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Plant Disease Idedntification Using Machine Learning and Image Processing


Affiliations
1 Department of Computer Science and Engineering, Parul University, India
2 Department of Computer Engineering, Charotar University of Science and Technology, India
3 Department of Computer Science and Engineering, Indus University, India
     

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The primary objective of this study is to investigate the detection and diagnosis of plant diseases using Deep Learning and Digital Image Processing. Previous research has primarily focused on single plant disease scenarios using publicly available datasets, often overlooking the image preprocessing phase. In this study, we propose a model that works with 10 different plants and utilizes approximately 50,000 images for training and testing. We classified 36 distinct classes into healthy or infected types based on disease labels. To enhance the accuracy of disease detection, we recommend employing image processing techniques and considering multiple plant scenarios. We utilized a dual-layer Convolutional Neural Network (CNN) for the publicly available dataset and supplemented it with real-time images captured from various farms in Village Rancharda Near Ahmedabad, Gujarat, India (PIN: 38255). Our research introduces several novel elements in the preprocessing steps. We employed HSV segmentation, flood fills segmentation, and a proposed deep learning model for image segmentation. Additionally, we standardized the resolution of all images to ensure uniformity. These preprocessing techniques refine the image data required for accurate classification and enhance the visibility of diseased portions. For image processing, we employed a sliding window mean average deviation technique and stacked the processed images onto the original image, resulting in six-channel images. Our proposed model demonstrates improved performance on the validation data, achieving an accuracy of up to 97.95%. Furthermore, we transformed this model into a TFLite model, which can be easily integrated into client applications without the need for a server. In our case, we implemented the model on an Android platform. These findings indicate the potential of our proposed model to significantly enhance the detection and diagnosis of plant diseases in real-world scenarios.

Keywords

Convolutional Neural Network, Image Segmentation, Dual Layered, Sliding Window.
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  • Pierre-Olivier Gourinchas, “War Dims Global Economic Outlook as Inflation Accelerates”, Available at: https://blogs.imf.org/2022/04/19/war-dims-global-economic-outlook-as-inflation-accelerates/, Accessed at 2022.
  • OEC Wheat in Ukraine, Available at: https://oec.world/en/profile/bilateral-product/wheat/reporter/ukr/, Accessed at 2020.
  • World Bank Group, “Commodity Markets Outlook: The Impact of the War in Ukraine on Commodity Markets”, Available at https://www.worldbank.org/en/news/press-release/2022/04/26/food-and-energy-price-shocks-from-ukraine-war, Accessed at 2022.
  • Plant Disease: Pathogens and Cycles, Available at https://cropwatch.unl.edu/soybean-management/plant-disease, Accessed at 2022.
  • Plant Disease Epidemiology: Temporal Aspects, Available at https://www.apsnet.org/edcenter/disimpactmngmnt/topc/EpidemiologyTemporal/Pages/Disease%20Progress.aspx, Accessed at 2021.
  • O.C. Maloy, “Plant Disease Management”, The Plant Health Instructor, Vol. 25, pp. 1-13, 2005.
  • Ankit Dubey and M. Shanmugasundaram, “Agricultural Plant Disease Detection and Identification”, International Journal of Electrical Engineering and Technology, Vol. 11, No. 3, pp. 354-363, 2020.
  • H. Durmuş and M. Kirci, “Disease Detection on the Leaves of the Tomato Plants by using Deep Learning”, Proceedings of International Conference on Agro-Geoinformatics, pp. 1-5, 2016.

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  • Plant Disease Idedntification Using Machine Learning and Image Processing

Abstract Views: 29  |  PDF Views: 1

Authors

Sejal Thakkar
Department of Computer Science and Engineering, Parul University, India
Chirag Patel
Department of Computer Engineering, Charotar University of Science and Technology, India
Ved Suthar
Department of Computer Science and Engineering, Indus University, India

Abstract


The primary objective of this study is to investigate the detection and diagnosis of plant diseases using Deep Learning and Digital Image Processing. Previous research has primarily focused on single plant disease scenarios using publicly available datasets, often overlooking the image preprocessing phase. In this study, we propose a model that works with 10 different plants and utilizes approximately 50,000 images for training and testing. We classified 36 distinct classes into healthy or infected types based on disease labels. To enhance the accuracy of disease detection, we recommend employing image processing techniques and considering multiple plant scenarios. We utilized a dual-layer Convolutional Neural Network (CNN) for the publicly available dataset and supplemented it with real-time images captured from various farms in Village Rancharda Near Ahmedabad, Gujarat, India (PIN: 38255). Our research introduces several novel elements in the preprocessing steps. We employed HSV segmentation, flood fills segmentation, and a proposed deep learning model for image segmentation. Additionally, we standardized the resolution of all images to ensure uniformity. These preprocessing techniques refine the image data required for accurate classification and enhance the visibility of diseased portions. For image processing, we employed a sliding window mean average deviation technique and stacked the processed images onto the original image, resulting in six-channel images. Our proposed model demonstrates improved performance on the validation data, achieving an accuracy of up to 97.95%. Furthermore, we transformed this model into a TFLite model, which can be easily integrated into client applications without the need for a server. In our case, we implemented the model on an Android platform. These findings indicate the potential of our proposed model to significantly enhance the detection and diagnosis of plant diseases in real-world scenarios.

Keywords


Convolutional Neural Network, Image Segmentation, Dual Layered, Sliding Window.

References