다중 템플릿 방법을 이용한 뇌파의 감성 분류 알고리즘

Sensibility Classification Algorithm of EEGs using Multi-template Method

  • 김동준 (청주대 공대 정보통신공학부)
  • 발행 : 2004.12.01

초록

This paper proposes an algorithm for EEG pattern classification using the Multi-template method, which is a kind of speaker adaptation method for speech signal processing. 10-channel EEG signals are collected in various environments. The linear prediction coefficients of the EEGs are extracted as the feature parameter of human sensibility. The human sensibility classification algorithm is developed using neural networks. Using EEGs of comfortable or uncomfortable seats, the proposed algorithm showed about 75% of classification performance in subject-independent test. In the tests using EEG signals according to room temperature and humidity variations, the proposed algorithm showed good performance in tracking of pleasantness changes and the subject-independent tests produced similar performances with subject-dependent ones.

키워드

참고문헌

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