O. Babatunde
Edith Cowan University
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Publication
Featured researches published by O. Babatunde.
British Journal of Mathematics & Computer Science | 2014
O. Babatunde; Leisa Armstrong; L. Jinsong; D. Diepeveen
Aims/ objectives: To demontrate effectiveness of Zernike Moments for Image Classification. Zernike moment(ZM) is an excellent region-based moment which has attracted the attentions of many image processing researchers since its first application to image analysis. Many papers have been published on several works done on ZM but no single paper ever give a detailed information of how the computation of ZM is done from the time the image is captured to the computation of ZM. This work showed how to effectively apply ZM on RGB images. We have demonstrated the effectiveness of Zernike moment in image classification system. A neuro-genetic intelligent system has been built with PNN classifier. The feature extracted viz ZM and Geometric features were further subjected to GA to bring the best combinatorial features for optimal accuracy. The algebraic structure of our novel fitness function enabled the GA to select the best results. The 10-fold CV used enabled the whole system to be unbiased giving a classification accuracy of 90.05%. A demonstration of affine properties of ZM are comprehensively stated and explained. In summary, the ZM enabled the classifier to have improved accuracy of 91% as compared with Geometric features with 89% accuracy.
Babatunde, O., Armstrong, L., Leng, J. and Diepeveen, D. <http://researchrepository.murdoch.edu.au/view/author/Diepeveen, Dean.html> (2015) A neuronal classification system for plant leaves using genetic image segmentation. British Journal of Mathematics and Computer Science, 9 (3). pp. 261-278. | 2015
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
This paper demonstrates the use of radial basis networks (RBF), cellular neural networks (CNN) and genetic algorithm (GA) for automatic classication of plant leaves. A genetic neuronal system herein attempted to solve some of the inherent challenges facing current software being employed for plant leaf classication. The image segmentation module in this work was genetically optimized to bring salient features in the images of plants leaves used in this work. The combination of GA-based CNN with RBF in this work proved more ecient than the existing systems that use conventional edge operators such as Canny, LoG, Prewitt, and Sobel operators. The results herein showed that GA-based CNN edge detector outperforms other edge detector in terms of speed and classication accuracy.
British Journal of Mathematics & Computer Science | 2014
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
Journal of Agricultural Informatics | 2015
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
Babatunde, O., Armstrong, L., Leng, J. and Diepeveen, D. <http://researchrepository.murdoch.edu.au/view/author/Diepeveen, Dean.html> (2015) Comparative analysis of genetic algorithm and particle swam optimization: An application in precision agriculture. Asian Journal of Computer and Information Systems, 3 (1). pp. 1-12. | 2015
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
Babatunde, O., Armstrong, L., Leng, J. and Diepeveen, D. <http://researchrepository.murdoch.edu.au/view/author/Diepeveen, Dean.html> (2014) Application of cellular neural networks and NaiveBayes classifier in agriculture. In: 9th Conference of the Asian Federation for Information Technology in Agriculture (AFITA) 2014, 29 September - 2 October 2014, Perth, Western Australia | 2014
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
Babatunde, O., Armstrong, L., Leng, J. and Diepeveen, D. <http://researchrepository.murdoch.edu.au/view/author/Diepeveen, Dean.html> (2014) On the application of genetic probabilistic neural network and cellular neural networks in precision agriculture. Asian Journal of Computer and Information Systems, 2 (4). pp. 90-101. | 2014
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen
Journal of Agricultural Informatics | 2015
O. Babatunde; Liesa Armstrong; Jinsong Leng; D. Diepeveen
Archive | 2015
O. Babatunde; Leisa Armstrong; Jinsong Leng
Babatunde, O., Armstrong, L., Leng, J. and Diepeveen, D. <http://researchrepository.murdoch.edu.au/view/author/Diepeveen, Dean.html> (2014) A computational approach to plant leaves identification. In: 9th Conference of the Asian Federation for Information Technology in Agriculture (AFITA) 2014, 29 September - 2 October 2014, Perth, Western Australia. | 2014
O. Babatunde; Leisa Armstrong; Jinsong Leng; D. Diepeveen