Texture image analysis based on joint of multi directions GLCM and local ternary patterns
Akshakhi Kumar Pritoonka, Faeze Kiani

TL;DR
This paper introduces a novel texture classification method combining multi-direction GLCM and local ternary patterns, achieving higher accuracy on the Brodatz dataset compared to existing approaches.
Contribution
It proposes a new texture analysis approach that combines GLCM and LTP features for improved classification accuracy.
Findings
Higher classification accuracy on Brodatz dataset.
Outperforms some state-of-the-art texture classification methods.
Effective in extracting local and statistical texture features.
Abstract
Human visual brain use three main component such as color, texture and shape to detect or identify environment and objects. Hence, texture analysis has been paid much attention by scientific researchers in last two decades. Texture features can be used in many different applications in commuter vision or machine learning problems. Since now, many different approaches have been proposed to classify textures. Most of them consider the classification accuracy as the main challenge that should be improved. In this article, a new approach is proposed based on combination of two efficient texture descriptor, co-occurrence matrix and local ternary patterns (LTP). First of all, basic local binary pattern and LTP are performed to extract local textural information. Next, a subset of statistical features is extracted from gray-level co-occurrence matrixes. Finally, concatenated features are used…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Advanced Image and Video Retrieval Techniques
