基于无人机的工业仪表检测与显示读取机器视觉算法

C. Li, Dehua Zheng, Lizheng Liu, Xiaochen Zheng
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摘要

在工业生产或实施场景中,无人机在完成高难度任务方面具有压倒性优势。其出色的导航和机载感知能力赋予了空中平台在工业应用中的巨大潜力。由于无人机的操作稳定性和计算能力对工业任务至关重要,因此开发可靠、安全的室内工业操作无人机平台是一项挑战。针对工业标准仪表的测量,提出了一种能够快速检测工业标准仪表及其读数的视觉算法,并将该算法集成到具有室内和室外导航功能的四旋翼无人机平台中。在我们的工作中,我们演示了如何通过使用Darknet实现和调整YOLO v3框架来提高基于无人机的视觉识别的简单性和效率[1]。此外,我们的视觉算法与图像几何校正模块和仪表检测和读取模块相结合,克服了恶劣工业条件下的检测问题,如图像模糊和曝光不足。实验结果表明,该方法的检测精度足以满足工业任务的要求。
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A UAV-Based Machine Vision Algorithm for Industrial Gauge Detecting and Display Reading
Unmanned Aerial Vehicle (UAV) has overwhelming superiority on the completion of difficult missions in the industrial production or implementation scenarios. Its brilliant navigation and on-board perception abilities endow the aerial platform a considerable potential in the industrial applications. Since manipulation stability and computational capacity of UAVs are crucial for industrial missions, it is challenging to develop a reliable and safe UAV platform for indoor industrial operation. Focusing on the measurement of industrial-standard gauges, we propose a vision algorithm which is capable of fast detecting the industrial-standard gauges and the readings and integrate the algorithm into a quadrotor drone platform with indoor and outdoor navigation. In our work, we demonstrate how to improve the simplicity and efficiency of the UAV-based visual recognition by implementing and adjusting a YOLO v3 framework with Darknet [1]. Moreover, our vision algorithm is combined with the image geometric correction module and the gauge detecting and reading module to overcome the detection problems caused by the harsh industrial conditions, such as an obscure image and the under-exposure condition. And the results show that accuracy of detection in the experimentation is sufficient for industrial missions.
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