Image Analysis-Based Automatic Utility Pole Detection for Remote Surveillance

Hrishikesh Sharma, Adithya Vellaiappan, Tanima Dutta, P. Balamuralidhar
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引用次数: 7

Abstract

In case of disasters such as cyclones, earthquakes, severe floods etc., widespread damages to infrastructures such as power grid, communication infrastructure etc. is commonplace. Especially to power grid, the damages to various structures are typically spread out in wide areas. Usage of drones to do fast remote survey of damage area is gaining popularity. From the remote surveillance video of any wide disaster area that is fairly long, it is important to extract keyframes that contain specific component structures of the power grid. The keyframes can then be analyzed for possible damage to the specific structure. In this context, we present an algorithm for automated detection of utility poles. Specifically, we show robust detection of poles in frames of videos available from various sources. The detection is performed by first extracting 2D shapes of poles as analytically defined geometric shape, quadrilateral, whose edges exhibit noise corruption. A pole is then detected as a shape-based template, where one long rectangular trapezium, is perpendicularly intersected by at least one trapezium representing a crossarm that suspends the conductors. Via testing and comparison, our algorithm is shown to be more robust as compared to other approaches, especially against highly variable background. We believe such detection, with limited false negatives, will form stepping stone towards future detection of damages in utility poles.
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基于图像分析的电线杆远程监控自动检测
在飓风、地震、严重洪水等灾害中,对电网、通信基础设施等基础设施的广泛破坏是司空见惯的。特别是对电网来说,各种结构的破坏通常是大面积分布的。使用无人机对受损区域进行快速远程调查越来越受欢迎。对于任何大范围、较长的灾区远程监控视频,提取包含电网特定组成结构的关键帧是非常重要的。然后可以对关键帧进行分析,以确定对特定结构可能造成的损害。在这种情况下,我们提出了一种自动检测电线杆的算法。具体来说,我们展示了来自各种来源的视频帧中极点的鲁棒检测。检测是通过首先提取极点的二维形状作为解析定义的几何形状,四边形,其边缘表现出噪声损坏。然后检测到一个杆子作为一个基于形状的模板,其中一个长矩形梯形与至少一个梯形垂直相交,梯形代表悬挂导体的横臂。通过测试和比较,我们的算法与其他方法相比具有更强的鲁棒性,特别是在高度可变的背景下。我们相信,这种具有有限假阴性的检测将成为未来检测电线杆损害的垫脚石。
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