Title :
Appearance-Based 3D Upper-Body Pose Estimation and Person Re-identification on Mobile Robots
Author :
Weinrich, Ch ; Volkhardt, M. ; Gross, H.-M.
Author_Institution :
Neuroinf. & Cognitive Robot. Lab., Ilmenau Univ. of Technol., Ilmenau, Germany
Abstract :
In the field of human-robot interaction (HRI), detection, tracking and re-identification of humans in a robot´s surroundings are crucial tasks, e. g. for socially compliant robot navigation. Besides the 3D position detection, the estimation of a person´s upper-body orientation based on monocular camera images is a challenging problem on a mobile platform. To obtain real-time position tracking as well as upper-body orientation estimations, the proposed system comprises discriminative detectors whose hypotheses are tracked by a Kalman filter-based multi-hypotheses tracker. For appearance-based person recognition, a generative approach, based on a 3D shape model, is used to refine these tracked hypotheses. This model evaluates edges and color-based discrimination from the background. Furthermore, for each person the texture of his or her upper-body is learned and used for person re-identification. When computational resources are limited, the update rate of the model-based optimization reduces itself automatically. Thereby the estimation accuracy decreases, but the system keeps tracking the persons around the robot in real-time. The person´s 3D pose is tracked up to a distance of 5.0 meters with an average Euclidean error of 18 cm. The achieved motion independent average upper-body orientation error is 22°. Furthermore, the upper-body texture is learned on-line which allowed a stable person re-identification in our experiments.
Keywords :
Kalman filters; human-robot interaction; mobile robots; object detection; object tracking; path planning; pose estimation; robot vision; solid modelling; 3D position detection; 3D shape model; HRI; Kalman filter-based multi-hypotheses tracker; appearance-based 3D upper-body pose estimation; appearance-based person recognition; color-based discrimination; discriminative detectors; edge-based discrimination; generative approach; human detection; human reidentification; human tracking; human-robot interaction; mobile platform; mobile robots; monocular camera images; person reidentification; person upper-body orientation estimation; realtime position tracking; socially compliant robot navigation; Adaptation models; Detectors; Image color analysis; Optimization; Robots; Solid modeling; Three-dimensional displays; appearance model; person re-identification; person tracking; upper-body pose estimation;
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
Conference_Location :
Manchester
DOI :
10.1109/SMC.2013.748