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Image Reconstruction in X-ray Tomography Using a Radial Basis Function(RBF) Neural Network

机译:使用径向基函数(RBF)神经网络的X射线断层摄影中的图像重建

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Inspection and shape measurement of three-dimensional objects are widely needed in the fields of quality monitoring and reverse engineering. X-ray computed tomography could be a good solution since the method can acquire three dimensional volume information of a product from a series of acquired cross-sectional images. To reconstruct a cross-section in computed tomography, a number of data are required, projected from all but uniformly spaced view angles. In many applications of industrial field, however, it may not be possible to acquire such projection data obtained at all angles due to the size of objects or obstructed situation by other structures at some angles. In such a limited condition, analytical solution to reconstruct a cross-section is not available in general, and an iterative numerical method such as algebraic reconstruct technique(ART) and its modified algorithms, such as uniform and simultaneous ART methods, are used. In those iterative methods, the intensities of the image pixels in the reconstructed image are estimated and updated independently, thus the reconstructed image looks like a mosaic, of which the resolution is restricted to the number of image elements, pixels. In this paper, a new image reconstruction method is proposed based on a radial basis function(RBF) neural network. In this method, a cross-section image is represented by RBF network, and is reconstructed through the learning process of the network. To achieve this, a learning method of the network is proposed here based on the projection of the image instead of the reference image itself. The algorithm is tested by a series of simulation studies on some of modeled images, and the performance of the proposed method is evaluated in terms of convergence and accuracy.
机译:在质量监控和逆向工程领域中,广泛需要对三维对象进行检查和形状测量。 X射线计算机断层扫描可能是一个很好的解决方案,因为该方法可以从一系列获取的横截面图像中获取产品的三维体积信息。为了在计算机断层摄影中重建横截面,需要从所有均匀分布的视角投射的数据。然而,在工业领域的许多应用中,由于物体的尺寸或其他结构在某些角度上的遮挡情况,可能无法获取在所有角度上获得的这种投影数据。在这种有限的条件下,通常无法获得用于重建横截面的解析解,而是使用了迭代数值方法(例如代数重建技术(ART))及其改进的算法(例如均匀和同时的ART方法)。在那些迭代方法中,重构图像中的图像像素的强度被独立地估计和更新,因此重构图像看起来像马赛克,其分辨率被限制为图像元素,像素的数量。提出了一种基于径向基函数神经网络的图像重建新方法。在这种方法中,横截面图像由RBF网络表示,并通过网络的学习过程进行重建。为此,这里提出了一种基于图像投影而不是参考图像本身的网络学习方法。通过对一些建模图像的一系列仿真研究对该算法进行了测试,并从收敛性和准确性方面评估了该方法的性能。

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