Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Signal Processing Techniques for Identification of Plant Diseases


Affiliations
1 Department of Electronics and Communication Engineering, Amity University, Lucknow Campus, Lucknow (U.P.), India
     

   Subscribe/Renew Journal


Plant pathology is a vast science with far reaching impact on human civilization. Selfsufficiency in food production is important for overall prosperity of any Modern Economy. Currently with the advance in overall Agricultural/Horticultural sciences, our overall Food production has been good. However, we neglect the often important factor of disease out-breaks which have economically affected the farmers at different instances. Sometimes, few diseases or symptoms are well known to farmers and could be easily diagnosed and in other cases, expert opinion is required, which is often not easily available. With the advent of cloud computing, penetration of mobile phones and availability of high-speed network, it is very easy to implement soft system, which could help our farmers identify different diseases based on image data captured by their mobile phone. To demonstrate the concept in this paper Alternaria Alternata, Anthracnose, Powdery Mildew in different species like Grape, tomato and Jute is considered. We discuss and implement feature extraction module to objectively construct a disease signature/ unique marker that could be used for specific disease identification across species irrespective of Plant type. In line with this strategy, a software architecture for Tele-pathology in plants is structured such that different diseases could be categorized. In a very short period of time, expert knowledge in the field of Plant Pathology could be objectified into easily usable tools and this would complement the already existing classical extension activities.

Keywords

Powdery Mildew, Alternaria Alternata, Anthracnose, Hue Based Segmentation, Image Processing, Feature Extraction, Multi-SVM Classifier.
Subscription Login to verify subscription
User
Notifications
Font Size


  • Al-Hiary, H., Bani-Ahmad, S., Reyalat, M., Braik, M. and AL Rahamneh, Z. (2011). Fast and Accurate Detection and Classification of Plant Diseases. Internat. J. Computer Applications, (0975 – 8887)Volume 17– No.1
  • Arivazhagan, S., Newlin Shebiah, R., Ananthi, S. and Vishnu Varthini, S. (2013). Detection of unhealthy region of plant leaves and classification of plant leaf diseases using texture features. Agric Eng Internat. : CIGR J., 15 (1) : 211–217.
  • Gonzalez, R.C., Woods, R.E., Czitrom, D.J. and Armitage, S. (2007). Digital image processing, 3rd ed. United States: Prentice Hall.
  • Jian Pan, Xinhua Yang, Huafeng Cai and Bingxian Mu (2016). Image noise smoothing using a modified Kalman filter, Neurocomputing, 173 (3) : 1625-1629.
  • Jhuria, Monica, Kumar, Ashwani and Borse, Rushikesh (2013). Image Processing For Smart Farming: Detection Of Disease And Fruit Grading. Proceedings of the IEEE Second International Conference on Image Information Processing, ICIIP-2013
  • Phadikar, Santanu and Sil, Jaya (2008). Rice Disease Identification using Pattern Recognition, Proceedings of 11th International Conference on Computer and Information Technology (ICCIT 25-27 December, 2008, Khulna, Bangladesh.
  • Singh, Gyan Vardhan and Singh, Pooja (2019). Telepathology in plants for Disease Diagnosis in Agriculture: Review and analysis (Submitted for Publication in International Journal of Plant Protection; ISSN : 0974-2670).
  • Zulkifli Bin Husin, Abdul Hallis Bin Abdul Aziz, Ali Yeon Bin Md Shakaff Rohani Binti S Mohamed Farook (2012). Feasibility Study on Plant Chili Disease Detection Using Image Processing Techniques, 2012 Third International Conference on Intelligent Systems Modelling and Simulation.
  • WEBLIOGRAPHY
  • http://www.mathworks.com/ Accessed: Mar. 2, 2016

Abstract Views: 217

PDF Views: 0




  • Signal Processing Techniques for Identification of Plant Diseases

Abstract Views: 217  |  PDF Views: 0

Authors

Gyan Vardhan Singh
Department of Electronics and Communication Engineering, Amity University, Lucknow Campus, Lucknow (U.P.), India
Pooja Singh
Department of Electronics and Communication Engineering, Amity University, Lucknow Campus, Lucknow (U.P.), India

Abstract


Plant pathology is a vast science with far reaching impact on human civilization. Selfsufficiency in food production is important for overall prosperity of any Modern Economy. Currently with the advance in overall Agricultural/Horticultural sciences, our overall Food production has been good. However, we neglect the often important factor of disease out-breaks which have economically affected the farmers at different instances. Sometimes, few diseases or symptoms are well known to farmers and could be easily diagnosed and in other cases, expert opinion is required, which is often not easily available. With the advent of cloud computing, penetration of mobile phones and availability of high-speed network, it is very easy to implement soft system, which could help our farmers identify different diseases based on image data captured by their mobile phone. To demonstrate the concept in this paper Alternaria Alternata, Anthracnose, Powdery Mildew in different species like Grape, tomato and Jute is considered. We discuss and implement feature extraction module to objectively construct a disease signature/ unique marker that could be used for specific disease identification across species irrespective of Plant type. In line with this strategy, a software architecture for Tele-pathology in plants is structured such that different diseases could be categorized. In a very short period of time, expert knowledge in the field of Plant Pathology could be objectified into easily usable tools and this would complement the already existing classical extension activities.

Keywords


Powdery Mildew, Alternaria Alternata, Anthracnose, Hue Based Segmentation, Image Processing, Feature Extraction, Multi-SVM Classifier.

References