跨媒体检索的设计与研究

Chen Li, Jing Zhang, Chunhua Wang, Yaqiong Fan
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引用次数: 0

摘要

如今,互联网技术的飞速发展带动了大数据时代的推进,随着智能设备和社交媒体的广泛使用,多媒体数据呈爆炸式增长。随着信息交换、采集、存储的需求日益复杂多样,信息的类型也从传统的文字信息演变为图片、视频、音频等多样化的数据形式,给人们的工作、生活等场景带来不同程度的便利。然而,海量的多媒体数据也使得信息的存储和检索更加繁琐。如何实现数据的有效存储和高效检索,从而更好地发挥多媒体数据的价值,是当今学术界和信息产业面临的挑战之一。本文采用基于自然语言处理方法的对比语言-图像预训练模型,研究了文本和图像的跨媒体检索技术。本文提出的跨媒体预训练思想不仅可以应用于文本图像处理,理论上也可以应用于视频和音频模态信息的相互检索等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Design and Research of Cross-media Retrieval
Nowadays, the rapid development of Internet technology drives the advance of the big data era, and along with the widespread use of smart devices and social media, multimedia data is growing explosively. With the increasingly complex and diverse needs of information exchange, collection and storage, the types of information have also evolved from traditional text information to diverse data forms such as pictures and video and audio, bringing different degrees of convenience to people's work and life and other scenarios. However, the huge amount of multimedia data also makes information storage and retrieval more cumbersome. How to realize the effective storage and efficient retrieval of data, so as to better utilize the value of multimedia data, is one of the challenges that academia and information industry are tackling nowadays. In this paper, we study the cross-media retrieval technology of text and image by Contrastive Language-Image Pre-training model based on natural language processing method. The cross-media pre-training idea proposed in this paper can be applied not only to text-image processing, but also theoretically to mutual retrieval of modal information of video and audio, etc.
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