2022
DOI: 10.3390/systems10030083
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Deep-Learning-Based Floor Path Model for Route Tracking of Autonomous Vehicles

Abstract: Real-time route tracking is an important research topic for autonomous vehicles used in industrial facilities. Traditional methods such as copper line tracking on the ground, wireless guidance systems, and laser systems are still used in route tracking. In this study, a deep-learning-based floor path model for route tracking of autonomous vehicles is proposed. A deep-learning floor path model and algorithm have been developed for highly accurate route tracking, which avoids collisions of vehicles and follows t… Show more

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Cited by 2 publications
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“…Recently, Dai et al [38] simplified magnetic positioning approach based on the Analytical Method and Data Fusion for AGV movement. Latest, Erginli and Cil [39] has adapted a deep-learning-based floor path model for route tracking in autonomous vehicles that able to implement into AGV system.…”
Section: ) Magnetic Spotmentioning
confidence: 99%
“…Recently, Dai et al [38] simplified magnetic positioning approach based on the Analytical Method and Data Fusion for AGV movement. Latest, Erginli and Cil [39] has adapted a deep-learning-based floor path model for route tracking in autonomous vehicles that able to implement into AGV system.…”
Section: ) Magnetic Spotmentioning
confidence: 99%