无人机图像中架空输电塔的提取

Satheeswari Damodaran, Leninisha Shanmugam, N. Swaroopan
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引用次数: 0

摘要

为了保证输电线路的完整性,必须对输电塔进行监控。监测可能导致停电的植被侵占是一项重大挑战。目前大多数监测技术依赖于人工劳动和传统的观测方法,如无人机(UAV)和航空摄影。然而,用这些方法监测大面积区域既昂贵又耗时。本文介绍了一种利用无人机图像对电力线廊进行监控的方法。提出了一个两阶段的程序。第一阶段采用模糊c均值进行背景聚类。我们的第二步是使用最先进的深度学习技术AlexNet和DenseNet-121检测传输塔的存在。通过比较两种深度学习架构,所提出的方法从VAV图像中检测发射塔,AlexNet的准确率为94.8%,DenseNet - 121的准确率为98.6%,具有更好的精度、召回率和f1分数。
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Extraction of Overhead Transmission Towers from UAV Images
To ensure the integrity of power lines, electrical transmission towers must be monitored. Monitoring vegetation encroachment, which can lead to power outages, is a significant challenge. The majority of current monitoring techniques rely on manual labor and traditional methods of observation such as unmanned aerial vehicles (UAV) and airborne photography. Monitoring large areas with these methods, however, is expensive and time consuming. Our paper describes a method for monitoring power line corridors with UAV images. A two-stage procedure is proposed. Background clustering was performed using Fuzzy C-means in the first stage. Our second step was to detect the presence of transmission towers using state-of-the-art deep learning technologies AlexNet and DenseNet-121. By comparing the two deep learning architectures, the proposed methodology detects the transmission tower from VAV images with an accuracy of 94.8% for AlexNet and 98.6% for DenseNet - 121 with better precision, recall, and F1-score.
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