2019
DOI: 10.3390/s19143166
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Lane Detection Algorithm for Intelligent Vehicles in Complex Road Conditions and Dynamic Environments

Abstract: Lane detection is an important foundation in the development of intelligent vehicles. To address problems such as low detection accuracy of traditional methods and poor real-time performance of deep learning-based methodologies, a lane detection algorithm for intelligent vehicles in complex road conditions and dynamic environments was proposed. Firstly, converting the distorted image and using the superposition threshold algorithm for edge detection, an aerial view of the lane was obtained via region of intere… Show more

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Cited by 55 publications
(39 citation statements)
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“…Sensors in the automated vehicle are used for perception, and most of them are cause-based: an ultrasonic sensor; video, thermal and stereo cameras; radars; laser-based radar (LIDAR), a global positioning system (GPS), etc. Video cameras are usually used for determining path [17] and obstacles [18], line detection and road edge recognition [19,20]. Also, there are developments where image analysis methods are used for road distress, cracks and other road damage [21][22][23].…”
Section: Introductionmentioning
confidence: 99%
“…Sensors in the automated vehicle are used for perception, and most of them are cause-based: an ultrasonic sensor; video, thermal and stereo cameras; radars; laser-based radar (LIDAR), a global positioning system (GPS), etc. Video cameras are usually used for determining path [17] and obstacles [18], line detection and road edge recognition [19,20]. Also, there are developments where image analysis methods are used for road distress, cracks and other road damage [21][22][23].…”
Section: Introductionmentioning
confidence: 99%
“…Para realizar a transformação de perspectiva são necessários oito pontos na imagem, quatro para cada plano de transformação (Cao et al, 2019 Oúltimo critério adotado considera a estrutura geométrica das faixas de transito. Na imagem em perspectiva aérea,é esperado que as faixas obtidas estejam aproximadamente paralelas.…”
Section: Extração Da Região De Interesseunclassified
“…Generally, the road is represented by its boundaries [9,10] or regions [1,2,11]. Moreover, road lane [12,13,14] and drivable area [15,16] detection also attract much attention from researchers, which concern the ego lane and the obstacle-free region of the road, respectively. The learning-based methods usually outperform the model-based methods due to the developed segmentation techniques.…”
Section: Related Workmentioning
confidence: 99%