新内容分析方法在多媒体业务中的应用

I. Pirnog, D. Vizireanu, R. Udrea, C. Oprea
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引用次数: 1

摘要

本文提出了一种新的内容分析方法,适用于基于多媒体的服务。随着向消费者提供的视频信息越来越多,多媒体内容的传递和检索问题变得越来越重要。多媒体数据库的经典检索方式是按名称检索;然而,这个名称并不能真实地描述大多数视频内容的语义内容。这个问题的解决方案是视觉内容提取。这意味着多媒体内容的特征不仅包括名称,还包括所包含的最具代表性的信息。这些信息被称为视觉特征,有很多方法可以尝试从多媒体流中提取视觉特征。本文提出的方法基于颜色和空间信息,用于从图像和视频中提取图案。多媒体内容检索的过程包括三个阶段:语义视频建模、视频分割和特征提取。语义视频建模的结果是以更结构化的形式表示原始数据,这在接下来的阶段是必不可少的。视频分割是指将图像分割成一组不重叠的同质区域,这些区域的并集就是整个图像。本文提出了基于边缘、基于区域和基于运动的分割方法,用于运动或静态目标的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Content Analysis Methods Effective in Multimedia Based Services
In this paper we present new content analysis methods effective in multimedia based services. The problem of multimedia content delivery and retrieval has become more and more important due to the growing amount of video information that is delivered to consumers today. The classical searching and retrieval mode in multimedia databases is by name; however the name cannot truly describe the semantic content of most video content. The solution for this problem is visual content extraction. This means that the multimedia content will be characterized not only by name but also by the most representative information contained. This information is known as visual feature and there are any methods that try to extract visual features from multimedia streams. The methods presented in this paper are based on colour and spatial information and are used for extracting patterns from images and videos. The process of multimedia content retrieval consists of three stages: semantic video modelling, video segmentation and feature extraction. The result of semantic video modelling is the representation of raw data in a more structured form, and it is essential in the following stage. Video segmentation means the partition of an image into a set of non overlapping homogenous regions whose union is the entire image. The presented segmentation methods used are edge-based, region-based and motion-based, and are used for moving or static object detection.
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