基于视觉的无人机传输线传输接收技术

Sijiang Zhang, Zhengfa Li, Linke Huang, Kangwei Jia, Dongsheng Zhang
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摘要

为应对人工输电线路检测和无人机线路跟踪飞行的挑战,本研究提出了一种基于双目视觉的系统化无人机线路跟踪方法。建议的方法包括几个关键步骤。首先,相机在飞行过程中捕捉输电线路的图像,并不断实时更新这些视觉输入。其次,使用高斯模糊和双边滤波算法对图像进行预处理,以减轻光线和噪声干扰对图像检测的影响。随后,使用 Hough 变换和 BM 算法检测并提取图像中线条的三维节点。然后使用最小二乘算法确定指定跟踪线的三维姿态。最后,提出一种视觉制导策略,以便无人机有效地跟踪指定线路。通过实验验证了该方法的实时性和准确性。
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UAV transmission line transfer-acceptance technology based on vision
To address the challenges of manual transmission line inspection and UAV line-following flights, this study presents a systematic UAV line tracking method based on binocular vision. The proposed method involves several key steps. First, the camera captures images of the transmission lines during flight, and these visual inputs are continually updated in realtime. Second, the images undergo pre-processing using Gaussian blur and bilateral filtering algorithms to mitigate the impact of light and noise interference on image detection. Subsequently, the 3D nodes of the line within the image are detected and extracted using the Hough transform and BM algorithm. The 3D pose of the specified tracking line is then determined using the least squares algorithm. Lastly, a visual guidance strategy is presented for the UAV to effectively track the designated line. The real-time capability and accuracy of the method are validated through experimental verification.
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