Abstract

Obstacle distance measurement is one of the key technologies for autonomous navigation of high-voltage transmission line inspection robots. To address the robustness of obstacle distance measurement under varying illumination conditions, this article develops a research method that fuses image enhancement with robot monocular vision so that the robot can adapt to various levels of illumination running along the transmission line. During the inspection of high-voltage transmission lines in such an overexposed (excessively bright) environment, a specular highlight suppression method is proposed to suppress the specular reflections in an image; when scene illumination is insufficient, a robust low-light image enhancement method based on a tone mapping algorithm with weighted guided filtering is presented. Based on the monocular vision measurement principle, the error generation mechanism is analyzed through experiments, and we introduce the parameter modification mechanism. The two proposed image enhancement methods outperform other state-of-the-art enhancement algorithms in qualitative and quantitative analyses. The experimental results show that the measurement error is less than 3% for static distance measurements and less than 5% for dynamic distance measurements within 6 m. The proposed method can meet the requirements of high-accuracy positioning, real-time performance and strong robustness. This method greatly contributes to the sustainable development of inspection robots in the power industry.

Highlights

  • Power infrastructure is an important foundation for people’s livelihood and industrial development

  • Transmission lines exposed to harsh natural conditions over a long period will lead to strand breakage, counterweight slippage, line fitting damage and changes in the safe distance

  • Aiming at the problems of illumination influence and obstacle distance measurement of obstacle images taken by a high-voltage transmission line inspection robot in the process of autonomous operation, an image enhancement fusion monocular vision method is proposed

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Summary

INTRODUCTION

Power infrastructure is an important foundation for people’s livelihood and industrial development. This paper is based on the monocular vision ranging model of the inspection robot, combined with the characteristics of ground line imaging and introduces a parameter modification model to improve the accuracy and robustness of obstacle positioning. It improves the adaptability of the robot to the external environment. By analyzing transmission line corridors and inspection robot detection methods, a method based on monocular vision is proposed under the condition of light variations.

CIR VISION SYSTEM
TONE MAPPING ALGORITHMOR BASED ON WEIGHTED GUIDED FILTERING
OBSTACLE DISTANCE MEASUREMENT BASED ON MONOCULAR VISION
EXPERIMENT
PARAMETERS FOR THE SPECULAR HIGHLIGHT SUPPRESSION METHOD
OBSTACLE DISTANCE MEASUREMENT
B C sin O0B C
OBSTACLE DISTANCE MEASUREMENT PARAMETER MODIFICATION
Findings
CONCLUSION
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