AI-IoT-Enabled Crop Monitoring Through Crop Stage and Leaf Disease Identification Using PECFIS and DGBESCNN
Dr.R.M. JagadishProfessor, Department of Computer Science and Engineering (Data Science), Ballari Institute of Technology & Management, Affiliated to Visvesvaraya Technological University, Belagavi, Karnataka, India. rm.jagadish@gmail.com0000-0001-9086-7377
Dr. Chin-Shiuh ShiehProfessor, Department of Electronic Engineering, Research Institute of IoT Cybersecurity, National Kaohsiung University of Science and Technology, Kaohsiung,Yanchao, Taiwan. csshieh@nkust.edu.tw0000-0003-3187-458X
Dr. Mohammed Ali HussainProfessor and Dean, Research & Development, Department of Computer Science and Engineering, Sreenidhi Institute of Science and Technology, Affiliated to Jawaharlal Nehru Technological University, Hyderabad, India. alihussain.phd@gmail.com0000-0002-0945-6798
D.C. SubhashreeAssistant Professor, Department of MCA, Ballari Institute of Technology & Management, Affiliated to Visvesvaraya Technological University, Belagavi, Karnataka, India. shubha.rmjssp@gmail.com0009-0008-4430-116X
Keywords: Internet of Things (Iot), Artificial Intelligence (AI), Crop Stage, Nutrient Deficiency, Leaf Disease, Crop Monitoring, HSV Color Intensity.
Abstract
The aspect of crop monitoring takes into consideration the timely detection of crop stages, leaf disorders, and deficiencies to enhance crop yield and decrease losses in agriculture. However, most of the current methods are limited to either disease detection or nutrient evaluation and do not examine the conditions of crops at various stages of growth, even though several AI -IoT-based solutions have been suggested to be applied to crop health monitoring. In addition, the estimation of the severity of the diseases is neglected, and this restricts decision-making in favor of the farmers. To address these constraints, the paper presents a Parametrized Elliptical Cauchy Fuzzy Inference System (PECFIS) combined with a Deep Glorot Bessel Elliott Softplus Convolutional Neural Network (DGBESCNN), proposed as an AI-based solution for crop monitoring and IoT support. The IoT devices in the form of drones are used to get real-time field images, and they are preprocessed in terms of noise reduction, contrast enhancement by LHM-CLAHE, conversion to HSV color space, and feature discrimination by vegetation indexing, as well as C3MEK-Means. PECFIS is used to determine eight key stages of rice growth and the severity of leaf diseases, whereas DGBESCNN provides proper classification of leaf diseases and nutrient deficiencies at each growth stage. The evaluation of the proposed framework was conducted using publicly available datasets on rice leaf disease and nutrient deficiency. The results of the experiments show that the system achieves high classification performance, with an accuracy of 98.82, a precision of 98.65, a recall of 98.73, an F1-score of 98.59, and low error rates (MSE = 0.0135, RMSE = 0.116). The findings show that the developed AI-IoT system is superior to available approaches and can serve as a dependable, real-time, and scalable solution in precision agriculture and intelligent crop monitoring.