基于深度学习的水陆两栖排水管检测系统

Pengfei Yong
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引用次数: 0

摘要

地下排水管道的缺陷是城市灾害的主要诱发因素。然而,现有的检测机器人存在环境适应性差、管道自动化程度低等问题。本研究设计的基于深度学习的水陆两栖机器人是一种适应性强、效率高的检测系统。设计的导管螺旋推进轮首先提供动力。然后,基于多模态传感器和改进的YOLOV4-Tiny进行缺陷检测和三维重建。最后将缺陷位置和图像信息通过导线传输到终端显示,并生成检测报告。实验结果表明,本研究改进的YOLOV4-Tiny网络的MAP比基线网络提高了2.18%,FPS提高了11.3帧。该系统为排水管道检测提供了一种新的途径。
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Amphibious detection system for drainage pipes base on deep learning
The defect of underground drainage pipes is the main inducing factor of urban disasters. However, existing detection robot has problems such as poor environmental adaptability and a low degree of automation for pipes. The deep learning-based amphibious robot designed in this study is a highly adaptable and efficient detection system. The designed ducted screw propelled wheels first provide power. Next, based on the multimodal sensors and the improved YOLOV4-Tiny, defect detection and 3D reconstruction are carried out. Finally, the defect location and image information are transmitted to the terminal for display by wire, and a detection report is generated. What’s more, the experimental results show that the MAP of the improved YOLOV4-Tiny in this research is improved by 2.18% compared with the baseline network, and the FPS is improved by 11.3 frames. The system proposed provides a new approach to drainage pipe inspection.
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