基于CR-YOLO轻量化模型的月季叶病虫害鉴定方法研究

IF 4.4 2区 农林科学 Q1 PLANT SCIENCES
Liangchen Sun, Xikun Yan, Yubin Lan, Lening Jiao, Jiatian Liu, Changfeng Shan, Huizheng Wang
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引用次数: 0

摘要

准确、快速地检测月季叶片病虫害对园艺管理和产品质量至关重要。尽管检测方法取得了进步,但复杂的背景、多变的光照条件和自然环境中微妙的疾病表现等挑战往往导致检测精度降低和计算成本高。传统的检测模型通常需要大量的计算资源,限制了它们在现实世界园艺环境中的实际适用性。为了应对这些挑战,我们推出了CR-YOLO (Chinese Rose YOLOv7-tiny),这是一种基于YOLOv7-tiny的增强轻量级检测框架。在骨干网中将标准卷积替换为分布式偏移卷积,在保持特征提取能力的同时降低计算复杂度,集成SimAM(无参数注意)增强特征判别,采用Focal-EIOU损失加速收敛。在自然条件下收集的月季叶虫综合数据集上的实验结果表明,CR-YOLO获得了令人印象深刻的指标,precision、recall、mAP0.5和mAP0.5-0.95分别为95.1%、94.5%、97.6%和93.7%。与YOLOv7-tiny相比,CR-YOLO将关键指标提高了11.8-26.7个百分点。当与其他流行的检测模型进行评估时,CR-YOLO表现出优异的性能,mAP0.5提高了6.9-11.4个百分点,同时减少了3.8-31.5%的计算开销。该模型的卓越性能和轻量级架构使其特别适用于资源受限的平台,可在实际园艺应用中实现实时监控,并通过高效、自动化的病虫害检测推进精准农业。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on a Method for Identification of Chinese Rose Leaf Pests and Diseases Based on a Lightweight CR-YOLO Model.

Accurate and rapid detection of pests and diseases on Chinese rose leaves is crucial for horticultural management and production quality. Despite advances in detection methods, challenges such as complex backgrounds, variable lighting conditions, and subtle disease manifestations in natural environments often lead to diminished detection accuracy and high computational costs. Traditional detection models typically require substantial computational resources, limiting their practical applicability in real-world horticultural settings. In response to these challenges, we introduce CR-YOLO (Chinese Rose YOLOv7-tiny), an enhanced lightweight detection framework derived from YOLOv7-tiny. Replacement of standard convolutions with distributed offset convolutions in the backbone network to reduce computational complexity while preserving feature extraction capabilities, integrating SimAM (parameter-free attention) to boost feature discrimination, and adopting Focal-EIOU loss to accelerate convergence. Experimental results on a comprehensive Chinese rose leaf pest dataset collected under natural conditions demonstrate that CR-YOLO achieves impressive metrics with precision, recall, mAP0.5, and mAP0.5-0.95 of 95.1%, 94.5%, 97.6%, and 93.7%, respectively. Compared to YOLOv7-tiny, CR-YOLO improves key metrics by 11.8-26.7 percentage points. When evaluated against other prevalent detection models, CR-YOLO shows superior performance with mAP0.5 improvements of 6.9-11.4 percentage points while reducing computational overhead by 3.8-31.5%. The model's exceptional performance and lightweight architecture make it particularly suitable for resource-constrained platforms, enabling real-time monitoring in practical horticultural applications and advancing precision agriculture through efficient, automated pest and disease detection.

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来源期刊
Plant disease
Plant disease 农林科学-植物科学
CiteScore
5.10
自引率
13.30%
发文量
1993
审稿时长
2 months
期刊介绍: Plant Disease is the leading international journal for rapid reporting of research on new, emerging, and established plant diseases. The journal publishes papers that describe basic and applied research focusing on practical aspects of disease diagnosis, development, and management.
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