Review on Deep Adversarial Learning of Entity Resolution for Cross-Modal Data

Yizhuo Rao, Chengyuan Duan, Xiao Wei
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Abstract

With the repaid development of the Internet, multimedia data such as image, text, video, audio is increasing, which brings opportunities and challenges to the development of the economy and science. Cross-modal data entity resolution aims to find different objective descriptions of the semantically similar items from objects in different modalities. However, different modality data have the features with underlying heterogeneity and high-level semantic related. Starting from the problem of modality gap between cross-modal data, this paper introduces how to use the idea of confrontational learning to solve the cross-modal data entity resolution problem between images and text from the aspects of feature extraction and emotional state association.
跨模态数据实体解析的深度对抗学习研究综述
随着互联网的迅猛发展,图像、文字、视频、音频等多媒体数据日益增多,给经济和科学的发展带来了机遇和挑战。跨模态数据实体解析旨在从不同模态的对象中寻找语义相似项的不同客观描述。然而,不同的情态数据具有潜在的异构性和高层次的语义相关性。本文从跨模态数据之间的模态差距问题出发,从特征提取和情感状态关联两个方面介绍了如何利用对抗性学习的思想解决图像与文本之间的跨模态数据实体解析问题。
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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