Abstract

More and more attention has been paid to the invariant texture analysis, because the training and testing samples generally have not identical or similar orientations, or are not acquired from the same viewpoint in many practical applications, which often has negative influences on texture analysis. Local binary pattern (LBP) has been widely applied to texture classification due to its simplicity, efficiency, and rotation invariant property. In this paper, an integrated local binary pattern (ILBP) scheme including original rotation invariant LBP, improved contrast rotation invariant LBP, and direction rotation invariant LBP is proposed which can effectively overcome the deficiency of original LBP that is ignoring contrast and direction information. In addition, for surmounting another major drawback of LBP such as locality which can result in the lack of shape and space expression of the holistic texture image, Zernike moment features are fused into the improved LBP texture features in the proposed method because they comprise orthogonal and rotation invariant property and can be easily and rapidly calculated to an arbitrary high order. Experimental results show that the proposed method can be remarkably superior to the other state-of-the-art methods when rotation invariant texture features are extracted and classified.

Highlights

  • Texture analysis is an attractive topic in image processing and pattern recognition

  • Besides fusion histogram spectrum feature F, OLBPrPi;R can revise other histogram spectrum features such as Soriginal generated by original rotation invariant LBPrPi;uR2, SC generated by contrast rotation invariant CLBPrPi;uR2, even SZ calculated by rotation invariant Zernike moments

  • 5 Conclusions Local binary pattern (LBP) is an excellent tool for texture classification because of its simplicity, efficiency, and rotation invariant property

Read more

Summary

Introduction

Texture analysis is an attractive topic in image processing and pattern recognition. It plays a vital role in many important applications such as object tracking or recognition, remote sensing, image retrieval based on similarity, and so on [1,2,3,4]. Guo et al [5] proposed an adaptive LBP method including the directional statistical information of texture for rotation invariant texture classification. In effectively making up the missed shape and space information of the holistic texture image when LBP texture features are extracted, Zernike moment is a desirable choice. A promising rotation invariant texture classification method is proposed which combines ILBP features with Zernike moment rotation invariant features These two features respectively describe local and holistic information of texture images.

Original LBP texture model
Uniform and rotation invariant LBP
Integrated rotation invariant LBP model
Rotation invariant Zernike moments model
Construction of fusion feature
Experimental results
Experimental results on CUReT database
Methods
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call