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NTIS 바로가기Sustainability, v.13 no.20, 2021년, pp.11417 -
Waykole, Swapnil , Shiwakoti, Nirajan , Stasinopoulos, Peter
Autonomous vehicles and advanced driver assistance systems are predicted to provide higher safety and reduce fuel and energy consumption and road traffic emissions. Lane detection and tracking are the advanced key features of the advanced driver assistance system. Lane detection is the process of de...
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