Title :
Real-Time Model-Based Rigid Object Pose Estimation and Tracking Combining Dense and Sparse Visual Cues
Author :
Pauwels, Karl ; Rubio, Lorenzo ; Diaz, J. ; Ros, Eduardo
Author_Institution :
Univ. of Granada, Granada, Spain
Abstract :
We propose a novel model-based method for estimating and tracking the six-degrees-of-freedom (6DOF) pose of rigid objects of arbitrary shapes in real-time. By combining dense motion and stereo cues with sparse key point correspondences, and by feeding back information from the model to the cue extraction level, the method is both highly accurate and robust to noise and occlusions. A tight integration of the graphical and computational capability of Graphics Processing Units (GPUs) results in pose updates at frame rates exceeding 60 Hz. Since a benchmark dataset that enables the evaluation of stereo-vision-based pose estimators in complex scenarios is currently missing in the literature, we have introduced a novel synthetic benchmark dataset with varying objects, background motion, noise and occlusions. Using this dataset and a novel evaluation methodology, we show that the proposed method greatly outperforms state-of-the-art methods. Finally, we demonstrate excellent performance on challenging real-world sequences involving object manipulation.
Keywords :
feature extraction; graphics processing units; pose estimation; real-time systems; stereo image processing; GPU computational capability; GPU graphical capability; cue extraction level; dense motion cues; dense visual cues; graphics processing units; object manipulation; occlusions; pose tracking; real-time model-based rigid object pose estimation; real-world sequences; six-degrees-of-freedom pose; sparse keypoint correspondences; sparse visual cues; stereo cues; stereo-vision-based pose estimators; Adaptive optics; Computational modeling; Estimation; Integrated optics; Optical feedback; Optical imaging; Tracking; 6DOF pose estimation; ICP; SIFT; benchmark; graphics processing unit; model-based; optical flow; real-time; stereo; tracking;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.304