An adapted visual servo algorithm for substation equipment inspection robot

Hua Fang, Xiaoxiao Cui, Liangkun Cui, Yuanpei Chen
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引用次数: 6

Abstract

Based on the real-time image capturing and recognition, the robot is responsible to inspect the working status of various equipments in the smart substation. In this paper, an adapted efficient robotics visual servo algorithm is proposed in order to improve the accuracy of capturing the target images. When the robot captures image of the equipment, SIFT method is utilized to match with the template image to verify the captured image containing the region of interesting (ROI) or not. Once the ROI is part or entirety out of the real-time image, the PTZ is controlled to make up for the deficiency by calculating the offset pixels. Then the robot will capture more accurate target image. Farther more, a “high zoom ratio” visual servo solution is also figured out by this proposed algorithm. The experiment results proved that this algorithm improved the efficiency of image capture to the robot. And it is effective to save the computer resource to achieve long battery life when the robot is working the inspection missions. The application of this proposed algorithm will provide facilities for robot to realize 24 hour all-weather inspection in the substation.
变电站设备巡检机器人的自适应视觉伺服算法
在实时图像采集和识别的基础上,机器人负责检查智能变电站内各种设备的工作状态。为了提高目标图像的捕获精度,本文提出了一种自适应的高效机器人视觉伺服算法。当机器人捕获设备图像时,利用SIFT方法与模板图像进行匹配,验证捕获的图像是否包含感兴趣区域(ROI)。一旦ROI部分或全部脱离实时图像,通过计算偏移像素来控制PTZ以弥补不足。然后机器人将捕获更精确的目标图像。此外,该算法还计算出了“高变焦比”的视觉伺服解。实验结果证明,该算法提高了机器人的图像捕获效率。在机器人执行巡检任务时,有效地节省了计算机资源,实现了较长的电池寿命。该算法的应用将为机器人在变电站实现24小时全天候巡检提供便利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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