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Query: faculty: "FNWI" and publication year: "2010"

AuthorsJ.M. Alvarez, T. Gevers, A.M. Lopez
Title3D Scene Priors for Road Detection
Book/source title2010 IEEE Conference on Computer Vision and Pattern Recognition: CVPR 2010: San Francisco, California, USA, 13-18 June 2010
PublisherIEEE
PlacePiscataway
Year2010
Pages57-64
ISBN9781424469840
FacultyFaculty of Science
Institute/dept.FNWI: Informatics Institute (II)
AbstractVision–based road detection is important in different areas of computer vision such as autonomous driving, car collision warning and pedestrian crossing detection. However, current vision–based road detection methods are usually based on low–level features and they assume structured roads, road homogeneity, and uniform lighting conditions. Therefore, in this paper, contextual 3D information is used in addition to low–level cues. Low–level photometric invariant cues are derived from the appearance of roads. Contextual cues used include horizon lines, vanishing points, 3D scene layout and 3D road stages. Moreover, temporal road cues are included. All these cues are sensitive to different imaging conditions and hence are considered as weak cues. Therefore, they are combined to improve the overall performance of the algorithm. To this end, the low-level, contextual and temporal cues are combined in a Bayesian framework to classify road sequences. Large scale experiments on road sequences show that the road detection method is robust to varying imaging conditions, road types, and scenarios (tunnels, urban and highway). Further, using the combined cues outperforms all other individual cues. Finally, the proposed method provides highest road detection accuracy when compared to state–of–the–art methods.
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