基于 YOLO 的无人飞行器图像采集技术 - 以风力涡轮机叶片检测为例说明

Zhenjun Dai
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引用次数: 0

摘要

风能作为一种可再生能源,正变得越来越重要。风力涡轮机叶片的维护和损坏检测尤为重要。为此,本研究旨在优化无人机图像的 "只看一次(YOLO)"处理算法,以提高检测效率。首先,对无人机捕获的损坏图像进行预处理和优化,包括去模糊、降噪和图像增强。随后,从结构和回归函数方面对 YOLOv5 模型进行了改进,并提出了一种新的损伤检测模型。研究结果表明,改进模型的最小损失函数值为 2.75,平均准确率为 95%,最高交集大于联合率为 91%。经过仿真测试,该模型对磨损、裂纹、边缘开裂和涂层剥落图像的检测效果明显优于同系列的其他模型。其平均检测时间短至 2.43 秒,最大帧率达到 35.46。由此可见,无人机图像技术与改进的图像处理算法相结合,对提高风机叶片的运行效率和安全性具有积极作用。与传统方法相比,所提出的模型在损伤检测的准确性和实时性方面具有显著优势,为风力发电机的高效维护提供了新的技术手段。同时,该方法在不同类型的损伤检测中均表现出较高的鲁棒性和可靠性,显示了其在实际应用中的广泛潜力。
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Image acquisition technology for unmanned aerial vehicles based on YOLO - Illustrated by the case of wind turbine blade inspection

Wind energy, as a renewable energy source, is becoming increasingly important. The maintenance and damage detection of wind turbine blades are particularly crucial. For this purpose, the study aims to optimize the You Only Look Once (YOLO) processing algorithm for drone images to improve the detection efficiency. Firstly, the damage images captured by drones are preprocessed and optimized, including deblurring, noise reduction, and image enhancement. Subsequently, the YOLOv5 model is improved in terms of structure and regression function, and a novel damage detection model is proposed. The research results indicated that the minimum loss function value of the improved model was 2.75, the average accuracy was 95 %, and the highest intersection over union was 91 %. After simulation testing, the detection effect of this model on abrasion, crackle, edge cracking, and coating peeling images was significantly better than other models in the same series. Its average time was as short as 2.43 s, reaching a maximum frame rate of 35.46. From this, the combination of drone image technology and improved image processing algorithm has a positive impact on improving the operational efficiency and safety of wind turbine blades. Compared with the traditional methods, the proposed model has significant advantages in terms of accuracy and real-time performance of damage detection, providing a new technical means for efficient maintenance of wind turbines. Meanwhile, the method shows high robustness and reliability in different types of damage detection, demonstrating the extensive potential in practical applications.

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