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Design of Low Complexity Human Anxiety Classification Model based on Machine Learning

기계학습 기반 저 복잡도 긴장 상태 분류 모델

  • Hong, Eunjae (Dept. of Electronic and Electrical Engineering, Ewha Womans University) ;
  • Park, Hyunggon (Dept. of Electronic and Electrical Engineering, Ewha Womans University)
  • Received : 2017.06.28
  • Accepted : 2017.08.23
  • Published : 2017.09.01

Abstract

Recently, services for personal biometric data analysis based on real-time monitoring systems has been increasing and many of them have focused on recognition of emotions. In this paper, we propose a classification model to classify anxiety emotion using biometric data actually collected from people. We propose to deploy the support vector machine to build a classification model. In order to improve the classification accuracy, we propose two data pre-processing procedures, which are normalization and data deletion. The proposed algorithms are actually implemented based on Real-time Traffic Flow Measurement structure, which consists of data collection module, data preprocessing module, and creating classification model module. Our experiment results show that the proposed classification model can infers anxiety emotions of people with the accuracy of 65.18%. Moreover, the proposed model with the proposed pre-processing techniques shows the improved accuracy, which is 78.77%. Therefore, we can conclude that the proposed classification model based on the pre-processing process can improve the classification accuracy with lower computation complexity.

Keywords

References

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