2016 IEEE International Conference on Robotics and Automation (ICRA) 2016
DOI: 10.1109/icra.2016.7487784
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Tracking multiple rigid symmetric and non-symmetric objects in real-time using depth data

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Cited by 23 publications
(17 citation statements)
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“…As mentioned in the introduction, the current, widely used standard dataset is the synthetic dataset of Choi and Christensen [4], which contains 4 sequences with 4 objects rendered in a texture-less virtual scene. Another available option is the one provided by Akkaladevi et al [11] who captured a single sequence of a scene containing 4 different objects with a Primesense sensor. However, the 3D models are not complete and do not include training data that could be exploited by learning-based methods.…”
Section: Related Workmentioning
confidence: 99%
“…As mentioned in the introduction, the current, widely used standard dataset is the synthetic dataset of Choi and Christensen [4], which contains 4 sequences with 4 objects rendered in a texture-less virtual scene. Another available option is the one provided by Akkaladevi et al [11] who captured a single sequence of a scene containing 4 different objects with a Primesense sensor. However, the 3D models are not complete and do not include training data that could be exploited by learning-based methods.…”
Section: Related Workmentioning
confidence: 99%
“…We report the distance of the prediction's center with the ground truth in Fig. 4 for each object, and compare the performance with that of the method of Akkaladevi et al [1]. In addition to pose estimation errors indicated by the curves (black for Akkaladevi et al [1], red for ours), we also report points at which the trackers lose track of the objects and must be reset.…”
Section: Profactor 3d Datasetmentioning
confidence: 99%
“…To display the errors, we use "boxpercentile plots" [12], which illustrate the distribution of errors vertically. known in a real-life scenario (where the tracker would, for example, be initialized by another algorithm [1]), we also provide an analysis of the sensitivity of the tracker to perturbations in initialization and show results in Fig. 8.…”
Section: Robustness To Initializationmentioning
confidence: 99%
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“…Für Gegenstände mit Textur ist meist das Aussehen ausreichend für eine Verfolgung der Objektbewegung. Zusätzlich können Methoden aber auch die Form oder Informationen aus Tiefenbildern verwenden, siehe oben oder auch [1].…”
Section: Verfolgung Von Objekten Und Posebestimmungunclassified