Title
Bio-Inspired Adaboost Method for Efficient Face Recognition
Abstract
We present the design of face recognition system based on the Adaboost algorithm and bioinspired evolutionary search. We start by extracting the feature vector of the face image based on fixed fiducial points. Then we decompose the strong feature into several feature subsets using GA and classification models of each feature subsets are combined using the Adaboost algorithm. GA searches the best feature combination that gives minimum training error. We use the fixed feature decomposition method, where the length of the feature subset is constant. We use Gabor filter of 8 orientations and 8 frequencies to extract the feature of the face. Experiments are conducted on FERET database which contains 2418 images of 1209 subjects taking 2 images per subject. The outcome of these experiments suggests that the classification model using aggregation of feature combinations by means of Adaboost and GA gives better result than classification model that uses the entire feature vector.
Year
DOI
Venue
2007
10.1109/FBIT.2007.141
FBIT
Keywords
Field
DocType
feature subsets,entire feature vector,efficient face recognition,feature combination,fixed feature decomposition method,classification model,feature subset,best feature combination,adaboost algorithm,bio-inspired adaboost method,feature vector,strong feature,genetic algorithm,genetic algorithms,image classification,decomposition method,feret database,feature extraction,face recognition
k-nearest neighbors algorithm,Computer vision,Feature vector,AdaBoost,Pattern recognition,Feature (computer vision),Feature extraction,Feature (machine learning),Artificial intelligence,FERET database,Kanade–Lucas–Tomasi feature tracker,Mathematics
Conference
Citations 
PageRank 
References 
1
0.34
8
Authors
2
Name
Order
Citations
PageRank
Suman Sedai1389.76
Phill Kyu Rhee26024.82