Title :
Sparse keypoint models for 6D object pose estimation
Author :
Sadran, Emal ; Wurm, Kai M. ; Burschka, D.
Author_Institution :
Inst. for Comput. Sci., Tech. Univ. at Muenchen, Garching, Germany
Abstract :
In this paper, we present an approach to generate sparse object models for keypoint-based 6D object pose estimation. Keypoint-based object models usually consist of thousands of keypoints. Our approach generates sparse models by identifying and removing keypoints that are not relevant to the object localization. It applies data association to detect duplicate keypoints and applies statistical analysis to identify keypoints that have not been detected reliably during model generation. Our approach furthermore ensures that keypoints are well distributed across the volume of the object model. We evaluated our approach using a SIFT-based 6D object localization system on the basis of real world datasets. In our experiments, we achieved a reduction of the model sizes to approximately 1% of the original model size without a substantial loss of localization performance.
Keywords :
image fusion; object detection; pose estimation; robot vision; transforms; SIFT-based 6D object localization system; data association; duplicate keypoint detection; keypoint-based 6D object pose estimation; keypoint-based object models; object localization performance; real world datasets; scale-invariant feature transforms; sparse object model generation; statistical analysis; Cameras; Computational modeling; Databases; Estimation; Noise; Solid modeling; Three-dimensional displays;
Conference_Titel :
Mobile Robots (ECMR), 2013 European Conference on
Conference_Location :
Barcelona
DOI :
10.1109/ECMR.2013.6698859