Recognition of fabric composition of clothing in an image in e-commerce using neural networks

V. V. Sorokina
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引用次数: 0

Abstract

Objectives . Development of new approach for recognizing the fabric composition of clothing in e-commerce images by using generative adversarial network(GAN) to generate synthetic images of clothing with known fabric composition, to be used to train the CNN to classify the fabric composition of real clothing images. Instead of a classic clothing image, a copy is generated with the material zoomed to fibers and fabric structure. Methods . The main methods to recognize the fabric composition of the clothing image in the e-commerce are the creation and annotation of a dataset for the neural network training, synthesis of the fabric of clothing, the choice of architecture and its modification, validation and testing, and interpretation of the results. Results . Experimental results with the constructed method show that it is effective for accurately recognizing the fabric composition of e-commerce clothing to be used to improve search and browsing on websites. Conclusion . In the course of the experiment, using a generative adversarial network, a data set of e-commerce products was synthesized and annotated, neural networks were built to recognize the composition of the fabric of clothing items. The results of the study showed that the new approach for recognizing the fabric of clothing provides higher accuracy in comparison with already known methods, in addition, the use of the attention model also gives good results to improve the metrics.
利用神经网络识别电子商务图像中服装的面料成分
目标。开发电子商务图像中服装面料成分识别的新方法,利用生成式对抗网络(GAN)生成已知面料成分的服装合成图像,用于训练CNN对真实服装图像的面料成分进行分类。与传统的服装图像不同的是,复制的材料被放大到纤维和织物结构。方法。电子商务中服装图像面料成分识别的主要方法有:神经网络训练数据集的创建与标注、服装面料的合成、体系结构的选择与修改、验证与测试、结果的解释。结果。实验结果表明,该方法可以准确识别电子商务服装的面料成分,提高网站的搜索和浏览效率。结论。在实验过程中,利用生成式对抗网络对电子商务产品数据集进行合成和标注,构建神经网络对服装产品的面料成分进行识别。研究结果表明,与现有方法相比,新方法对服装面料的识别具有更高的准确性,此外,注意模型的使用也对改进指标有很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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发文量
18
审稿时长
8 weeks
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