基于深度学习的服装图像纺织材料分类

So Young Lee, Hye Seon Jeong, Yoon Sung Choi, Choong Kwon Lee
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引用次数: 0

摘要

随着网上交易的增加,服装的形象对消费者的购买决策有很大的影响。强调了图像信息对于服装材料的重要性,对服装图像进行分析,对所用材料的把握,对于时尚行业来说是非常重要的。用于服装的纺织材料很难用肉眼识别,并且在分类中消耗了大量的时间和成本。本研究旨在基于深度学习算法对服装图像中的纺织品材料进行分类。材料分类可以降低服装生产成本,提高制造过程的效率,并有助于向消费者推荐特定材料的产品。我们使用基于机器视觉的深度学习算法ResNet和Vision Transformer对服装图像进行分类。共采集760,949幅图像并进行预处理,检测异常图像。最后共使用了167,299张服装图片,19张纺织品标签和20张面料标签。我们使用ResNet和Vision Transformer对服装材料进行分类,并将算法的性能与Top-k准确率评分指标进行比较。通过性能比较,Vision Transformer算法优于ResNet算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Textile material classification in clothing images using deep learning
As online transactions increase, the image of clothing has a great influence on consumer purchasing decisions. The importance of image information for clothing materials has been emphasized, and it is important for the fashion industry to analyze clothing images and grasp the materials used. Textile materials used for clothing are difficult to identify with the naked eye, and much time and cost are consumed in sorting. This study aims to classify the materials of textiles from clothing images based on deep learning algorithms. Classifying materials can help reduce clothing production costs, increase the efficiency of the manufacturing process, and contribute to the service of recommending products of specific materials to consumers. We used machine vision-based deep learning algorithms ResNet and Vision Transformer to classify clothing images. A total of 760,949 images were collected and preprocessed to detect abnormal images. Finally, a total of 167,299 clothing images, 19 textile labels and 20 fabric labels were used. We used ResNet and Vision Transformer to classify clothing materials and compared the performance of the algorithms with the Top-k Accuracy Score metric. As a result of comparing the performance, the Vision Transformer algorithm outperforms ResNet.
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