用于精准农业病虫害即时检测的高性能深度学习。

IF 3.8 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Muhammad Bilal, Asghar Ali Shah, Sagheer Abbas, Muhammad Adnan Khan
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引用次数: 0

摘要

全球农业生产力不断受到病虫害的攻击,造成大量作物损失和粮食不安全。人工侦察、专家评估和基于实验室的显微镜检查都是耗时的,容易出现人为错误,并且是劳动密集型的。虽然传统的机器学习分类器,如支持向量机、随机森林和决策树提供了更好的准确性,但它们不能在现场部署。本文提出了一种基于MobileNetV2和EfficientNetB0的高性能深度学习融合模型,用于精准农业病虫害的实时检测。该模型在CCMT数据集(腰果、木薯、玉米和番茄等22类作物的24,881张原始图像和102,976张增强图像)上进行训练,总体准确率为89.5%,精密度和召回率为95.68%,f1得分为95.67%,ROC-AUC为0.95。为了支持边缘环境中的部署,采用了量化、剪枝和知识蒸馏等方法,将每张图像的推理时间减少到10毫秒以下。建议的模型优于基线CNN模型,包括ResNet-50 (81.25%), VGG-16(83.10%)和其他边缘轻量级模型(83.00%)。优化后的模型可以在智能手机、树莓派和农场无人机等低功耗设备上运行,无需云计算,可以在遥远的领域进行实时检测。使用无人机的现场试验验证了快速图像捕获和推理性能。本研究为可持续农业和支持全球粮食安全提供了一个可扩展、具有成本效益和准确的病虫害早期检测框架。该模型已经成功地在Android应用程序和树莓派系统中使用TensorFlow Lite实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

High-Performance Deep Learning for Instant Pest and Disease Detection in Precision Agriculture

High-Performance Deep Learning for Instant Pest and Disease Detection in Precision Agriculture

Global farm productivity is constantly under attack from pests and diseases, resulting in massive crop loss and food insecurity. Manual scouting, expert estimation, and laboratory-based microscopy are time-consuming, prone to human error, and labor-intensive. Although traditional machine learning classifiers such as SVM, Random Forest, and Decision Trees provide better accuracy, they are not field deployable. This article presents a high-performance deep learning fusion model using MobileNetV2 and EfficientNetB0 for real-time detection of pests and diseases in precision farming. The model, trained on the CCMT dataset (24,881 original and 102,976 augmented images in 22 classes of cashew, cassava, maize, and tomato crops), attained a global accuracy of 89.5%, precision and recall of 95.68%, F1-score of 95.67%, and ROC-AUC of 0.95. For supporting deployment in edge environments, methods such as quantization, pruning, and knowledge distillation were employed to decrease inference time to below 10 ms per image. The suggested model is superior to baseline CNN models, including ResNet-50 (81.25%), VGG-16 (83.10%), and other edge lightweight models (83.00%). The optimized model is run on low-power devices such as smartphones, Raspberry Pi, and farm drones without the need for cloud computing, allowing real-time detection in far-off fields. Field trials using drones validated rapid image capture and inference performance. This study delivers a scalable, cost-effective, and accurate early pest and disease detection framework for sustainable agriculture and supporting food security at the global level. The model has been successfully implemented with TensorFlow Lite within Android applications and Raspberry Pi systems.

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来源期刊
Food Science & Nutrition
Food Science & Nutrition Agricultural and Biological Sciences-Food Science
CiteScore
7.40
自引率
5.10%
发文量
434
审稿时长
24 weeks
期刊介绍: Food Science & Nutrition is the peer-reviewed journal for rapid dissemination of research in all areas of food science and nutrition. The Journal will consider submissions of quality papers describing the results of fundamental and applied research related to all aspects of human food and nutrition, as well as interdisciplinary research that spans these two fields.
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