SP-YOLO: A Real-Time and Efficient Multi-Scale Model for Pest Detection in Sugar Beet Fields.

IF 2.7 2区 农林科学 Q1 ENTOMOLOGY Insects Pub Date : 2025-01-20 DOI:10.3390/insects16010102
Ke Tang, Yurong Qian, Hualong Dong, Yuning Huang, Yi Lu, Palidan Tuerxun, Qin Li
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Abstract

Beet crops are highly vulnerable to pest infestations throughout their growth cycle, which significantly affects crop development and yield. Timely and accurate pest identification is crucial for implementing effective control measures. Current pest detection tasks face two primary challenges: first, pests frequently blend into their environment due to similar colors, making it difficult to capture distinguishing features in the field; second, pest images exhibit scale variations under different viewing angles, lighting conditions, and distances, which complicates the detection process. This study constructed the BeetPest dataset, a multi-scale pest dataset for beets in complex backgrounds, and proposed the SP-YOLO model, which is an improved real-time detection model based on YOLO11. The model integrates a CNN and transformer (CAT) into the backbone network to capture global features. The lightweight depthwise separable convolution block (DSCB) module is designed to extract multi-scale features and enlarge the receptive field. The neck utilizes the cross-layer path aggregation network (CLPAN) module, further merging low-level and high-level features. SP-YOLO effectively differentiates between the background and target, excelling in handling scale variations in pest images. In comparison with the original YOLO11 model, SP-YOLO shows a 4.9% improvement in mean average precision (mAP@50), a 9.9% increase in precision, and a 1.3% rise in average recall. Furthermore, SP-YOLO achieves a detection speed of 136 frames per second (FPS), meeting real-time pest detection requirements. The model demonstrates remarkable robustness on other pest datasets while maintaining a manageable parameter size and computational complexity suitable for edge devices.

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甜菜作物在整个生长周期中都极易受到虫害的侵袭,从而严重影响作物的生长发育和产量。及时准确地识别害虫对于实施有效的控制措施至关重要。目前的害虫检测任务面临两个主要挑战:首先,由于颜色相似,害虫经常与周围环境融为一体,因此很难在田间捕捉到明显的特征;其次,害虫图像在不同的观察角度、光照条件和距离下会表现出尺度变化,从而使检测过程复杂化。本研究构建了复杂背景下甜菜的多尺度害虫数据集 BeetPest,并提出了基于 YOLO11 的改进型实时检测模型 SP-YOLO。该模型将 CNN 和变换器(CAT)集成到骨干网络中,以捕捉全局特征。轻量级深度可分离卷积块(DSCB)模块旨在提取多尺度特征并扩大感受野。颈部利用跨层路径聚合网络(CLPAN)模块,进一步合并低层和高层特征。SP-YOLO 能有效区分背景和目标,在处理害虫图像的尺度变化方面表现出色。与最初的 YOLO11 模型相比,SP-YOLO 的平均精度(mAP@50)提高了 4.9%,精确度提高了 9.9%,平均召回率提高了 1.3%。此外,SP-YOLO 的检测速度达到了每秒 136 帧 (FPS),满足了实时害虫检测的要求。该模型在其他害虫数据集上表现出卓越的鲁棒性,同时还保持了适合边缘设备的可控参数大小和计算复杂度。
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来源期刊
Insects
Insects Agricultural and Biological Sciences-Insect Science
CiteScore
5.10
自引率
10.00%
发文量
1013
审稿时长
21.77 days
期刊介绍: Insects (ISSN 2075-4450) is an international, peer-reviewed open access journal of entomology published by MDPI online quarterly. It publishes reviews, research papers and communications related to the biology, physiology and the behavior of insects and arthropods. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files regarding the full details of the experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material.
期刊最新文献
Morphological Comparisons of Adult Worker Bees Developed in Chinese and Italian Honey Bee Combs. Precise Crop Pest Detection Based on Co-Ordinate-Attention-Based Feature Pyramid Module. SP-YOLO: A Real-Time and Efficient Multi-Scale Model for Pest Detection in Sugar Beet Fields. Functional Responses of the Warehouse Pirate Bug Xylocoris flavipes (Reuter) (Hemiptera: Anthocoridae) on a Diet of Liposcelis decolor (Pearman) (Psocodea: Liposcelididae). Essential Oils as Bioinsecticides Against Blattella germanica (Linnaeus, 1767): Evaluating Its Efficacy Under a Practical Framework.
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