Non Binary Local Gradient Contours for Face Recognition

11/03/2014
by   Abdullah Gubbi, et al.
0

As the features from the traditional Local Binary Patterns (LBP) and Local Directional Patterns (LDP) are found to be ineffective for face recognition, we have proposed a new approach derived on the basis of Information sets whereby the loss of information that occurs during the binarization is eliminated. The information sets expand the scope of fuzzy sets by connecting the attribute and the corresponding membership function value as a product. Since face is having smooth texture in a limited area, the extracted features must be highly discernible. To limit the number of features, we consider only the non overlapping windows. By the application of the information set theory we can reduce the number of feature of an image. The derived features are shown to work fairly well over eigenface, fisherface and LBP methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/05/2013

An adaptive block based integrated LDP,GLCM,and Morphological features for Face Recognition

This paper proposes a technique for automatic face recognition using int...
research
11/06/2011

Face Recognition Using Discrete Cosine Transform for Global and Local Features

Face Recognition using Discrete Cosine Transform (DCT) for Local and Glo...
research
07/28/2009

Automatic local Gabor Features extraction for face recognition

We present in this paper a biometric system of face detection and recogn...
research
08/04/2022

NIR-to-VIS Face Recognition via Embedding Relations and Coordinates of the Pairwise Features

NIR-to-VIS face recognition is identifying faces of two different domain...
research
06/01/2015

Robust Face Recognition with Structural Binary Gradient Patterns

This paper presents a computationally efficient yet powerful binary fram...
research
08/25/2014

Image processing

Gabor filters can extract multi-orientation and multiscale features from...

Please sign up or login with your details

Forgot password? Click here to reset