Title of article :
Image Classification Based on Effective Probabilistic Latent Semantic Analysis Model
Author/Authors :
Pandiarajan، D. Antony نويسنده Fatima Michael College of Engineering and Technology, Madurai , , Nisharani، S. N. نويسنده Fatima Michael College of Engineering and Technology, Madurai ,
Issue Information :
روزنامه با شماره پیاپی 3 سال 2013
Abstract :
This article proposes a new method for classification of rock images using Tamura features and an effective topic generation model called probabilistic latent semantic analysis (PLSA). The rock textures can be very well represented by the six Tamura features known as coarseness, contrast, directionality, line likeness, regularity and roughness. A topic model is generated by applying Tamura features to PLSA. The Sum of Square Difference (SSD) classifier is employed for the classification process. The SSD classifier is applied over the topic model to classify the rock texture. This classification is compared with GLCM, color co occurrence and Tamura features methods. This method gives the accuracy of 74.33%.
Journal title :
International Journal of Electronics Communication and Computer Engineering
Journal title :
International Journal of Electronics Communication and Computer Engineering