DocumentCode :
693733
Title :
Analysis of euclidean distance and Manhattan Distance measure in face recognition
Author :
Malkauthekar, M.D.
Author_Institution :
M.C.A. Dept., Gov. Eng. Coll., Karad, India
fYear :
2013
fDate :
18-19 Oct. 2013
Firstpage :
503
Lastpage :
507
Abstract :
The face expression recognition problem is challenging because different individuals display the same expression differently [1].Here PCA algorithm is used for the feature extraction. Distance metric or matching criteria is the main tool for retrieving similar images from large image databases for the above category of search. Two distance metrics, such as the L1 metric (Manhattan Distance), the L2 metric (Euclidean Distance) have been proposed in the literature for measuring similarity between feature vectors. In content-based image retrieval systems, Manhattan distance and Euclidean distance are typically used to determine similarities between a pair of image [2]. Here facial images of three subjects with different expression and angles are used for classification. Experimental results are compared and the results show that the Manhattan distance performs better than the Euclidean Distance.
Keywords :
content-based retrieval; emotion recognition; face recognition; feature extraction; image retrieval; principal component analysis; Euclidean distance; L1 metric; L2 metric; Manhattan distance measure; PCA algorithm; content-based image retrieval systems; distance metric; face expression recognition problem; feature extraction; large image databases; matching criteria; Euclidian distance; FERET database; Image Classification; L1 norm; L2 norm; Manhattan Distance; PCA; Principal Component Analysis; covariance matrix; eigenvectors;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Computational Intelligence and Information Technology, 2013. CIIT 2013. Third International Conference on
Conference_Location :
Mumbai
Type :
conf
DOI :
10.1049/cp.2013.2636
Filename :
6950920
Link To Document :
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