A classified study on semantic analysis of video summarization

T. Moses, K. Balachandran
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引用次数: 6

Abstract

In today's world data represented in the form of a video are prolific and has increased the requisite of storage devices unconditionally. These video sets takes up a huge space for amassing data and takes a long time to ascertain the content that requires a higher cognitive process for content search and retrieval. The efficient method for storing video data is to remove high-degree redundancies and for creating an index of important events, objects and a preview video based on vital key-frames. These requirements imbibes the need to build algorithms that can concise the necessity of space and time for video and adequate approaches are to be developed to solve the needs of summarization. The three effective attributes for a semantic summarized video system are Un-supervision, efficient and dynamically scalable system that can help in reducing time and space complexities. Dimensionality reduction based on sub space analysis helps in plummeting the multidimensional data into a low-dimensional data to enable faster feature extraction and summarization. In this paper we have made a study and description related to several summarization methodologies for video's that are available.
视频摘要语义分析的分类研究
在当今世界,以视频形式表现的数据是丰富的,并且无条件地增加了对存储设备的需求。这些视频集占用了巨大的数据积累空间,需要花费很长时间来确定内容,对内容的搜索和检索需要更高的认知过程。存储视频数据的有效方法是去除高度冗余,并基于关键帧创建重要事件、对象和预览视频的索引。这些要求需要建立算法,使视频的空间和时间的必要性简洁明了,并需要制定适当的方法来解决摘要的需要。语义总结视频系统的三个有效属性是无监督、高效和动态可扩展的系统,这有助于降低时间和空间的复杂性。基于子空间分析的降维有助于将多维数据降为低维数据,从而实现更快的特征提取和总结。本文对现有的几种视频摘要方法进行了研究和描述。
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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