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Analysis of pattern recognition and dimensionality reduction techniques for odor biometrics

Authors :
Rodríguez Luján, Irene
Bailador del Pozo, Gonzalo
Sánchez Ávila, María del Carmen
Herrero, Ana
Vidal de Miguel, Guillermo
Rodríguez Luján, Irene
Bailador del Pozo, Gonzalo
Sánchez Ávila, María del Carmen
Herrero, Ana
Vidal de Miguel, Guillermo
Source :
Knowledge-Based Systems, ISSN 0950-7051, 2013-11, Vol. 52
Publication Year :
2013

Abstract

In this paper, we analyze the performance of several well-known pattern recognition and dimensionality reduction techniques when applied to mass-spectrometry data for odor biometric identification. Motivated by the successful results of previous works capturing the odor from other parts of the body, this work attempts to evaluate the feasibility of identifying people by the odor emanated from the hands. By formulating this task according to a machine learning scheme, the problem is identified with a small-sample-size supervised classification problem in which the input data is formed by mass spectrograms from the hand odor of 13 subjects captured in different sessions. The high dimensionality of the data makes it necessary to apply feature selection and extraction techniques together with a simple classifier in order to improve the generalization capabilities of the model. Our experimental results achieve recognition rates over 85% which reveals that there exists discriminatory information in the hand odor and points at body odor as a promising biometric identifier.

Details

Database :
OAIster
Journal :
Knowledge-Based Systems, ISSN 0950-7051, 2013-11, Vol. 52
Notes :
application/pdf, Spanish
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn903078337
Document Type :
Electronic Resource