CVLGNENov 27, 2013

Color and Shape Content Based Image Classification using RBF Network and PSO Technique: A Survey

arXiv:1311.6881v1
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for image retrieval systems, focusing on color and shape content.

The paper tackles image classification for improving image query retrieval accuracy by using RBF neural networks and PSO with SVM, reporting better results compared to SVM alone in color image classification.

The improvement of the accuracy of image query retrieval used image classification technique. Image classification is well known technique of supervised learning. The improved method of image classification increases the working efficiency of image query retrieval. For the improvements of classification technique we used RBF neural network function for better prediction of feature used in image retrieval.Colour content is represented by pixel values in image classification using radial base function(RBF) technique. This approach provides better result compare to SVM technique in image representation.Image is represented by matrix though RBF using pixel values of colour intensity of image. Firstly we using RGB colour model. In this colour model we use red, green and blue colour intensity values in matrix.SVM with partical swarm optimization for image classification is implemented in content of images which provide better Results based on the proposed approach are found encouraging in terms of color image classification accuracy.

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