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X Ray Image Enhancement Technology for Steel Pipe Welding Based on Hopfield Neural Network

机译:基于Hopfield神经网络的钢管焊接X射线图像增强技术

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Hopfield neural network is utilized to enhance X-ray image of thick steel pipe welding, and a gray mapping matrix is constructed to replace traditional gray transformation curves and functions in this paper. The maximum dimension of the gray mapping matrix is 256×256, so the calculation time has little relation with the size of the image. The criterion function of image quality is used to evaluate the quality of the transformed image. In proposed approach, the problem of image enhancement is transformed to an optimization problem, so the normalization of gray values for each pixel is not necessary. The energy function that improves the performance of image enhancement is also given for Hopfield neural network.
机译:Hopfield神经网络用于增强厚钢管焊接的X射线图像,构造灰色映射矩阵以取代传统的灰色变换曲线和功能。灰色映射矩阵的最大尺寸为256×256,因此计算时间与图像的大小几乎没有关系。图像质量的标准函数用于评估变换图像的质量。在提出的方法中,将图像增强的问题转换为优化问题,因此不需要对每个像素的灰度值的归一化。对于Hopfield神经网络,还提供了提高图像增强性能的能量函数。

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