Title :
Pedestrian Detection and Tracking in an Urban Environment Using a Multilayer Laser Scanner
Author :
Gidel, Samuel ; Checchin, Paul ; Blanc, Christophe ; Chateau, Thierry ; Trassoudaine, Laurent
Author_Institution :
Lab. des Sci. et Mater. pour l´´Electron., et d´´Autom., Blaise Pascal Univ., Aubière, France
Abstract :
Pedestrians are the most vulnerable participants in urban traffic. The first step toward protecting pedestrians is to reliably detect them in a real-time framework. In this paper, a new approach is presented for pedestrian detection in urban traffic conditions using a multilayer laser sensor mounted onboard a vehicle. This sensor, which is placed on the front of a vehicle, collects information about the distance distributed according to four planes. Like a vehicle, a pedestrian constitutes, in the vehicle environment, an obstacle that must be detected, and located and then identified and tracked if necessary. To improve the robustness of pedestrian detection using a single laser sensor, a detection system based on the fusion of information located in the four laser planes is proposed. The method uses a nonparametric kernel-density-based estimation of pedestrian position of each laser plane. The resulting pedestrian estimations are then sent to a decentralized fusion according to the four planes. Temporal filtering of each object is finally achieved within a stochastic recursive Bayesian framework (particle filter), allowing a closer observation of pedestrian random movement dynamics. Many experimental results are given and validate the relevance of our pedestrian-detection algorithm with regard to a method using only a single-row laser-range scanner.
Keywords :
collision avoidance; estimation theory; laser ranging; object detection; optical scanners; particle filtering (numerical methods); real-time systems; road traffic; road vehicles; sensor fusion; stochastic processes; traffic engineering computing; decentralized fusion; information fusion; multilayer laser scanner; nonparametric kernel-density-based estimation; obstacle avoidance; particle filter; pedestrian detection; pedestrian estimations; pedestrian random movement dynamics; pedestrian tracking; real-time framework; road vehicle; single laser sensor; single-row laser-range scanner; stochastic recursive Bayesian framework; temporal filtering; urban environment; urban traffic conditions; Bayesian methods; Filtering; Laser fusion; Nonhomogeneous media; Protection; Robustness; Sensor fusion; Sensor systems; Stochastic processes; Vehicle detection; Fusion; Parzen kernel method; intelligent vehicle; light detection and ranging; pedestrian detection; sampling-importance-resampling-based particle filter (SIR PF);
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2010.2045122