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首页> 外文期刊>Journal of Scientific Computing >An Edge Detector Based on Artificial Neural Network with Application to Hybrid Compact-WENO Finite Difference Scheme
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An Edge Detector Based on Artificial Neural Network with Application to Hybrid Compact-WENO Finite Difference Scheme

机译:基于人工神经网络的边缘探测器,应用于混合紧凑型Weno有限差分方案

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A new approach is proposed to detect edges based on an artificial neural network (ANN). Some elementary continuous and discontinuous functions interpolated in the polynomial space and their continuity are used as the training sets to train a back propagation neural network containing two hidden layers. The ANN edge detector is used to detect the edges in an image and the locations of discontinuity in the hybrid fifth order Compact-WENO nonlinear (Hybrid) scheme for solving hyperbolic conservation laws with solutions containing both discontinuous and complex fine scale structures. Several classical examples in the image processing show that the ANN edge detector can capture an edge accurately with fewer grid points than the classical multi-resolution analysis. Furthermore, as oppose to the MR analysis, the ANN edge detector is robust with no problem dependent parameter, in addition to being accurate and efficient. The performance of the Hybrid scheme with the ANN edge detector is demonstrated with several one- and two-dimensional benchmark examples in the shallow water equations and Euler equations.
机译:提出了一种基于人工神经网络(ANN)的边缘检测新方法。在多项式空间内插入的一些基本连续和不连续功能,并将其连续性用作训练集,以训练包含两个隐藏层的后传播神经网络。 ANN边缘检测器用于检测图像中的图像中的边缘和混合第五阶Compact-Weno非线性(混合)方案中的不连续位置,用于解决具有含有不连续和复杂的细尺结构的溶液的双曲守恒定律。图像处理中的若干经典示例示出了ANN边缘检测器可以用比经典多分辨率分析的网格点更少地捕获边缘。此外,由于对MR分析相反,ANN边缘检测器是鲁棒的,除了准确和高效的情况下,没有任何问题依赖参数。用浅水方程和欧拉方程中的几个单维基准示例对混合动力方案与ANN边缘检测器的性能进行了说明。

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