OutCLIP,一种新的基于多装备CLIP的三重网络

Zahra Haghgu, R. Azmi, Lachin Zamani, Fatemeh Moradian
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引用次数: 0

摘要

选择一件合适的衣服是我们每天都要面对的问题之一。今天,人们倾向于使用网上购物,新冠肺炎疫情比以前更迫使人们这样做。在本研究中,我们提出了一种从网站数据库中检索多时尚商品的新架构。我们在三重网络中部署了CLIP变压器模型而不是卷积神经网络。我们还添加了一个长短期记忆网络(LSTM)来自动提取和编码图像特征,为每个输入图像生成描述性文本。我们的OutCLIP模型在多项目检索中以83%的准确率和85%的查全率成功完成了任务。该模型可以训练和应用于服装检索问题,并改进了之前提出的模型。同时考虑描述性文本和图像可以使模型更好地理解概念并提高其泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OutCLIP, A New Multi-Outfit CLIP Based Triplet Network
Choosing a proper outfit is one of the problems we deal with every day. Today, people tend to use online websites for shopping, and the COVID-19 situation forced this condition more than before. In this research, we proposed a new architecture for multi-fashion item retrieval from a website database. We deployed a CLIP transformer model instead of convolutional neural networks in a triplet network. We also added a long short-term memory network (LSTM) to automatically extract and code the image features to generate descriptive text for each input image. Our OutCLIP model succeeded in doing its task with 83% precision and 85% recall accuracy in multi-item retrieval. This model can be trained and used in fashion retrieval problems and improve the former proposed models. Considering the descriptive text and the image together gives the model a better understanding of the concept and improves its generalization.
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