许多探测器(即像素)。在制造过程中,面板上的仙人手需要经过迭代测试,交换和测试(TST)过程,直到实现一些图像质量水平。目前,这个过程很大程度上是手动,需要几个小时才能完成。这是效率低下,结果也可能不一致。在这项工作中,我们调查可用于自动化TST过程的技术。具体地,我们开发了一种可用于模拟迭代TST过程的新型预测技术。我们的结果表明,深度神经网络在更困难的预测场景中的线性回归产生明显更好的结果。

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