使用深度学习的流电视节目分类

Mounira Hmayda, R. Ejbali, M. Zaied
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引用次数: 7

摘要

电视节目流的自动识别是档案管理的重要任务,是多媒体信息的主要来源。提出的方法的目标是通过多媒体服务(即电视点播,追赶电视),社交社区和视频共享平台形式(Vimeo, Youtube, Facebook…)更好地利用这种视频来源。本文提出了一种新的时空方法,使用深度学习在两个主要步骤中识别电视流中的节目。建立了视觉广告歌曲视频数据库,用于训练。在测试中,我们使用相同的jingles节目类型,以便识别电视流中的各种节目类型。识别过程的主要思想是利用自编码器原理。在介绍了该方法的基础上,本文概述了从不同通道提取并由多个程序组成的几个流的令人鼓舞的实验结果。在TRECVID 2017数据库上进行了与同类作品的对比实验。电视节目识别率显著提高,超过95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Program Classification in a Stream TV Using Deep Learning
Automatic identification of television programs in the TV stream is an important task for operating archives and represent a principal source of multimedia information.. The goal of the proposed approach is to enable a better exploitation of this source of video by multimedia services (i.e., TV-On-Demand, catch-up TV), social community, and video-sharing pla forms (Vimeo, Youtube, Facebook…) This paper presents a new spatio-temporal approach to identify the programs in TV stream using deep learning in two main steps. A database for video of visual jingles is constructed for training. In the test we use same jingles program type in order to identify the various program types in the TV stream. The main idea of identification process consists in using the principal of auto-encoder. After presenting the proposed approach, the paper overviews the encouraging experimental results on several streams extracted from different channels and composed of several programs. Comparison experiments to similar works have been carried out on the TRECVID 2017 database. We show significant improvements to TV programs identification exceed 95 %.
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