Image Clustering using Color Moments, Histogram, Edge and K-means Clustering
Journal: International Journal of Science and Research (IJSR) (Vol.2, No. 1)Publication Date: 2013-01-05
Authors : Annesha Malakar; Joydeep Mukherjee;
Page : 532-537
Keywords : Color moments; Color Histogram; Edge Detection; Clustering;
Abstract
Clustering a large volume of image database is a challenging research work. Image clustering is needed many practical area like Medical Diagnosis, Military. There exist many traditional way to cluster similar data. But the accuracy level is not so high. So in this paper we propose a new multi feature image clustering technique which will help us to classify the large volume data with high accuracy level. Firstly we extract color moments feature from an image, and then we consider histogram analysis and make a summation of each color bin. Finally we used canny edge detection technique. Lastly we combine all features in a matrix and perform clustering algorithm to cluster data.
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