Title :
Simulation of face recognition at a distance by scaling down images
Author :
Yufeng Zheng ; Elmaghraby, Adel S.
Author_Institution :
Dept. of Adv. Technol., Alcorn State Univ., Alcorn State, MS, USA
Abstract :
Face recognition at a distance is one grand challenge for security surveillance. In this paper, the face images at different distances are simulated by varying image scales (resolutions). The performances of three face recognition algorithms (matchers) are tested with variant image scales (simulating different distances) and with two spectral images (modalities). The three selected matchers are face pattern byte, elastic bunch graph matching, and linear discriminant analysis; while the two modalities are visible and thermal images. The performance of a face recognition system can be measured by accuracy (AC) rate and false accept rate (FAR). To enhance the performance of face recognition especially at a distance, score fusion techniques are applied, which combine several scores from multiple matchers and multiple modalities. Our experiments are conducted with the ASUMS face dataset consisting of two spectral images (visible and thermal) from 135 subjects. The experimental results show that the face recognition with small image scales (simulating long distances) have low performance (e.g., AC=91.36%, FAR=8.64% for 20×20-pixel images); and score fusion can greatly improve accuracy (99.34%) meanwhile reduce FAR (0.31%).
Keywords :
digital simulation; face recognition; graph theory; image matching; image resolution; infrared imaging; security; surveillance; AC rate; ASUMS face dataset; FAR; accuracy rate; elastic bunch graph matching; face pattern byte; face recognition simulation; false accept rate; image resolution; linear discriminant analysis; score fusion techniques; security surveillance; spectral images; thermal images; variant image scales; visible images; Artificial neural networks; Biomedical imaging; Image recognition; Image resolution; Support vector machines; face recognition at distance; multispectral face recognition; score fusion;
Conference_Titel :
Signal Processing and Information Technology(ISSPIT), 2013 IEEE International Symposium on
Conference_Location :
Athens
DOI :
10.1109/ISSPIT.2013.6781879