4.7 Article

Biometric and Emotion Identification: An ECG Compression Based Method

Journal

FRONTIERS IN PSYCHOLOGY
Volume 9, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fpsyg.2018.00467

Keywords

biometrics; emotion; quantization; data compression; Kolmogorov complexity

Funding

  1. European Regional Development Fund (FEDER)
  2. FSE through the COMPETE programme
  3. Portuguese Government through FCT-Foundation for Science and Technology [UID/CEC/00127/2013, CMUP-ERI/FIA/0031/2013, PTDC/EEI-SII/6608/2014, UID/IC/4255/2013]
  4. FEDER - Programa Operacional Competitividade e Internacionalizao COMPETE [POCI-01-0145-FEDER-007746]
  5. National Funds through FCT-Fundao para a Cilncia
  6. FCT [SFRH/BPD/92342/2013, SFRH/BD/85376/2012]
  7. Fundação para a Ciência e a Tecnologia [SFRH/BD/85376/2012, CMUP-ERI/FIA/0031/2013, PTDC/EEI-SII/6608/2014] Funding Source: FCT

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We present an innovative and robust solution to both biometric and emotion identification using the electrocardiogram (ECG). The ECG represents the electrical signal that comes from the contraction of the heart muscles, indirectly representing the flow of blood inside the heart, it is known to convey a key that allows biometric identification. Moreover, due to its relationship with the nervous system, it also varies as a function of the emotional state. The use of information-theoretic data models, associated with data compression algorithms, allowed to effectively compare ECG records and infer the person identity, as well as emotional state at the time of data collection. The proposed method does not require ECG wave delineation or alignment, which reduces preprocessing error. The method is divided into three steps: (1) conversion of the real-valued ECG record into a symbolic time-series, using a quantization process; (2) conditional compression of the symbolic representation of the ECG, using the symbolic ECG records stored in the database as reference; (3) identification of the ECG record class, using a 1-NN (nearest neighbor) classifier. We obtained over 98% of accuracy in biometric identification, whereas in emotion recognition we attained over 90%. Therefore, the method adequately identify the person, and his/her emotion. Also, the proposed method is flexible and may be adapted to different problems, by the alteration of the templates for training the model.

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