Abstract

With the advent of medical endoscopes, earth observation satellites and personal phones, content-based image retrieval (CBIR) has attracted considerable attention, triggered by its wide applications, e.g., medical image analytics, remote sensing, and person re-identification. However, constructing effective feature extraction is still recognized as a challenging problem. To tackle this problem, we first propose the five-level color quantizer (FLCQ) to acquire a color quantization map (CQM). Secondly, according to the anatomical structure of the human visual system, the color quantization map (CQM) is amalgamated with a local binary pattern (LBP) map to construct a local ternary cross structure pattern (LTCSP). Third, the LTCSP is further converted into the uniform local ternary cross structure pattern (LTCSPuni) and the rotation-invariant local ternary cross structure pattern (LTCSPri) in order to cut down the computational cost and improve the robustness, respectively. Finally, through quantitative and qualitative evaluations on face, objects, landmark, textural and natural scene datasets, the experimental results illustrate that the proposed descriptors are effective, robust and practical in terms of CBIR application. In addition, the computational complexity is further evaluated to produce an in-depth analysis.

Highlights

  • Along with the development of imaging equipment, a larger number of images have been extensively collected from various fields [1,2,3]

  • The local binary pattern (LBP) definition was initially authored by Ojala et al [7], in which the referenced pixel and its nearest pixels were encoded as a binary string

  • Considerable results, it can be concluded that the proposed methods achieve a trade-off/compromise

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Summary

Introduction

Along with the development of imaging equipment, a larger number of images have been extensively collected from various fields [1,2,3]. The problem of extracting effective, robust and practical features has attracted an increasing number of researchers. Thanks to these pioneers’ breakthroughs, many approaches [7,8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23,24,25,26]. A family of local binary pattern (LBP)-based methods [7,8,9,10,11,12,13,14,15,16,17] have been sequentially reported for the grayscale-based feature extraction. Guo et al [9] designed a variant of the LBP named the completed LBP, and it is used for improving the robustness to rotation

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