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Image correction for cone-beam computed tomography simulator using neural network corrector:

机译:使用神经网络校正器的锥束计算机断层摄影模拟器的图像校正:

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In this article, a neural network corrector is proposed to correct the image shift, yielding the degradation of three-dimensional image reconstruction, for each slice captured by cone-beam computed tomography simulator. There are 3 degrees of freedom in tube module of simulator; the central point of tube module should be aligned with the central point of detector module to guarantee the accurate image projection. However, the mechanism manufacturing and assembling tolerance will let the above aim cannot be met. Here, a standard kit is made to measure the image shift by 1° step from ?10° to 10°. The measure data will be the input training data of proposed neural network corrector, and the corrected translation position will be the output of neural network corrector. The Levenberg–Marquardt learning algorithm adjusts the connected weights and biases of the neural network using a supervised gradient descent method, such that the defined error function can be minimized. To avoid the problem of overfitting and...
机译:在本文中,提出了一种神经网络校正器,以校正锥束计算机断层摄影模拟器捕获的每个切片的图像偏移,从而降低三维图像重建的质量。模拟器的电子管模块具有3个自由度;管模块的中心点应与检测器模块的中心点对齐,以确保准确的图像投影。但是,机构的制造和组装公差将使上述目的无法实现。在这里,制作了一个标准套件,用于测量从θ10°到10°的图像偏移1°。测量数据将是拟议的神经网络校正器的输入训练数据,而校正后的平移位置将是神经网络校正器的输出。 Levenberg-Marquardt学习算法使用监督梯度下降方法来调整神经网络的连接权重和偏差,从而可以使定义的误差函数最小化。为了避免过度拟合和...的问题

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