复杂场景下受保护蔬菜病害检测的轻量级框架

IF 3.5 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Jun Liu, Xuewei Wang, Qian Chen
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引用次数: 0

摘要

计算机视觉技术的快速发展为智慧农业提供了新的技术支撑。蔬菜病害对农业生产构成重大威胁,其严重性不容忽视。然而,通过科学有效的预防和控制措施,这些负面影响可以显著减轻。智能病害检测系统作为替代传统人工检测的先进手段,已成为发展智慧农业、提高蔬菜生产管理效率的重要手段。然而,传统的人工检测不仅耗时费力,而且存在精度限制,而现有的计算机视觉检测方法在面对复杂的背景、多样的疾病表现、不同程度的遮挡时,仍然面临抗干扰能力不足、检测精度有限、实时性欠佳等一系列挑战。本研究提出了一种创新策略,对不同类别的样本实施差异化的数据增强技术组合,显著增强了模型对环境干扰的抵抗能力,解决了蔬菜保护病害数据采集有限和样本稀缺的实际挑战。基于机器视觉和深度学习相结合的概念,我们开发了一个轻量级的蔬菜病害检测网络VegetableDet。该网络创新性地结合了可变形注意力转换器(DAT)和YOLOv8n主干架构,增强了对远程特征依赖的感知能力。同时,将通道-空间自适应注意机制(CSAAM)集成到颈部网络中,实现了关键特征的精确定位和增强。针对模型收敛效率低的问题,我们进一步设计了分层递进迁移学习训练策略,有效加快了模型的自适应过程,提高了检测精度。实验评估表明,在我们定制的综合防护蔬菜病害数据集上,VegetableDet模型在检测5种蔬菜类型的30种病害和健康样本方面表现优异,精度(P)、召回率(R)和平均精度(AP)均超过90%,总体平均平均精度(mAP)达到94.31%。该模型在复杂环境条件下具有较强的适应性,为设施蔬菜病害的实时监测和精准防控提供了可靠的技术支持,具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Lightweight Framework for Protected Vegetable Disease Detection in Complex Scenes

A Lightweight Framework for Protected Vegetable Disease Detection in Complex Scenes

The rapid development of computer vision technology has provided new technical support for smart agriculture. Vegetable diseases represent a significant threat to agricultural production, with severity that cannot be ignored. However, through scientifically effective prevention and control measures, these negative impacts can be significantly mitigated. Intelligent disease detection systems, as advanced methods replacing traditional manual inspection, have become important means for developing smart agriculture and improving the efficiency of vegetable production management. Nevertheless, traditional manual detection is not only time-consuming and labor-intensive but also faces accuracy limitations, while existing computer vision detection methods still encounter a series of challenges when confronting complex backgrounds, diverse disease manifestations, and varying degrees of occlusion in real cultivation environments, including insufficient anti-interference capabilities, limited detection precision, and suboptimal real-time performance. This research addresses the practical challenges of limited data acquisition and sample scarcity for protected vegetable diseases by proposing an innovative strategy that implements differentiated data augmentation technique combinations for different categories of samples, significantly enhancing the model's resistance to environmental interference. Based on the integrated concepts of machine vision and deep learning, we developed a lightweight vegetable disease detection network named VegetableDet. This network innovatively combines Deformable Attention Transformer (DAT) with YOLOv8n backbone architecture, enhancing perception capabilities for long-range feature dependencies. Simultaneously, a Channel-Spatial Adaptive Attention Mechanism (CSAAM) is integrated into the Neck network, achieving precise localization and enhancement of key features. To address the issue of low model convergence efficiency, we further designed a hierarchical progressive transfer learning training strategy, effectively accelerating the model adaptation process and improving detection accuracy. Experimental evaluation demonstrates that on our custom comprehensive protected vegetable disease dataset, the VegetableDet model exhibits excellent performance in detecting 30 diseases and healthy samples across 5 vegetable types, with precision (P), recall (R), and average precision (AP) all exceeding 90%, and an overall mean Average Precision (mAP) reaching 94.31%. The model demonstrates powerful adaptability under complex environmental conditions, providing reliable technical support for real-time monitoring and precise prevention and control of protected vegetable diseases, with broad application prospects.

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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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