
The Application and Future Prospects of Drone Vision Technology in the Railway Industry
Abstract
With the continuous expansion of the railway transportation scale, traditional inspection methods are increasingly unable to meet the safety inspection requirements of railway facilities and their surrounding environments. Drone vision technology, with its unique advantages, has been widely applied in the railway industry. This paper comprehensively reviews the current application status of drone vision technology in various aspects of railway inspection, deeply analyzes the challenges it faces, and looks ahead to its future development trends, aiming to provide references for promoting the intelligent inspection of the railway industry.
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References
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