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Rule-Based Semantic Concept Classification from Large-Scale Video Collections

机译:大型视频集合中基于规则的语义概念分类

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摘要

The explosive growth and increasing complexity of the multimedia data have created a high demand of multimedia services and applications in various areas so that people can access and distribute the data easily. Unfortunately, traditional keyword-based information retrieval is no longer suitable. Instead, multimedia data mining and content-based multimedia information retrieval have become the key technologies in modern societies. Among many data mining techniques, association rule mining (ARM) is considered one of the most popular approaches to extract useful information from multimedia data in terms of relationships between variables. In this paper, a novel rule-based semantic concept classification framework using weighted association rule mining (WARM), capturing the significance degrees of the feature-value pairs to improve the applicability of ARM, is proposed to deal with major issues and challenges in large-scale video semantic concept classification. Unlike traditional ARM that the rules are generated by frequency count and the items existing in one rule are equally important, our proposed WARM algorithm utilizes multiple correspondence analysis (MCA) to explore the relationships among features and concepts and to signify different contributions of the features in rule generation. To the authors best knowledge, this is one of the first WARM-based classifiers in the field of multimedia concept retrieval. The experimental results on the benchmark TRECVID data demonstrate that the proposed framework is able to handle large-scale and imbalanced video data with promising classification and retrieval performance.
机译:多媒体数据的爆炸性增长和日益增加的复杂性对各个领域的多媒体服务和应用提出了很高的要求,因此人们可以轻松地访问和分发数据。不幸的是,传统的基于关键字的信息检索不再适合。取而代之的是,多媒体数据挖掘和基于内容的多媒体信息检索已成为现代社会的关键技术。在许多数据挖掘技术中,关联规则挖掘(ARM)被认为是根据变​​量之间的关系从多媒体数据中提取有用信息的最受欢迎的方法之一。本文提出了一种新的基于规则的语义概念分类框架,该框架利用加权关联规则挖掘(WARM)来捕获特征值对的显着程度,以提高ARM的适用性,从而解决了大型应用中的主要问题和挑战。规模视频语义概念分类。与传统的ARM不同,规则是通过频率计数生成的,并且一条规则中存在的项同样重要,我们提出的WARM算法利用多重对应分析(MCA)来探索特征和概念之间的关系,并指出特征的不同贡献。规则生成。据作者所知,这是多媒体概念检索领域中最早的基于WARM的分类器之一。在基准TRECVID数据上的实验结果表明,该框架能够处理具有前景的分类和检索性能的大规模,不平衡视频数据。

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