基于前馈神经网络的水泥肌理合成

J. Fan, Lin Wang, Chen Xiao, Bo Yang, Jin Zhou
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引用次数: 1

摘要

结构对水泥领域的研究具有重要意义。它可以反映水泥强度、水化龄期等多种信息。然而,水泥水化图像纹理复杂多样,目前大多数方法效率相对较低。为此,我们提出了一种利用神经网络快速合成纹理的方法。利用因果邻域信息提取其隐含特征。该方法比简单的表达式法更完善,可以提取更多的隐式特征,得到更好的神经网络模型。通过该模型可以快速方便地合成水泥纹理图像。该算法比目前流行的方法更快,比基因表达式编程方法更多样化。
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Cement Texture Synthesis Based on Feedforward Neural Network
Texture is of great significance to the study of cement field. It can reflect various information, such as cement strength and hydration age. However, the texture of cement hydration image is complex and diverse, and most of the methods are relatively inefficient at present. Therefore, we propose a fast way to synthesize texture through neural network. It uses the information of the causal neighborhood to extract their implicit features. This method is more perfect than the simple expression method, and can extract more implicit features and get a better neural network model. Through this model we can quickly and easily synthesize cement texture images. This algorithm is faster than the current popular methods and more diverse than the methods of gene expression programming.
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