Title :
Fuzzy match index for scale-invariant feature transform (SIFT) features with application to face recognition with weak supervision
Author :
Susan, Seba ; Jain, Abhishek ; Sharma, Aakash ; Verma, Shikhar ; Jain, Siddhant
Author_Institution :
Dept. of Comput. Sci. & Eng., Delhi Technol. Univ., New Delhi, India
Abstract :
A fuzzy match index for scale-invariant feature transform (SIFT) features is proposed in this study that cumulatively involves all the test SIFT keypoints in the decision-making process. The new fuzzy SIFT classifier is adapted successfully for robust face recognition from complex backgrounds without using any face cropping tools and using only a single training template. The further incorporation of entropy weights ensures that the facial features have a greater role in the soft decision-making as compared with the background features. The highlights of the authors´ work are: (i) The development of a novel highly efficient fuzzy SIFT descriptor matching tool; (ii) incorporation of feature entropy weights to highlight the contribution of facial features; (iii) application to robust face recognition from uncropped images having diverse backgrounds with a single template for each subject. The authors thus allow for weak supervision of the face recognition experiment and obtain high accuracy for 20 subjects of the CALTECH-256 face database, 133 subjects of the labelled faces for the wild dataset and 994 subjects of the FERET database, with state-of-the-art comparisons indicating the supremacy of the authors´ approach.
Keywords :
decision making; entropy; face recognition; fuzzy set theory; image matching; transforms; Caltech-256 face database; FERET database; SIFT features; decision-making process; facial features; feature entropy weights; fuzzy SIFT classifier; fuzzy SIFT descriptor matching tool; fuzzy match index; labelled faces; robust face recognition; scale-invariant feature transform features; soft decision-making; test SIFT keypoints; uncropped images; weak supervision; wild dataset;
Journal_Title :
Image Processing, IET
DOI :
10.1049/iet-ipr.2014.0670