论文标题
使用光学传感卫星图像在电力传输线中对植被侵占检测的审查
A Review of Vegetation Encroachment Detection in Power Transmission Lines using Optical Sensing Satellite Imagery
论文作者
论文摘要
电力传输线中的植被侵占可能会导致停电,这可能会对电力公司和消费者的经济经济产生严重影响。实施沿电力线走廊通行权权利(行)的植被检测和监测,以保护电力输电线免受植被穿透。有多种方法用于监测植被渗透,但是,大多数方法太昂贵且耗时。卫星图像可以在植被监测中发挥重要作用,因为它可以覆盖成本相对较低的高空间区域。在本文中,对使用卫星图像检测植被侵占的当前技术进行了审查,并将其分为四个部门。基于植被指数的方法,基于对象的检测方法,基于立体声匹配和其他当前技术。但是,当前的方法通常取决于设置手动服务阈值值和参数,从而使检测过程非常静态。机器学习(ML)和深度学习(DL)算法可以提供很高的精度,并且在检测过程中具有灵活性。因此,除了审查电力传输中植被穿透监测的当前技术外,还包括使用基于机器学习的算法的潜力。
Vegetation encroachment in power transmission lines can cause outages, which may result in severe impact on economic of power utilities companies as well as the consumer. Vegetation detection and monitoring along the power line corridor right-of-way (ROW) are implemented to protect power transmission lines from vegetation penetration. There were various methods used to monitor the vegetation penetration, however, most of them were too expensive and time consuming. Satellite images can play a major role in vegetation monitoring, because it can cover high spatial area with relatively low cost. In this paper, the current techniques used to detect the vegetation encroachment using satellite images are reviewed and categorized into four sectors; Vegetation Index based method, object-based detection method, stereo matching based and other current techniques. However, the current methods depend usually on setting manually serval threshold values and parameters which make the detection process very static. Machine Learning (ML) and deep learning (DL) algorithms can provide a very high accuracy with flexibility in the detection process. Hence, in addition to review the current technique of vegetation penetration monitoring in power transmission, the potential of using Machine Learning based algorithms are also included.