基于SIFT的复杂环境下电力设备状态在线智能视觉识别算法

Yun-Fo Liu, Qiang Lyu, Yanjie Zhang, Chao Yang, Qifan Yang, Feng Zhou
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引用次数: 0

摘要

目前,计算机视觉技术在电力系统中的应用越来越多。利用图像处理和机器视觉来监控电力设备的想法并不新鲜。然而,研究主要集中在计算机视觉技术在输电线路环境和绝缘子检测领域的应用。本文结合智能电网变电站的实际情况和施工需要,提出并研究了一种基于智能计算机视觉技术的识别算法,旨在解决典型室外断路器、隔离器和室内开关柜的自动识别问题。首先,采用尺度不变特征变换(scale invariant feature transform, SIFT)算法,对待检测区域进行精确定位;其次,利用随机化霍夫变换提取隔离开关线信息和开关柜环信息,并通过k-NN (k-Nearest Neighbour)提取和搜索断路器特征信息;最后,通过设置阈值对三种电力设备进行智能识别,并在国内某500kv变电站的隔离器和清河变电站中验证了算法的识别效果和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-line intelligent visual identification algorithm of power equipment state under the complex environment based on SIFT
At present, the application of computer vision technology in power systems is increasing. The idea of using image processing and machine vision to monitor power equipment is not new. However, the research mainly focuses on the application of computer vision technology in the fields of transmission line environment and insulator detection. Combined the actual conditions of the intelligent grid substation and the need of construction, this paper proposed and studied a kind of identification algorithm based on intelligent computer vision technology, aiming at solving the problem of automatic identification of typical outdoor circuit breakers, disconnectors and indoor switchgear. First, using scale-invariant feature transform (scale invariant feature transform, SIFT) algorithm, the paper accurately positions the area to be detected; second, extracts isolating switch line information and switchgear circle information using randomized Hough transform, and through the k-NN (k-Nearest Neighbour) extracts and ferreting breaker character information; Finally, three kinds of electric power equipment are identified intelligently by threshold setting, and the identification effect and stability of the algorithm are validated in the disconnector and Qing He substation of a 500 kv substation in China.
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