Jiang Peidong, Jiang Lai, Wu Fengyan, Che Tengteng, Wang Ming, Zheng Chuandong
Hubei Water Resources Research Institute, Wuhan 430070, China.
Key Laboratory of Termite Control of Ministry of Water Resources, Hubei Provincial Department of Water Resources, Wuhan 430071, China.
Sensors (Basel). 2025 Mar 31;25(7):2199. doi: 10.3390/s25072199.
With global climate change and the deterioration of the ecological environment, the safety of hydraulic engineering faces severe challenges, among which soil-dwelling termite damage has become an issue that cannot be ignored. Reservoirs and embankments in China, primarily composed of earth and rocks, are often affected by soil-dwelling termites, such as Odontotermes formosanus and Macrotermes barneyi. Identifying soil-dwelling termite damage is crucial for implementing monitoring, early warning, and control strategies. This study developed an improved YOLOv8 model, named MCD-YOLOv8, for identifying traces of soil-dwelling termite activity, based on the Monte Carlo random sampling algorithm and a lightweight module. The Monte Carlo attention (MCA) module was introduced in the backbone part to generate attention maps through random sampling pooling operations, addressing cross-scale issues and improving the recognition accuracy of small targets. A lightweight module, known as dimension-aware selective integration (DASI), was added in the neck part to reduce computation time and memory consumption, enhancing detection accuracy and speed. The model was verified using a dataset of 2096 images from the termite damage survey in hydraulic engineering within Hubei Province in 2024, along with images captured by drone. The results showed that the improved YOLOv8 model outperformed four traditional or enhanced models in terms of precision and mean average precision for detecting soil-dwelling termite damage, while also exhibiting fewer parameters, reduced redundancy in detection boxes, and improved accuracy in detecting small targets. Specifically, the MCD-YOLOv8 model achieved increases in precision and mean average precision of 6.4% and 2.4%, respectively, compared to the YOLOv8 model, while simultaneously reducing the number of parameters by 105,320. The developed model is suitable for the intelligent identification of termite damage in complex environments, thereby enhancing the intelligent monitoring of termite activity and providing strong technical support for the development of termite control technologies.
随着全球气候变化和生态环境恶化,水利工程安全面临严峻挑战,其中土栖白蚁危害已成为不可忽视的问题。我国以土石为主的水库和堤坝常受土栖白蚁如黑翅土白蚁和黄翅大白蚁的侵害。识别土栖白蚁危害对于实施监测、预警和防治策略至关重要。本研究基于蒙特卡罗随机抽样算法和轻量级模块,开发了一种改进的YOLOv8模型,即MCD - YOLOv8,用于识别土栖白蚁活动痕迹。在主干部分引入蒙特卡罗注意力(MCA)模块,通过随机抽样池化操作生成注意力图,解决跨尺度问题并提高小目标识别精度。在颈部添加一个名为维度感知选择性集成(DASI)的轻量级模块,以减少计算时间和内存消耗,提高检测精度和速度。该模型使用2024年湖北省水利工程白蚁危害调查的2096张图像数据集以及无人机拍摄的图像进行验证。结果表明,改进后的YOLOv8模型在检测土栖白蚁危害的精度和平均精度方面优于四种传统或改进模型,同时参数更少,检测框冗余度降低,小目标检测精度提高。具体而言,与YOLOv8模型相比,MCD - YOLOv8模型的精度和平均精度分别提高了6.4%和2.4%,同时参数数量减少了105320个。所开发的模型适用于复杂环境中土栖白蚁危害的智能识别,从而加强对白蚁活动的智能监测,为白蚁防治技术的发展提供有力的技术支持。