IJIGSP Vol. 10, No. 10, 8 Oct. 2018
Cover page and Table of Contents: PDF (size: 1764KB)
Full Text (PDF, 1764KB), PP.11-30
Views: 0 Downloads: 0
Hue Saturation Value (HSV), k-means, Saliency feature, Red Green Blue (RGB), Segmentation, L*a*b* color model, Grey threshold
Plant is a gift of almighty to the living being in the earth. Leaf is an essential component for any types of plant including crops, fruit and vegetables. Before the scheduled decay of the leaf due to deficiency there are patches of dead zone spot or sections generally visible. This paper introduces a novel image based analysis to identify patches of dead zone spot or sections generally visible due to deficiency. Clustering, colour object based segmentation and colour transformation techniques using significant salient features identification are applied over 12 plant leaves collected naturally from gardens and crop fields. Hue, saturation and Value based and L*a*b* colour model based object analysis is being applied over diseased leaf and portion of leaf to identify the dead zone automatically. Derivative based edge analysis is being applied to identify the outline edge and dead zone segmentation in leaf image. K-means clustering has played an important role to cluster dead zone using colour based object area segmentation.
Rajat Kumar Sahoo, Ritu Panda, Ram Chandra Barik, Samrendra Nath Panda, " Automatic Dead Zone Detection in 2-D Leaf Image Using Clustering and Segmentation Technique", International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.10, No.10, pp. 11-30, 2018. DOI: 10.5815/ijigsp.2018.10.02
[1]Peifeng Xu, Gangshan Wu, Yijia Guo, Xiaoyin chen, Hetong Yang, Rangbiao Zhang “Automatic Wheat Leaf Rust Detection and Grading Diagnosis via Embedded Image Processing System” International Congress of Information and Communication Technology (ICICT 2017).Procedia Computer Science 107 (2017) 836 – 841.
[2]Manisha Bhange and H.A.Hingoliwala “Smart Farming: Pomegranate Disease Detection Using Image Processing”. Second International Symposium on Computer Vision and the Internet (VisionNet’15). Procedia Computer Science 58 (2015) 280 – 288
[3]Mohammad El –Helly, Ahmed Rafea, Salwa El – Gamal And Reda Abd El Whab “Integrating Diagnostic Expert System With Image Processing Via Loosely Coupled Technique”, Central Laboratory for Agricultural Expert System (CLAES).
[4]Brendon J. Woodford , Nikola K. Kasabov and C. Howard Wearing[1999] Fruit Image Analysis using Wavelets , Proceedings of the ICONIP/ANZIIS/ANNES.
[5]Prof. Sanjay B. Dhaygude and Mr. Nitin P. Kumbhar “Agricultural Plant Leaf Detection Using Image Processing” International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering Vol. 2, Issue 1, January 2013. ISSN: 2278 – 8875
[6]M. S. Prasad Babu and B. Srinivasa Rao “Leaves Recognition Using Back Propagation Neural Network Advice For Pest and Disease Control On Crops”, IndiaKisan.Net: Expert Advissory System.
[7]Santanu Phadikar & Jaya Sil “Rice Disease Identification Using Pattern Recognition Techniques”, Proceedings of 11th International Conference on Computer and Information Technology (ICCIT 2008) 25-27 December, 2008, Khulna, Bangladesh
[8]Vijai Singh and A. K. Misra in the paper “Detection of plant leaf disease using image segmentation and soft computing technique”. INFORMATION PROCESSING IN AGRICULTURE 4 (2017) 41–49.
[9]A.Meunkaewjinda, P.Kumsawat, K.Attakitmongcol and A.Srikaew “Grape leaf disease detection from color imagery system using hybrid intelligent system”. Proceedings of ECTICON, 2008, IEEE, PP-513-516.
[10]Alexandre A. Bernardes, Jonathan G. Rogeri, Roberta B. Oliveira, Norian Marranghello, Aledir S. Pereira, Alex F. Araujo and Joao Manuel R. S. Tavares. “Identification of Foliar Diseases in Cotton Crop”. J. M. R. S. Tavares and R. M. Natal Jorge (eds.), Topics in Medical Image Processing and Computational Vision, Lecture Notes in Computational Vision and Biomechanics 8, DOI: 10.1007/978-94-007-0726-9_4, 1 Springer Science Business Media Dordrecht 2013. pp 67-85
[11]Xu Pengyun& Li Jigang [2009] Computer assistance image processing spores counting, 2009 International Asia Conference on Informatics in Control, Automation and Robotics, IEEE computer society, pp-203-206
[12]Qing Yao, Zexin Guan, Yingfeng Zhou, Jian Tang, Yang Hu, Baojun Yang “Application of support vector machine for detecting rice diseases using shape and color texture features”, 2009 International Conference on Engineering Computation. IEEE computer society, pp79-83
[13]Di Cui, Qin Zhang , Minzan Li, Youfu Zhao ,Glen L. Hartman “Detection of soybean rust using a multispectral image sensor”, Springer Science Business Media, LLC 2009. Sens. & Instrument. Food Qual. (2009) 3:49–56
[14]Xinhong Zhang & Fan Zhang “Images Features Extraction of Tobacco Leaves”. 2008 Congress on Image and Signal Processing, IEEE computer society, pp-773776.
[15]Chaudhary Piyush et al. “Color transform based approach for disease spot detection on plant leaf.Int Comput Sci Telecommun 2012;3(6)
[16]Jayamala K. Patil, Raj Kumar “Advances in image processing for detection of plant diseases”. Journal of Advanced Bioinformatics Applications and Research ISSN 0976-2604 Vol 2, Issue 2, June-2011, pp- 135-141
[17]R.C. Barik, R. Mishra “Comparative Analogy on Classification and Clustering of Genomic Signal by a Novel Factor Analysis and F-Score Method” S.S. Dash et al. (eds.), Artificial Intelligence and Evolutionary Computations in Engineering Systems, Advances in Intelligent Systems and Computing, Springer, India pp399-409.
[18]Achanta R., Estrada F., Wils P., Susstrunk S. (2008) Salient Region Detection and Segmentation. In: Gasteratos A., Vincze M., Tsotsos J.K. (Eds) Computer Vision Systems. ICVS 2008. Lecture Notes in Computer Science, vol 5008. Springer, Berlin, Heidelberg
[19]Girish N. Chaple, R. D. Daruwala, Manoj S. Gofane “Comparisons of Robert, Prewitt, Sobel operator based edge detection methods for real time uses on FPGA”, IEEE Conference (ICTSD-2015), Feb. 04 – 06, 2015, Mumbai, India.