Xiujuan Zhang, Guangjie Zhan, Tao Ding, He Jiang, Yaqin Wang, Yi Zhang, Li Liu
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引用次数: 0
摘要
无人机(UAV)和人工智能技术的快速发展,促使人们对潮孔进行实时、精确的观测测量,而潮孔传播速度是潮孔观测的基础。本文构建了基于无人机和计算机视觉的潮汐观测系统框架,以获取潮孔传播速度数据集。首先,我们基于 Sobel 边缘检测、改进的 Otsu 图像分割算法和边缘连接算法对潮汐标题进行识别,准确率达到 91%。然后,利用检测到的潮汐标题控制无人机的飞行参数,使其在指定航线上稳定跟踪潮孔,偏差范围小于 0.5,最后获取潮孔传播速度数据集。与现场测量的潮线传播速度相比,结果误差保持在 0.1 m/s 以内,证明了我们提出的观测方法的有效性。
Automatic tracking and intelligent observation of tidal bore propagation velocity based on UAV and computer vision
The rapidly developed Unmanned Aerial Vehicles (UAV) and artificial intelligence technology has prompted the real-time and accurate observation measurements of tidal bore, the basis of which is tidal bore propagation velocity. In this article, we construct a tidal observation system framework based on UAV and computer vision in order to obtain the tidal bore propagating velocity datasets. Firstly, we focus on the identification of tidal headlines based on the Sobel edge detection, the improved Otsu image segmentation algorithm and the edge connection algorithm with an accuracy of 91%. And then, the detected tidal headlines could be used to control the flight parameters of UAV in order to stably track tidal bore on the specified route with the deviation range below 0.5, and finally to acquire the tidal bore propagation velocity datasets. Comparing with the propagation velocity of the tidal line measured on site, the error of the results is maintained within 0.1 m/s, which demonstrates the effectiveness of our proposed observation method.