Which Is Plagiarism: Fashion Image Retrieval Based on Regional Representation for Design Protection

Yining Lang, Yuan He, Fan Yang, Jianfeng Dong, Hui Xue
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引用次数: 21

Abstract

With the rapid growth of e-commerce and the popularity of online shopping, fashion retrieval has received considerable attention in the computer vision community. Different from the existing works that mainly focus on identical or similar fashion item retrieval, in this paper, we aim to study the plagiarized clothes retrieval which is somewhat ignored in the academic community while itself has great application value. One of the key challenges is that plagiarized clothes are usually modified in a certain region on the original design to escape the supervision by traditional retrieval methods. To relieve it, we propose a novel network named Plagiarized-Search-Net (PS-Net) based on regional representation, where we utilize the landmarks to guide the learning of regional representations and compare fashion items region by region. Besides, we propose a new dataset named Plagiarized Fashion for plagiarized clothes retrieval, which provides a meaningful complement to the existing fashion retrieval field. Experiments on Plagiarized Fashion dataset verify that our approach is superior to other instance-level counterparts for plagiarized clothes retrieval, showing a promising result for original design protection. Moreover, our PS-Net can also be adapted to traditional fashion retrieval and landmark estimation tasks and achieves the state-of-the-art performance on the DeepFashion and DeepFashion2 datasets.
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哪是抄袭:基于地域表征的时尚图像检索设计保护
随着电子商务的快速发展和网上购物的普及,时尚检索在计算机视觉界受到了相当大的关注。与现有的研究工作主要集中在相同或相似的时尚单品检索不同,本文的研究对象是学术界忽视的抄袭服装检索,而抄袭服装检索本身具有很大的应用价值。其中一个关键的挑战是,抄袭的服装通常会在原设计的一定区域进行修改,以逃避传统检索方法的监督。为了缓解这一问题,我们提出了一个基于区域表征的新型网络——抄袭搜索网(PS-Net),利用地标来指导区域表征的学习,并对不同地区的时尚商品进行比较。此外,我们提出了一个新的数据集剽窃者服装检索,为现有的服装检索领域提供了有意义的补充。在抄袭时装数据集上的实验验证了我们的方法优于其他实例级的抄袭服装检索方法,显示了对原创设计保护的良好结果。此外,我们的PS-Net还可以适应传统的时尚检索和地标估计任务,并在DeepFashion和DeepFashion2数据集上实现最先进的性能。
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