Abstract

In this paper, we propose simple and effective compression of CSLBP (Center Symmetric Local Binary Pattern) descriptors, which is a textured based operator and mostly used as key point descriptor. With default parameters for computation, it is 256-length descriptor for each keypoint or affine patch. CSLBP is an extended form of LBP (Local Binary Patterns). The calculation of CSLBP descriptor is effective, robust, and straightforward for different image transformations for instance; image blurring and illumination alteration. However, an improvement in time and space consumption of CSLBP can be attained by means of simple compression. For this reason, CSLBP is a smart choice for smart phones as well as large databases. We reduce the descriptor length (dimensions) upto 50% without applying any techniques of dimensionality reduction like PCA (Principle Component Analysis) or LDA (Linear Discriminant Analysis). The compressed CSLBP descriptor is denoted as C-CSLBP. The performance of C-CSLBP is evaluated on state-of-the-art datasets using standard metrics. It is quantitatively shown by experiments that C-CSLBP is equivalently effective compared to CSLBP despite of reduced dimensions.

Highlights

  • One of the major issues of image processing and computer vision research is to find out images which are similar in part or whole to a query image

  • The CCSLBP is a complimentary approach to CSLBP that has equal dimensions compared to SIFT, and the robustness is approximately similar to CSLBP

  • When we perform C-CSLBP compression in the CSLBP descriptor, we assume that when CSLBP and C-CSLBP descriptors are extracted from the similar points, the distances among resultant C-CSLBP descriptors are correlated with the distances among CSLBP descriptors

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Summary

Introduction

One of the major issues of image processing and computer vision research is to find out images which are similar in part or whole to a query image. This has several important applications such as video indexing, image retrieval, image classification, texture recognition, and object recognition. Many consider the SIFT descriptor as benchmark standard for keypoint descriptor It is resilience against image transformations [4,5] has made it favorable for a number of applications including image classification [6], object recognition [1], image stitching [7], and image/video copy

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