Performance Comparison of the KNN and SVM Classification Algorithms in the Emotion Detection System EMOTICA

Koné Chaka, Nhan Le-Thanh, Rémi Flamary, C. Belleudy
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引用次数: 8

Abstract

Emotica (EMOTIon CApture) system is a multimodal emotion recognition system that uses physiological signals. A DLF (Decision Level Fusion) approach with a voting method is used in this system to merge monomodal decisions for a multimodal detection. In this document, on the one hand, we describe how from a physiological signal Emotica can detect an emotional activity and distinguish one emotional activity from others. On the other hand, we present a study about two classification algorithms, KNN and SVM. These algorithms have been implemented on the Emotica system in order to see which one is the best. The experiments show that KNN and SVM allow a high accuracy in emotion recognition, but SVM is more accurate than KNN on the data that was used. Indeed, we obtain a recognition rate of 81.69% and 84% respectively with KNN and SVM algorithms under certain conditions.
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情感检测系统EMOTICA中KNN与SVM分类算法的性能比较
Emotica(情绪捕捉)系统是一种利用生理信号的多模态情绪识别系统。该系统采用DLF (Decision Level Fusion)方法和投票方法对单模态决策进行合并,实现多模态检测。在本文中,一方面,我们描述了Emotica如何从生理信号中检测情绪活动,并将一种情绪活动与其他情绪活动区分开来。另一方面,我们对KNN和SVM两种分类算法进行了研究。这些算法已经在Emotica系统上实现,以便看到哪一个是最好的。实验表明,KNN和SVM在情感识别中具有较高的准确率,但在使用的数据上,SVM的准确率高于KNN。确实,在一定条件下,我们使用KNN和SVM算法分别获得了81.69%和84%的识别率。
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