Title :
How Low Can You Go? Low Resolution Face Recognition Study Using Kernel Correlation Feature Analysis on the FRGCv2 dataset
Author :
Abiantun, Ramzi ; Savvides, Marios ; Vijaya Kumar, B.V.K.
Author_Institution :
Carnegie Mellon Univ., Pittsburgh
fDate :
Sept. 19 2006-Aug. 21 2006
Abstract :
In this paper we investigate the effect of image resolution of the face recognition grand challenge (FRGC) dataset on the kernel class-dependence feature analysis (KCFA) method. Good performance on low-resolution image data is important for any face recognition system using low- resolution imagery, such as in surveillance footage. We show that KCFA works reliably even at very low resolutions on the FRGC dataset Experiment 4 using the one-to-one matching protocol (greater than 70% verification rate (VR) at 0.1% false accept rate (FAR)). We observe reasonable performance at resolution as low as 16x16. However performance of KCFA degrades significantly below this resolution, but still outperforms the PCA baseline algorithm with 12% VR at 0.1% FAR.
Keywords :
correlation methods; face recognition; feature extraction; image resolution; surveillance; FRGCv2 dataset; face recognition grand challenge dataset; image resolution; kernel correlation feature analysis; low resolution face recognition; surveillance footage; Face recognition; Feature extraction; Image resolution; Kernel; Lighting; Nonlinear distortion; Principal component analysis; Probes; Robustness; Virtual reality;
Conference_Titel :
Biometric Consortium Conference, 2006 Biometrics Symposium: Special Session on Research at the
Conference_Location :
Baltimore, MD
Print_ISBN :
978-1-4244-0487-2
Electronic_ISBN :
978-1-4244-0487-2
DOI :
10.1109/BCC.2006.4341638