Facial feature extraction techniques for face detection: A review

Authors:

Moumita Roy ,Madhura Datta ,

DOI NO:

https://doi.org/10.26782/jmcms.2014.01.00008

Keywords:

face detection, skin color and texture,snake models, constellation analysis,

Abstract

The researches in the area of face detection have made significant progress in the past few decades. The main challenge in this stage of face detection is to find a suitable effective method for finding facial features. Sub-areas under feature extraction methods are skin color and texture based segmentation, deformable template matching, snake models, feature searching and constellation analysis. In this paper we represented a review on some important contribution in the field of feature extraction for face detection.

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Author(s) :Moumita Roy and Madhura Datta View Download