Video classification based on ConvNet collaboration and feature selection

Emel Boyaci, M. Sert
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引用次数: 3

Abstract

Today, video data, as a powerful multimedia component, is accompanied by some problems with increasing usage in communication, health, education, and social media in particular. Classification and detection of concepts in video data by automatic methods are some of these challenging problems. In this study, we propose a video classification system, which incorporates deep convolutional neural networks (CNNs) by leveraging feature selection and data fusion techniques to improve the accuracy of the classification. Principal Component Analysis (PCA) as a feature selection method and Discriminant Correlation Analysis (DCA) technique, which incorporates class associations into the correlation analysis of feature sets for data fusion, are applied to the problem at the feature level. Support Vector Machines (SVMs) have been trained with new feature vectors obtained from different deep convolutional neural networks by feature selection and data fusion methods. The proposed method is tested for 38 concepts on TRECVID 2013 SIN video task dataset and the results are evaluated. Our results show that the classification accuracy is improved by 4% with an accuracy of 50.27% when the proposed data fusion and feature selection techniques are used.
基于卷积神经网络协作和特征选择的视频分类
视频数据作为一种功能强大的多媒体组成部分,在通信、卫生、教育、特别是社交媒体等领域的使用日益增多,同时也出现了一些问题。视频数据中概念的自动分类和检测就是其中的一个难题。在这项研究中,我们提出了一个视频分类系统,该系统结合了深度卷积神经网络(cnn),利用特征选择和数据融合技术来提高分类的准确性。将主成分分析(PCA)作为特征选择方法和判别相关分析(DCA)技术应用于特征层面的问题,该技术将类关联结合到特征集的相关分析中进行数据融合。通过特征选择和数据融合的方法,利用不同深度卷积神经网络获得的新特征向量对支持向量机进行训练。在TRECVID 2013 SIN视频任务数据集上对38个概念进行了测试,并对结果进行了评价。结果表明,采用所提出的数据融合和特征选择技术,分类准确率提高了4%,达到50.27%。
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