Perceptual evaluation for Zhangpu paper-cut patterns by using improved GWO-BP neural network

IF 1.4 4区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY
Daoling Chen, Pengpeng Cheng
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引用次数: 0

Abstract

Abstract In order to understand consumers’ perceptual cognition of Zhangpu paper-cut patterns and grasp the innovative application direction. The four design elements of paper-cut patterns were extracted by morphological analysis, and representative perceptual vocabulary were selected using Kansei engineering theory and factor analysis, then the design elements and perceptual evaluation scores of representative words are used as the input and output data of the GWO-BP neural network, respectively, to establish an intelligent model that can predict consumers’ perceptual cognition of paper-cut patterns. To verify the superiority of the model, the predicted result of BP and FA-BP are compared with GWO-BP neural network. The results show that although the convergence speed of the GWO-BP model is slightly lower than that of the FA-BP model, its prediction accuracy is significantly better than other algorithms. Designers can use the model to quickly redesign the paper-cut pattern to better meet the aesthetic needs of modern consumers.
基于改进GWO-BP神经网络的张浦剪纸图案感知评价
摘要了解消费者对漳浦剪纸图案的感性认知,把握创新应用方向。通过形态学分析提取剪纸图案的四个设计元素,并利用Kansei工程理论和因子分析选择具有代表性的感知词汇,然后将代表性词汇的设计元素和感知评价得分分别作为GWO-BP神经网络的输入和输出数据,建立一个能够预测消费者对剪纸图案感知认知的智能模型。为了验证该模型的优越性,将BP和FA-BP的预测结果与GWO-BP神经网络进行了比较。结果表明,虽然GWO-BP模型的收敛速度略低于FA-BP模型,但其预测精度明显优于其他算法。设计师可以利用该模型快速重新设计剪纸图案,更好地满足现代消费者的审美需求。
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来源期刊
CiteScore
2.80
自引率
6.70%
发文量
117
审稿时长
13.7 months
期刊介绍: The International Journal of Nonlinear Sciences and Numerical Simulation publishes original papers on all subjects relevant to nonlinear sciences and numerical simulation. The journal is directed at Researchers in Nonlinear Sciences, Engineers, and Computational Scientists, Economists, and others, who either study the nature of nonlinear problems or conduct numerical simulations of nonlinear problems.
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