资源高效棉花网络:棉花病虫害分类的轻量级深度学习框架。

IF 4 2区 生物学 Q1 PLANT SCIENCES
Zhengle Wang, Heng-Wei Zhang, Ying-Qiang Dai, Kangning Cui, Haihua Wang, Peng W Chee, Rui-Feng Wang
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引用次数: 0

摘要

棉花是世界上种植最广泛的天然纤维作物,但它极易受到各种病虫害的影响,严重影响产量和质量。为了能够快速准确地诊断棉花病虫害,从而支持制定有效的控制策略并促进遗传育种研究,我们提出了一个轻量级模型,即资源高效棉花网络(rf - cottnet),以及一个包含11种疾病类别的开源图像数据集CCDPHD-11。基于MobileViTv2骨干网,rf - cottnet集成了早期退出机制和量化感知训练(QAT),在不牺牲准确性的情况下提高了部署效率。在CCDPHD-11上的实验结果表明,rf - cottnet的准确率为98.4%,f1分数为98.4%,精密度为98.5%,召回率为98.3%。rf - cottnet仅具有4.9 M个参数,310 M个FLOPs, 3.8 ms的推理时间和仅4.8 MB的存储空间,具有出色的准确性和实时性,非常适合部署在农业边缘设备上,并为现场自动检测棉花病虫害提供强大的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource-Efficient Cotton Network: A Lightweight Deep Learning Framework for Cotton Disease and Pest Classification.

Cotton is the most widely cultivated natural fiber crop worldwide, yet it is highly susceptible to various diseases and pests that significantly compromise both yield and quality. To enable rapid and accurate diagnosis of cotton diseases and pests-thus supporting the development of effective control strategies and facilitating genetic breeding research-we propose a lightweight model, the Resource-efficient Cotton Network (RF-Cott-Net), alongside an open-source image dataset, CCDPHD-11, encompassing 11 disease categories. Built upon the MobileViTv2 backbone, RF-Cott-Net integrates an early exit mechanism and quantization-aware training (QAT) to enhance deployment efficiency without sacrificing accuracy. Experimental results on CCDPHD-11 demonstrate that RF-Cott-Net achieves an accuracy of 98.4%, an F1-score of 98.4%, a precision of 98.5%, and a recall of 98.3%. With only 4.9 M parameters, 310 M FLOPs, an inference time of 3.8 ms, and a storage footprint of just 4.8 MB, RF-Cott-Net delivers outstanding accuracy and real-time performance, making it highly suitable for deployment on agricultural edge devices and providing robust support for in-field automated detection of cotton diseases and pests.

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来源期刊
Plants-Basel
Plants-Basel Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
6.50
自引率
11.10%
发文量
2923
审稿时长
15.4 days
期刊介绍: Plants (ISSN 2223-7747), is an international and multidisciplinary scientific open access journal that covers all key areas of plant science. It publishes review articles, regular research articles, communications, and short notes in the fields of structural, functional and experimental botany. In addition to fundamental disciplines such as morphology, systematics, physiology and ecology of plants, the journal welcomes all types of articles in the field of applied plant science.
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