Deep-millet: a deep learning model for pearl millet disease identification to envisage precision agriculture

维持 深度学习 卷积神经网络 鉴定(生物学) 人工智能 农业工程 计算机科学 农业 机器学习 生物 工程类 生态学 植物
作者
Johnson Iruthayasamy,X. Anitha Mary,A. Peniel Winifred Raj,John Chalmers,M. Karthikeyan,J. Andrew
出处
期刊:Environmental research communications [IOP Publishing]
卷期号:6 (10): 105031-105031 被引量:5
标识
DOI:10.1088/2515-7620/ad8415
摘要

Abstract Plants are integral to human sustenance, serving as fundamental sources of sustenance, materials, and energy, crucial for economic prosperity. However, their productivity and yield are increasingly threatened by pests and diseases, exacerbated by shifting climatic conditions. Pearl millet, a vital crop in Africa and Asia, is particularly susceptible to a range of diseases including downy mildew, rust, ergot, smut, and blast, posing significant risks to crop yield and quality. Timely and accurate disease identification is paramount for effective management strategies. Traditional methods of disease detection relying on visual identification are laborious, costly, and often require specialized expertise, presenting formidable challenges for farmers. In this study, we propose a novel mobile application integrating a robust Deep Learning (DL) model for the automated identification of pearl millet leaf diseases, employing advanced computer vision techniques. A Convolutional Neural Network (CNN) architecture, named Deep Millet, was trained on a comprehensive dataset comprising 3441 field images depicting pearl millet leaves in both healthy and diseased states. It consists of fewer but more effective layers, which are optimized to extract the most pertinent features from the RGB images Comparative analysis against pre-trained models, including AlexNet, ResNet50, InceptionV3, Xception, NasNet mobile, VGG16, and VGG19, was conducted to evaluate the performance of the proposed model. Results demonstrate that Deep Millet achieved superior accuracy, completing training in a mere 240 s and yielding an impressive accuracy rating of 98.86%, surpassing current state-of-the-art models.
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