The rich texture information of images places it as one of the powerful means in several fields such as remote sensing, biometrics and image classification, and recognition. The goal of texture analysis is to produce a feature vector (descriptor) of the input image that characterizes the spatial variations within it. Thus, there exist various feature extraction techniques to describe texture information, among them, the Local Binary Pattern (LBP) is widely used to extract the texture features, so, although LBP features are good texture descriptors, they fail, to characterize the image sufficiently. In this work, to enhance the discriminating capability and the classification system accuracy, we propose a new approach for LBP based texture analysis. Thus, the new scheme, called Oriented based LBP (LBP®), is derived from the basic LBP, which use directional neighborhoods and linearly interpolating between the pixel values allows the choice of any direction, θ, to form a bit string, which can constitute a representation of the image. To evaluate the performance of the proposed scheme, an LBP® based palmprint identification system was developed. Experimental results demonstrated that LBP® was effective to improve the biometric identification accuracy and offers better performance and robustness than the basic LBP.
[1]
T. Ojala,et al.
Gray level cooccurrence histograms via learning vector quantization
,
1999
.
[2]
Zhenhua Guo,et al.
Rotation invariant texture classification using adaptive LBP with directional statistical features
,
2010,
2010 IEEE International Conference on Image Processing.
[3]
Andrew P. Witkin,et al.
Analyzing Oriented Patterns
,
1985,
IJCAI.
[4]
C. J. Prabhakar,et al.
Extraction of Texture Based Features of Underwater Images Using RLBP Descriptor
,
2014,
FICTA.
[5]
Vipin Tyagi,et al.
An effective scheme for image texture classification based on binary local structure pattern
,
2013,
The Visual Computer.