基于LOD的知识驱动视频信息检索:从半结构化到结构化视频元数据

L. Sikos, D. Powers
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引用次数: 20

摘要

随着网络上视频内容数量的急剧增加,许多技术规范和标准被引入来存储技术细节,描述在线视频的内容,并为在线视频添加字幕。其中一些规范基于具有有限的机器可处理性、数据重用性和互操作性的非结构化数据,而其他规范则基于xml,表示半结构化数据。虽然低级视频特征可以自动导出,但高级特征主要与特定的知识领域相关,并且严重依赖于人类的经验、判断和背景。解决这个问题的方法之一是将标准的(通常是半结构化的)词汇表(如MPEG-7的词汇表)映射到机器可解释的本体。另一种方法是引入新的多媒体本体。虽然可以用结构化LOD数据集(如DBpedia)定义的术语对视频内容进行有效的注释,但在视频制作和分发领域需要本体标准化。本文从描述符级别和机器可读性两个方面比较了目前最先进的视频注释方法,强调了不同方法的局限性,并对标准视频注释提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge-Driven Video Information Retrieval with LOD: From Semi-Structured to Structured Video Metadata
In parallel with the tremendously increasing number of video contents on the Web, many technical specifications and standards have been introduced to store technical details and describe the content of, and add subtitles to, online videos. Some of these specifications are based on unstructured data with limited machine-processability, data reuse, and interoperability, while others are XML-based, representing semi-structured data. While low-level video features can be derived automatically, high-level features are mainly related to a particular knowledge domain and heavily rely on human experience, judgment, and background. One of the approaches to solve this problem is to map standard, often semi-structured, vocabularies, such as that of MPEG-7, to machine-interpretable ontologies. Another approach is to introduce new multimedia ontologies. While video contents can be annotated efficiently with terms defined by structured LOD datasets, such as DBpedia, ontology standardization would be desired in the video production and distribution domains. This paper compares the state-of-the-art video annotations in terms of descriptor level and machine-readability, highlights the limitations of the different approaches, and makes suggestions towards standard video annotations.
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