Title :
A multi-modal system for road detection and segmentation
Author :
Xiao Hu ; Rodriguez, F. Sergio A. ; Gepperth, Alexander
Author_Institution :
Univ. de Technol. de Compiegne (UTC), Compiegne, France
Abstract :
Reliable road detection is a key issue for modern Intelligent Vehicles, since it can help to identify the driv-able area as well as boosting other perception functions like object detection. However, real environments present several challenges like illumination changes and varying weather conditions. We propose a multi-modal road detection and segmentation method based on monocular images and HD multi-layer LIDAR data (3D point cloud). This algorithm consists of three stages: extraction of ground points from multilayer LIDAR, transformation of color camera information to an illumination-invariant representation, and lastly the segmentation of the road area. For the first module, the core function is to extract the ground points from LIDAR data. To this end a road boundary detection is performed based on histogram analysis, then a plane estimation using RANSAC, and a ground point extraction according to the point-to-plane distance. In the second module, an image representation of illumination-invariant features is computed simultaneously. Ground points are projected to image plane and then used to compute a road probability map using a Gaussian model. The combination of these modalities improves the robustness of the whole system and reduces the overall computational time, since the first two modules can be run in parallel. Quantitative experiments carried on the public KITTI dataset enhanced by road annotations confirmed the effectiveness of the proposed method.
Keywords :
Gaussian processes; feature extraction; image colour analysis; image representation; image segmentation; image sensors; lighting; object detection; optical radar; traffic engineering computing; Gaussian model; HD multilayer LIDAR data; RANSAC; color camera information; ground point extraction; ground points extraction; histogram analysis; illumination changes; illumination-invariant features; illumination-invariant representation; image representation; modern intelligent vehicles; monocular images; multimodal system; perception functions; public KITTI dataset; road annotations; road boundary detection; road detection; road probability map; road segmentation; varying weather conditions; Cameras; Estimation; High definition video; Histograms; Laser radar; Roads; Vehicles; Intelligent Vehicle; LI-DAR; monocular vision; multi-modal perception; road detection;
Conference_Titel :
Intelligent Vehicles Symposium Proceedings, 2014 IEEE
Conference_Location :
Dearborn, MI
DOI :
10.1109/IVS.2014.6856466