Implementation of Deep Dictionary Learning and Coding Network for Plant Disease Detection in Agricultural Field

Authors

  • Snehal A. Lale  PG Scholar, Department of Computer Science of Engineering, Sipna COET Amravati, Maharashtra, India
  • Dr. V. K. Shandilya  Professor and Head, Department of Computer Science of Engineering, Sipna COET Amravati, Maharashtra, India

DOI:

https://doi.org//10.32628/CSEIT2173116

Keywords:

DDLCN, deep learning, technique, Network, Sparse representation

Abstract

A web based online application is built to detect the diseases present on plant leaves. This will help farmer/end user to find out which diseases are present on that leaves. In older times, this task requires much time & resources to do the detection. A approach has of DDLCN has been taken in this project which will help to find out the best match features. In this approach. I have taken up to 3 layers of DDLCN which will filter the most match features of the diseases present on plant leaves. The proposed DDLCN combines the two things that is deep learning & dictionary learning. Deep learning which the branch of AI. It has a structures inspired by the human brain. It has the artificial neural networks which helps to train the data. Now taking about the dictionary learning which has a literal meaning having large number of data set. Dictionary learning is also called as sparse representation which will help to arrange the data in proper manner and without wasting the storage. Because it will only count the non zeros numbers present in the sparse matrix.

References

  1. Dhiman Mondal, Dipak Kumar Kole, Aruna Chakraborty, D. Dutta Majumder(2015) “Detection and Classification Technique of Yellow Vein Mosaic Virus Disease in Okra Leaf Images using Leaf Vein Extraction and Naive Bayesian Classifier”, International Conference on Soft Computing Techniques and Implementations- (ICSCTI) Department of ECE, FET, MRIU, Faridabad, India, Oct 8- 10, 2015.
  2. Pranjali B. Padol, Prof. Anjila Yadav (2016), “SVM Classifier Based Grape Leaf Disease Detection” Conference on Advance n Signal Processing (CAPs) Cummins College Of Engineering for Woman Pune, June 9-
  3. Zarreen Naowal Reza, Faiza Nuzhat, Nuzhat Ashraf Mahsa, Md.Haider Ali(2016) “Detecting jute plant disease using image processing and machine learning” 3rd International Conference on Electrical Engineering and Information Communication Technology (ICEEICT).
  4. Tejoindhi M.R, Nanjesh B.R, JagadeeshGujanuru Math, AshwinGeetD'sa(2016) “Plant Disease Analysis using Histogram Matching Based on Bhattacharya’s Distance Calculation” International Conference on Electrical, Electronic and Optimization Technique (ICEEOT)
  5. M S Arya, K Anjali, Divya Unni“Detection of unhealthy plant leaves using image processing and genetic algorithm with Arduino” (2018) International Conference on Power, Signals, Control, And Computation (EPSCICON).
  6. Hao Tang, Hong Liu ,Wei Xiao and Nicu sebe . “When Dictionary Learning Meets Deep Learning: Deep Dictionary Learning And Coding Network for Image Recognition with Limited Data”(2020). IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS
  7. Shima Ramesh, Mr. Ramachandra Hebbar, Niveditha M, Pooja R,Prasad Bhat N, Shashank N , Mr. P V Vinod, “Plant Disease Detection using Machine Learning” , 2018 International Conference on Design Innovations for 3Cs Compute Communicate Control. Conference Paper · April 2018.
  8. Kranti Tambe, Dakshata Lohakare , Manjusha Shinde, Prof. Meghana M. Deshpande, “Detection of Plant Leaf Disease Using Machine Learning” International Research Journal of Modernization in Engineering Technology & Science, Volume 02/Issue:07/July 2020
  9. Sergio Matiz and Kenneth E. Barner, “Label Consistent Recursive Least Square Dictionary Learning For Image Classification” National Science Foundation 2016 IEEE.
  10. Jing Ling, Zhenzhong Chen, Feng Wu, “Class-Oriented Discriminative Dictionary Learning for Image Classification” IEEE Transactions on Circuits and Systems for Video Technology.
  11. Dhaygude Sanjay B, Kumbhar Nitin P. Agricultural plant leafdisease detection using image processing. Int J Adv Res ElectrElectron Instrum Eng 2013;2(1).
  12. Arivazhagan S, Newlin Shebiah R, Ananthi S, Vishnu VarthiniS. Detection of unhealthy region of plant leaves andclassification of plant leaf diseases using texture features.Agric Eng Int CIGR 2013;15(1):211–7.
  13. Kulkarni Anand H, Ashwin Patil RK. Applying imageprocessing technique to detect plant diseases. Int J Mod EngRes 2012;2(5):3661–4.
  14. Yuhui Quan, Yong Xu, Yuping Sun ,Yan Huang and Hui Ji, “Sparse Coding for Classification via Discrimination Ensemble”Computer Vision Foundation IEEE Xplore.

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Published

2021-06-30

Issue

Section

Research Articles

How to Cite

[1]
Snehal A. Lale, Dr. V. K. Shandilya, " Implementation of Deep Dictionary Learning and Coding Network for Plant Disease Detection in Agricultural Field, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 7, Issue 3, pp.547-553, May-June-2021. Available at doi : https://doi.org/10.32628/CSEIT2173116