Title :
Self-Organizing Maps for Fingerprint Image Quality Assessment
Author :
Olsen, Martin Aastrup ; Tabassi, Elham ; Makarov, A. ; Busch, Christoph
Abstract :
Fingerprint quality assessment is a crucial task which needs to be conducted accurately in various phases in the biometric enrolment and recognition processes. Neglecting quality measurement will adversely impact accuracy and efficiency of biometric recognition systems (e.g. verification and identification of individuals). Measuring and reporting quality allows processing enhancements to increase probability of detection and track accuracy while decreasing probability of false alarms. Aside from predictive capabilities with respect to the recognition performance, another important design criteria for a quality assessment algorithm is to meet the low computational complexity requirement of mobile platforms used in national biometric systems, by military and police forces. We propose a computationally efficient means of predicting biometric performance based on a combination of unsupervised and supervised machine learning techniques. We train a self-organizing map (SOM) to cluster blocks of fingerprint images based on their spatial information content. The output of the SOM is a high-level representation of the finger image, which forms the input to a Random Forest trained to learn the relationship between the SOM output and biometric performance. The quantitative evaluation performed demonstrates that our proposed quality assessment algorithm is a reasonable predictor of performance. The open source code of our algorithm will be posted at NIST NFIQ 2.0 website.
Keywords :
computational complexity; fingerprint identification; image representation; military computing; mobile computing; pattern clustering; police; probability; self-organising feature maps; unsupervised learning; NIST NFIQ 2.0 Website; SOM; accuracy tracking; biometric enrolment; biometric recognition systems; computational complexity requirement; detection probability; finger image high-level representation; fingerprint image block clustering; fingerprint image quality assessment; military force; mobile platforms; national biometric systems; police forces; quality measurement; random forest; recognition process; self-organizing maps; spatial information content; supervised machine learning techniques; unsupervised machine learning techniques; Accuracy; Histograms; Quality assessment; Topology; Training; Vectors; Vegetation; Kohonen self-organizing map; biometric; evaluation; fingerprint; machine learning; quality; random forest; standard;
Conference_Titel :
Computer Vision and Pattern Recognition Workshops (CVPRW), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPRW.2013.28