Improving Texture Based Classification of Aerial Images by Fractal Features

In this paper we propose an effective method of aerial image classification, which combines three types of features: color-based, statistical and fractal information. Two distinct phases were necessary for the CBIR system, which includes the classification algorithm: the learning phase and the classification phase. In the learning phase 5 different and efficient features were selected: entropy, contrast, homogeneity, mass fractal dimension and lacunarity. Also, three categories (classes) in CBIR were considered. The method of comparison, based on sub-images, improves the texture-based classification. A set of 100 aerial images from UAV was tested for establishing the rate of classification. The rate of 96% accurate classification, obtained as result, confirms the efficiency of the proposed method.

[1]  M. B. Filho,et al.  ACCURACY OF LACUNARITY ALGORITHMS IN TEXTURE CLASSIFICATION OF HIGH SPATIAL RESOLUTION IMAGES FROM URBAN AREAS , 2008 .

[2]  Bidyut Baran Chaudhuri,et al.  Texture Segmentation Using Fractal Dimension , 1995, IEEE Trans. Pattern Anal. Mach. Intell..

[3]  Syamsiah Mashohor,et al.  A texture-based approach for content based image retrieval system for plant leaves images , 2011, 2011 IEEE 7th International Colloquium on Signal Processing and its Applications.

[4]  Nirupam Sarkar,et al.  An Efficient Differential Box-Counting Approach to Compute Fractal Dimension of Image , 1994, IEEE Trans. Syst. Man Cybern. Syst..

[5]  Khairul Nizam Tahar,et al.  Digital aerial imagery of unmanned aerial vehicle for various applications , 2013, IEEE International Conference on Control System, Computing and Engineering.

[6]  Ramesh C. Jain,et al.  A survey on the use of pattern recognition methods for abstraction, indexing and retrieval of images and video , 2002, Pattern Recognit..

[7]  Nicoleta Angelescu,et al.  CBIR system based on texture characterization , 2013, 2013 4th International Symposium on Electrical and Electronics Engineering (ISEEE).

[8]  Ryszard S. Choras Content-Based Image Retrieval - A Survey , 2006, Biometrics, Computer Security Systems and Artificial Intelligence Applications.

[9]  Muhammad Sharif,et al.  Content Based Image Retrieval: Survey , 2012 .