Authors:
Ms. Sri Silpa Padmanabhuni,Pradeepini Gera,DOI NO:
https://doi.org/10.26782/jmcms.2020.05.00002Keywords:
Computer Vision,Deep Learning,Segmentation,Classification,Abstract
Agriculture plays an important role in the Indian economy, therefore early prediction of plant diseases will help in increasing the productivity of crops thereby contributing to the economy’s growth. However, Manual identification of diseases in plants at every stage is very difficult since it involves huge manpower and requires extensive knowledge about plants. Multi disease patterns and pest identification can be automated using computer vision and deep learning techniques and by observing the controlled environmental parameters. Using, Internet of things the model can continuously monitor the temperature, humidity and water levels.Refference:
I. Humeau-Heurtier, “Texture Feature Extraction Methods: A Survey,” in IEEE Access, vol. 7, pp. 8975-9000, 2019. doi: 10.1109/ACCESS.2018.2890743.
II. AIP Conference Proceedings 2095, 030018 (2019);https://doi.org/10.1063/1.5097529. Published Online:09 April 2019.
III. Aitor Gutierrez, Ander Ansuategi, Loreto Susperregi, Carlos Tubío, Ivan Rankić, and Libor Lenža, “A Benchmarking of Learning Strategies for Pest Detection and Identification on Tomato Plants for Autonomous Scouting Robots Using Internal Databases,” Journal of Sensors, vol. 2019, Article ID 5219471, 15 pages, 2019.
IV. Akram, Tallha&Naqvi, Syed & Kamran, Muhammad & Kamran, Muhammad. (2017). Towards real-time crops surveillance for disease classification: exploiting parallelism in computer vision. Computers & Electrical Engineering. 59. 15-26. 10.1016/j.compeleceng.2017.02.020.
V. Arsenovic, M.; Karanovic, M.; Sladojevic, S.; Anderla, A.; Stefanovic, D. Solving Current Limitations of Deep Learning Based Approaches for Plant Disease Detection. Symmetry 2019, 11, 939.
VI. Azad, Dr&Hasan, Md& K, Mohammed. (2017). Color Image Processing on Digital Image. International Journal of New Technology and Research. 3. 56-62.
VII. Banchhor, C. &Srinivasu, N. 2018, “FCNB: Fuzzy Correlative Naive Bayes Classifier with MapReduce Framework for Big Data Classification”, Journal of Intelligent Systems.
VIII. Baranwal, Saraansh&Khandelwal, Siddhant&Arora, Anuja. (2019). Deep Learning Convolutional Neural Network for Apple Leaves Disease Detection. SSRN Electronic Journal. 10.2139/ssrn.3351641.
IX. B. Dhruv, N. Mittal and M. Modi, “Analysis of different filters for noise reduction in images,” 2017 Recent Developments in Control, Automation & Power Engineering (RDCAPE), Noida, 2017, pp. 410-415.
X. BOMMADEVARA, H.S.A., SOWMYA, Y. and PRADEEPINI, G., 2019. Heart disease prediction using machine learning algorithms. International Journal of Innovative Technology and Exploring Engineering, 8(5), pp. 270-272.
XI. Chandana, K., Prasanth, Y. &Prabhu Das, J. 2016, “A decision support system for predicting diabetic retinopathy using neural networks”, Journal of Theoretical and Applied Information Technology, vol. 88, no. 3, pp. 598-606.
XII. Chen, Jiansheng&Bai, Gaocheng& Liang, Shaoheng& Li, Zhengqin. (2016). Automatic Image Cropping: A Computational Complexity Study. 507-515. 10.1109/CVPR.2016.61.
XIII. Chouhan, Siddharth&Koul, Ajay & Singh, Dr. Uday& Jain, Sanjeev. (2018). Bacterial foraging optimization based Radial Basis Function Neural Network (BRBFNN) for identification and classification of plant leaf diseases: An automatic approach towards Plant Pathology. IEEE Aceess.
XIV. Chouhan, Siddharth& Singh, Dr. Uday& Jain, Sanjeev. (2019). Applications of Computer Vision in Plant Pathology: A Survey. Archives of Computational Methods in Engineering. 10.1007/s11831-019-09324-0.
XV. Dey, Abhishek&Bhoumik, Debasmita&Dey, Kashi. (2019). Automatic Multi-class Classification of Beetle Pest Using Statistical Feature Extraction and Support Vector Machine: Proceedings of IEMIS 2018, Volume 2. 10.1007/978-981-13-1498-8_47.
XVI. Ferreira, Alessandro &Freitas, Daniel & Silva, Gercina&Pistori, Hemerson&Folhes, Marcelo. (2017). Weed detection in soybean crops using ConvNets. Computers and Electronics in Agriculture. 143. 314-324. 10.1016/j.compag.2017.10.027.
XVII. Hassanien, Aboul Ella &Gaber, Tarek&Mokhtar, Usama&Hefny, Hesham. (2017). An improved moth flame optimization algorithm based on rough sets for tomato diseases detection. Computers and Electronics in Agriculture. 136. 86-96. 10.1016/j.compag.2017.02.026.
XVIII. Hossain, Eftekhar&Hossain, Md&Rahaman, Mohammad. (2019). A Color and Texture Based Approach for the Detection and Classification of Plant Leaf Disease Using KNN Classifier. 1-6. 10.1109/ECACE.2019.8679247.
XIX. I. M. Krishna, C. Narasimham and T. B. Reddy, “Image super resolution and contrast enhancement using curvlet’s with cycle spinning,” 2016 International Conference on Communication and Electronics Systems (ICCES), Coimbatore, 2016, pp. 1-6. doi: 10.1109/CESYS.2016.7889926.
XX. I.Murali Krishna, Dr. ChallaNarsimham and Dr.A.S.N. Chakravarthy Published a paper on ” A Novel Feature Selection based Classification Model for Disease Severity Prediction on Alzheimer’s Database”,2018,JARDCS,Volume-10,Issue-4 Page no: 245-255 ISSN: 1943023X.
XXI. Jha, Kirtan&Doshi, Aalap& Patel, Poojan& Shah, Manan. (2019). A comprehensive review on automation in agriculture using artificial intelligence. Artificial Intelligence in Agriculture. 2. 10.1016/j.aiia.2019.05.004.
XXII. Kaur, Sukhvir&Pandey, Shreelekha&Goel, Shivani. (2018). Plants Disease Identification and Classification Through Leaf Images: A Survey. Archives of Computational Methods in Engineering. 26. 10.1007/s11831-018-9255-6.
XXIII. Kiani, Ehsan&Mamedov, Tofik. (2017). Identification of plant disease infection using soft-computing: Application to modern botany. Procedia Computer Science. 120. 893-900. 10.1016/j.procs.2017.11.323.
XXIV. Kishore, P.V.V., Kumar, K.V.V., Kiran Kumar, E., Sastry, A.S.C.S., TejaKiran, M., Anil Kumar, D. & Prasad, M.V.D. 2018, “Indian Classical Dance Action Identification and Classification with Convolutional Neural Networks”, Advances in Multimedia, vol. 2018.
XXV. Konstantinos P. Ferentinos, Deep learning models for plant disease detection and diagnosis, Computers and Electronics in Agriculture, Volume 145, 2018, Pages 311-318, ISSN 0168-1699, https://doi.org/10.1016/j.compag.2018.01.009.
XXVI. Kour, Vippon&Arora, Sakshi. (2019). Fruit Disease Detection Using Rule-Based Classification: Proceedings of ICSICCS-2018. 10.1007/978-981-13-2414-7_28.
XXVII. Lu, Yang & Yi, Shujuan&Zeng, Nianyin& Liu, Yurong& Zhang, Yong. (2017). Identification of Rice Diseases using Deep Convolutional Neural Networks. Neurocomputing. 267. 10.1016/j.neucom.2017.06.023.
XXVIII. Ma, Juncheng& Du, Keming&Zheng, Feixiang& Zhang, Lingxian& Sun, Zhongfu. (2018). A Segmentation Method for Processing Greenhouse Vegetable Foliar Disease Symptom Images. Information Processing in Agriculture. 6. 10.1016/j.inpa.2018.08.010.
XXIX. Mondal, Dhiman&Kole, Dipak& Roy, Kusal. (2017). Gradation of yellow mosaic virus disease of okra and bitter gourd based on entropy based binning and Naive Bayes classifier after identification of leaves. Computers and Electronics in Agriculture. 142. 10.1016/j.compag.2017.11.024.
XXX. M. Sardogan, A. Tuncer and Y. Ozen, “Plant Leaf Disease Detection and Classification Based on CNN with LVQ Algorithm,” 2018 3rd International Conference on Computer Science and Engineering (UBMK), Sarajevo, 2018, pp. 382-385. doi: 10.1109/UBMK.2018.8566635.
XXXI. Narmadha, R. &Arulvadivu, G.. (2017). Detection and measurement of paddy leaf disease symptoms using image processing. 1-4. 10.1109/ICCCI.2017.8117730.
XXXII. Narottambhai, Mitisha&Tandel, Purvi. (2016). A Survey on Feature Extraction Techniques for Shape based Object Recognition. International Journal of Computer Applications.137.16-20.10.5120/ijca2016908782.
XXXIII. PadmajaGrandhe, Dr. E. Sreenivasa Reddy, Dr.D.Vasumathi . (2016). An Adaptive Cluster Based Image Search And Retrieve For Interactive Roi To Mri Image Filtering, Segmentation, And Registration (Vol. 94,. No.1). Journal of Theoretical and Applied Information Technology.
XXXIV. Pantazi, X. E., Moshou, D., &Tamouridou, A. A. (2019). Automated leaf disease detection in different crop species through image features analysis and One Class Classifiers. Computers and Electronics in Agriculture, 156, 96–104.
XXXV. Pearline, Anubha& Kumar, Sathiesh&Harini, S.. (2019). A study on plant recognition using conventional image processing and deep learning approaches. Journal of Intelligent & Fuzzy Systems. 36. 1-8. 10.3233/JIFS-169911.
XXXVI. Rahman, Ziaur& PU, Yi-Fei&Aamir, Muhammad &Ullah, Farhan. (2018). A framework for fast automatic image cropping based on deep saliency map detection and gaussian filter. International Journal of Computers and Applications. 1-11. 10.1080/1206212X.2017.1422358.
XXXVII. R. Gandhi, S. Nimbalkar, N. Yelamanchili and S. Ponkshe, “Plant disease detection using CNNs and GANs as an augmentative approach,” 2018 IEEE International Conference on Innovative Research and Development (ICIRD), Bangkok, 2018, pp. 1-5. doi: 10.1109/ICIRD.2018.8376321.
XXXVIII. Sandhu, Gittaly& Kumar, Vinay& Joshi, Hemdutt. (2017). Study of digital image processing techniques for leaf disease detection and classification. Multimedia Tools and Applications. 1-50. 10.1007/s11042-017-54458.
XXXIX. Shanwen Zhang, Wenzhun Huang, Chuanlei Zhang, Three-channel convolutional neural networks for vegetable leaf disease recognition, Cognitive Systems Research, Volume 53, 2019, Pages 31-41, ISSN 1389-0417, https://doi.org/10.1016/j.cogsys.2018.04.006.
XL. Shuli, Xing & Lee, Marely& Lee, Keun-kwang. (2019). Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network. Sensors. 19. 3195. 10.3390/s19143195.
XLI. Tetila, Everton & Machado, Bruno &Belete, Nícolas Alessandro &Guimaraes, David &Pistori, Hemerson. (2017). Identification of Soybean Foliar Diseases Using Unmanned Aerial Vehicle Images. IEEE Geoscience and Remote Sensing Letters. PP. 1-5. 10.1109/LGRS.2017.2743715.
XLII. Thangaiyan, Jayasankar. (2019). AN IDENTIFICATION OF CROP DISEASE USING IMAGE SEGMENTATION. 10.13040/IJPSR.0975-8232.10(3).1054-64.
XLIII. Yuheng, Song &Hao, Yan. (2017). Image Segmentation Algorithms Overview.
View Download