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Material Texture Image Model Optimization and Result Analysis

机译:材料纹理图像模型优化和结果分析

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摘要

Targeted in the quantitative description of the relationship between the material's subjective features and objective parameters, this study builds a mathematical model by BP neural network. Then optimization of the thresholds and weights of BP material texture models is conducted to refine the accuracy and description ability of this network. Through the analysis of the result of GA-BP Model, the foundation established by the summary of relationship between the texture image and the objective material parameters can be used to forecast the emotional characters of the materials whose objective parameters are previously understood.
机译:针对材料的主观特征与客观参数之间的关系的定量描述,本研究通过BP神经网络建立了数学模型。然后,进行了优化BP材料纹理模型的阈值和权重,以优化该网络的准确性和描述能力。通过分析Ga-BP模型的结果,通过纹理图像与物镜参数之间的关系概要建立的基础可以用于预测先前理解客观参数的材料的情感特征。

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