New rotation-invariant texture analysis technique using Radon Transform and Hidden Markov Models

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Abstract

A rotation invariant texture analysis technique is proposed with a novel combination of Radon Transform (RT) and Hidden Markov Models (HMM). Features of any texture are extracted during RT which due to its inherent property captures all the directional properties of a certain texture. HMMs are used for classification purpose. One HMM is trained for each texture on its feature vector which preserves the rotational invariance of feature vector in a more compact and useful form. Once all the HMMs have been trained, testing is done by picking any of these textures at any arbitrary orientation. The best percentage of correct classification (PCC) is above 98 % carried out on sixty texture of Brodatz album.

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APA

Jalil, A., Manzar, A., Cheema, T. A., & Qureshi, I. M. (2008). New rotation-invariant texture analysis technique using Radon Transform and Hidden Markov Models. IEICE Transactions on Information and Systems, E91-D(12), 2906–2909. https://doi.org/10.1093/ietisy/e91-d.12.2906

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