Personalized Clothing Prediction Algorithm Based on Multi-modal Feature Fusion
-
Published:2024-03-27
Issue:2
Volume:14
Page:216-230
-
ISSN:2226-809X
-
Container-title:International Journal of Engineering and Technology Innovation
-
language:
-
Short-container-title:Int. j. eng. technol. innov.
Author:
Rong Liu ,Annie Anak Joseph ,Miaomiao Xin ,Hongyan Zang ,Wanzhen Wang ,Shengqun Zhang
Abstract
With the popularization of information technology and the improvement of material living standards, fashion consumers are faced with the daunting challenge of making informed choices from massive amounts of data. This study aims to propose deep learning technology and sales data to analyze the personalized preference characteristics of fashion consumers and predict fashion clothing categories, thus empowering consumers to make well-informed decisions. The Visuelle’s dataset includes 5,355 apparel products and 45 MB of sales data, and it encompasses image data, text attributes, and time series data. The paper proposes a novel 1DCNN-2DCNN deep convolutional neural network model for the multi-modal fusion of clothing images and sales text data. The experimental findings exhibit the remarkable performance of the proposed model, with accuracy, recall, F1 score, macro average, and weighted average metrics achieving 99.59%, 99.60%, 98.01%, 98.04%, and 98.00%, respectively. Analysis of four hybrid models highlights the superiority of this model in addressing personalized preferences.
Publisher
Taiwan Association of Engineering and Technology Innovation
Reference20 articles.
1. X. Wu and L. Zhu, “Application of Product Form Recognition Combined with Deep Learning Algorithm,” Computer-Aided Design & Applications, vol. 21, no. S15, pp. 54-68, 2024. 2. S. Yuan, L. Zhong, and L. Li, “WhatFits- Deep Learning for Clothing Collocation,” 7th International Conference on Behavioural and Social Computing, pp. 1-4, November 2020. 3. Z. He, Y. Li, X. Shi, P. Li, and W. Huang, “Multi-Deep Features Fusion Algorithm for Clothing Image Recognition,” 8th International Conference on Digital Home, pp. 104-109, September 2020. 4. Z. W. Wang, Y. Y. Pu, X. Wang, Z. P. Zhao, D. Xu, and W. H. Qian, “Accurate Retrieval of Multi-Scale Clothing Images Based on Multi-Feature Fusion,” Chinese Journal of Computers, vol. 43, no. 4, pp. 740-754, 2020. (In Chinese) 5. S. S. Islam, E. K. Dey, M. N. A. Tawhid, and B. M. M. Hossain, “A CNN Based Approach for Garments Texture Design Classification,” Advances in Technology Innovation, vol. 2, no. 4, pp. 119-125, October 2017.
|
|