Multiple Sensor Fusion and Classification for Moving Object Detection and Tracking 论文

2015IEEE Transactions on Intelligent Transportation Systems引用 348
Target Tracking and Data Fusion in Sensor NetworksAutonomous Vehicle Technology and SafetyRobotics and Sensor-Based Localization

摘要

The accurate detection and classification of moving objects is a critical aspect of advanced driver assistance systems. We believe that by including the object classification from multiple sensor detections as a key component of the object's representation and the perception process, we can improve the perceived model of the environment. First, we define a composite object representation to include class information in the core object's description. Second, we propose a complete perception fusion architecture based on the evidential framework to solve the detection and tracking of moving objects problem by integrating the composite representation and uncertainty management. Finally, we integrate our fusion approach in a real-time application inside a vehicle demonstrator from the interactIVe IP European project, which includes three main sensors: radar, lidar, and camera. We test our fusion approach using real data from different driving scenarios and focusing on four objects of interest: pedestrian, bike, car, and truck.