Title :
Situation-specific learning for ego-vehicle behavior prediction systems
Author :
Ortiz, Michaël Garcia ; Schmüdderich, Jens ; Kummert, Franz ; Gepperth, Alexander
Author_Institution :
CoR-Lab., Bielefeld Univ., Bielefeld, Germany
Abstract :
We present a system able to predict the future behavior of the ego-vehicle in an inner-city environment. Our system learns the mapping between the current perceived scene (information about the ego-vehicle and the preceding vehicle, as well as information about the possible traffic lights) and the future driving behavior of the ego-vehicle. We improve the prediction accuracy by estimating the prediction confidence and by discarding unconfident samples. The behavior of the driver is represented as a sequence of elementary states termed behavior primitives. These behavior primitives are abstractions from the raw actuator states. Behavior prediction is therefore considered to be a multi-class learning problem. In this contribution, we explore the possibilities of situation-specific learning. We show that decomposing the perceived complex situation into a combination of simpler ones, each of them with a dedicated prediction, allows the system to reach a performance equivalent to a system without situation-specificity. We believe that this is advantageous for the scalability of the approach to the number of possible situations that the driver will encounter. The system is tested on a real world scenario, using streams recorded in inner-city scenes. The prediction is evaluated for a prediction horizon of 3s into the future, and the quality of the prediction is measured using established evaluation methods.
Keywords :
learning (artificial intelligence); natural scenes; psychology; road vehicles; traffic engineering computing; behavior primitives; ego-vehicle behavior prediction system; elementary states sequence; future driving behavior prediction; inner-city environment; inner-city scenes; multiclass learning problem; prediction accuracy; prediction confidence estimation; situation-specific learning; Acceleration; Learning systems; Neurons; Prediction algorithms; Training; Trajectory; Vehicles;
Conference_Titel :
Intelligent Transportation Systems (ITSC), 2011 14th International IEEE Conference on
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4577-2198-4
DOI :
10.1109/ITSC.2011.6083108