4.2 Article

Non-invasive Multi-modal Human Identification System Combining ECG, GSR, and Airflow Biosignals

Journal

JOURNAL OF MEDICAL AND BIOLOGICAL ENGINEERING
Volume 35, Issue 6, Pages 735-748

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s40846-015-0089-5

Keywords

Sensor data; Bioinformatics; Human identification; Data mining; Ensemble classification

Funding

  1. MINECO [TIN2013-46469-R]
  2. CAM grant [S2013/ICE-3095]

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A huge amount of data can be collected through a wide variety of sensor technologies. Data mining techniques are often useful for the analysis of gathered data. This paper studies the use of three wearable sensors that monitor the electrocardiogram, airflow, and galvanic skin response of a subject with the purpose of designing an efficient multi-modal human identification system. The proposed system, based on the rotation forest ensemble algorithm, offers a high accuracy (99.6 % true acceptance rate and just 0.1 % false positive rate). For its evaluation, the proposed system was testing against the characteristics commonly demanded in a biometric system, including universality, uniqueness, permanence, and acceptance. Finally, a proof-of-concept implementation of the system is demonstrated on a smartphone and its performance is evaluated in terms of processing speed and power consumption. The identification of a sample is extremely efficient, taking around 200 ms and consuming just a few millijoules. It is thus feasible to use the proposed system on a regular smartphone for user identification.

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