Plant Health Detection System using Deep-Learning

Author:

Er. Ankit ,Rahul Sharma ,Rahul Yadav ,Reddy Vuribindi Sai Charan Reddy,Kumar Rakesh Kumar,Chaudhary Vishal Chaudhary,Chaudhary Anil Kumar

Abstract

Food security, environmental stability, and agricultural output are all significantly impacted by plant health. Expert visual inspection is a common component of traditional plant health assessment techniques, although it can be laborious, subjective, and prone to human mistake. Using advances in computer vision and machine learning, there has been an increasing interest in applying deep learning techniques for automated plant health diagnosis in recent years. This study provides a thorough analysis of deep learning- based plant health detection systems, covering a wide range of topics including model architectures, training methodologies, dataset collecting and preprocessing, and performance evaluation measures. The field's main obstacles and prospects are noted, such as the lack of datasets, the inability of the model to generalize to many plant species and environmental circumstances, and the inability of the model to scale to large-scale agricultural settings.

Publisher

Technoscience Academy

Reference10 articles.

1. S. D. Khirade and A. B. Patil, "Plant Disease Detection Using Image Processing," 2015 International Conference on Computing Communication Control and Automation, Pune, India, 2015, pp. 768-771, doi: 10.1109/ICCUBEA.2015.153.

2. S. H. Abbas, S. Vashisht, G. Bhardwaj, R. Rawat, A. Shrivastava and K. Rani, "An Advanced Cloud- Based Plant Health Detection System Based on Deep Learning." 2022 5th International Conference on Contemporary Computing and Informatics (IC3I), Uttar Pradesh, India, 2022, pp. 1357-1362, doi:10.1109/IC3156241, 2022.10072786.

3. Kumar, L. Nelson and V. S. Venu. "Optimising Corn Leaf Disease Classification with MobileNet and Oversampling." 2024 2nd International Conference on Intelligent Data Communication Technologies and Internet of Things (IDCIoT). Bengaluru, 2024. India. pp 1649-1654, doi: 10.1109/IDCIoT59759.2024.10467581

4. The MobileNet model developed by Kamal et al. (2019) with deep separable convolution achieved 97.65% categorization accuracy on the PlantVillage dataset. A customised CNN model has been suggested by Chohan et al. (2020) for the classification of illnesses in 15 distinct plants The InceptionResNet model was suggested by Hassan and Maji (2018) for the categorisation of 15 different plant disease types.

5. Renugambal. K. Senthilraja. B. 2015. Application of Image Processing Techniques in Plant Disease Recognition, INTERNATIONAL JOURNAL OF ENGINEERING RESEARCH & TECHNOLOGY (IJERT) Volume 04. Issue 03 (March 2015), http:/dx.doi.org/10 17577/IJERTV415030829

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