Automatic Topics Segmentation for News Video by Clustering of Histogram of Orientation Gradients Fac

Automatic Topics Segmentation for News Video

by Clustering of Histogram of Orientation

Gradients Faces

 Mounira Hmayda, Ridha Ejbali, and Mourad Zaied

RTIM: Research Team in Intelligent Machines,University of Gabes, National Engineering School of Gabes (ENIG), Tunisia

Abstract: TV stream is a major source of multimedia data. The proposed method aims to enable a good exploitation of this source of video by multimedia services social community, and video-sharing platforms. In this work, we propose an approach to the automatic topics segmentation of news video. The originality of the approach is the use of Clustering of Histogram of Orientation Gradients (HOG) faces as prior knowledge. This knowledge is modeled as images which governs the structuring of TV stream content. This structuring is carried out on two levels. The first consists in the identification of anchorperson by Single-Linkage Clustering of HOG faces. The second level aims to identify the topics of news program due to the large audience because of the pertinent information they contain. Experiments comparing the proposed technique to similar works were carried out on the TREC Video Retrieval Evaluation (TRECVID) 2003 database. The results show significant improvements to TV news structuring exceeding 96 %.

Keywords: Anchorperson, clustering, face detection, features extraction, news program.

Received December 28, 2018; accepted April 10, 2020

https://doi.org/10.34028/iajit/18/3/2
Read 464 times Last modified on Monday, 26 April 2021 03:07
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