원문정보
초록
영어
This paper investigates the possibility of exploiting facial skin texture as a source of biometric information to facilitate automatic recognition of individuals. Such ability may be particularly important in circumstances when a full view of the face may not be available. The proposed algorithm automatically segments the forehead region and divides it into non-overlapping patches. Two state-of-the-art families of texture feature extraction approaches, namely Gabor wavelet filter and Local Binary Pattern operator, are compared for extracting features from these patches which are classified using a k-NN classifier. The identification and verification performance is evaluated for different patch sizes using the XM2VTS database. For the verification experiments an EER of 0.065 using Gabor features and 0.083 using LBP features is obtained for forehead regions with pure skin. Additionally a novel classifier is presented for automatically detecting pure skin patches in the forehead region.
목차
1. Introduction
2. Recognition Based on Local Skin Patches
2.1 Face Normalization
2.2. Forehead Localization
2.3. Forehead Partitioning and Feature Extraction
2.4 Gabor Filter for Extracting Skin Texture Features
2.5 Local Binary Pattern (LBP) Operator for Extracting Skin Texture Features
2.6 Forehead Representation and Classification
3. Developing Hair/Skin Patch Classifier
4. Experimental Results
4.1 Experiment 1: Identification Scenario
4.2. Experiment 2: Verification Scenario
4.3. Test of the Proposed Skin/Hair Classifier
5. Conclusion and Future Work
References
