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Correlation-Based Video Semantic Concept Detection Using Multiple Correspondence Analysis

机译:基于多重对应分析的基于相关的视频语义概念检测

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摘要

Semantic concept detection has emerged as an intriguing topic in multimedia research recently. The ability to interpret high-level semantics from low-level features has been the long desired goal of many researchers. In this paper, we propose a novel framework that utilizes the ability of multiple correspondence analysis (MCA) to explore the correlation between different items (feature-value pairs) and classes (concepts) to bridge the gap between the extracted low-level features and high-level semantic concepts. Using the concepts and benchmark data identified and provided by the TRECVID project, we have shown that our proposed framework demonstrates promising results and performs better than the Decision Tree (DT),Support Vector Machine (SVM), and Naive Bayesian (NB) classifiers that are commonly applied to the TRECVID datasets.
机译:最近多媒体研究中的语义概念检测已成为一种有趣的主题。从低级功能解释高级语义的能力是许多研究人员的长期目标。在本文中,我们提出了一种利用多个通信分析(MCA)的能力来探讨不同项目(特征值对)和类(概念)之间的相关性的新颖框架,以弥合提取的低级功能之间的间隙高级语义概念。使用TRECVID项目所识别和提供的概念和基准数据,我们已经表明,我们的建议框架演示了有希望的结果,并且比决策树(DT),支持向量机(SVM)和Naive Bayesian(NB)分类器更好通常应用于TRECVID数据集。

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