A SYSTEMATIC VIDEO INDEXING APPROACH USING DECISION TREE

M. M, Alexander Muthurengan Murugaiyan
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引用次数: 2

Abstract

: A systematic categorization approach for video indexing is presented in this paper. The amount of multimedia information that can be accessed over the internet continues to expand exponentially. Due to this growth and development of multimedia on the internet, particularly videos, there has been a rise in the need for video retrieval. The goal of this work is to discover subsets of characteristics that are suitable for indexing or categorizing video content. The features chosen from the frames of the video have dominant texture characteristics. Several statistical features have been applied for better performance with decision tree classification. The investigation included 1000 videos from different video contents, such as news, cartoon, advertisements, movies, and sports categories. Results show that the overall misclassification rate percentage was below 3%. The capability of indexing the video contents indicates the real power of the proposed system, which can enhance existing indexing services, thereby enriching the tools that are available for video indexing.
基于决策树的系统视频索引方法
本文提出了一种系统的视频索引分类方法。可以通过互联网访问的多媒体信息量继续呈指数级增长。由于互联网上多媒体,特别是视频的增长和发展,对视频检索的需求有所增加。这项工作的目标是发现适合索引或分类视频内容的特征子集。从视频帧中选择的特征具有主要的纹理特征。为了提高决策树分类的性能,应用了一些统计特征。调查包括1000个不同视频内容的视频,如新闻、漫画、广告、电影和体育类别。结果表明,总体误分类率低于3%。对视频内容进行索引的能力表明了所提出的系统的真正功能,它可以增强现有的索引服务,从而丰富可用于视频索引的工具。
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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