Advances in real-time object tracking: Extensions for robust object tracking with a Monte Carlo particle filter

被引:0
作者
Mörwald T. [1 ]
Prankl J. [1 ]
Zillich M. [1 ]
Vincze M. [1 ]
机构
[1] Vienna University of Technology, Gusshausstr. 25–29, Vienna
基金
奥地利科学基金会;
关键词
Detection; Modelling; Pose estimation; Robotic perception; Tracking;
D O I
10.1007/s11554-013-0388-4
中图分类号
学科分类号
摘要
The huge amount of literature on real-time object tracking continuously reports good results with respect to accuracy and robustness. However, when it comes to the applicability of these approaches to real-world problems, often no clear statements about the tracking situation can be made. This paper addresses this issue and relies on three novel extensions to Monte Carlo particle filtering. The first, confidence dependent variation, together with the second, iterative particle filtering, leads to faster convergence and a more accurate pose estimation. The third, fixed particle poses removes jitter and ensures convergence. These extensions significantly increase robustness and accuracy, and further provide a basis for an algorithm we found to be essential for tracking systems performing in the real world: tracking state detection. Relying on the extensions above, it reports qualitative states of tracking as follows. Convergence indicates if the pose has already been found. Quality gives a statement about the confidence of the currently tracked pose. Loss detects when the algorithm fails. Occlusion determines the degree of occlusion if only parts of the object are visible. Building on tracking state detection, a model completeness scheme is proposed as a measure of which views of the object have already been learned and which areas require further inspection. To the best of our knowledge, this is the first tracking system that explicitly addresses the issue of estimating the tracking state. Our open-source framework is available online, serving as an easy-access interface for usage in practice. © 2013, The Author(s).
引用
收藏
页码:683 / 697
页数:14
相关论文
共 32 条
  • [1] Chestnutt J., Kagami S., Nishiwaki K., Kuffner J., Kanade T., GPU-accelerated real-time 3D tracking for humanoid locomotion, In: IEEE/RSJ international conference on intelligent robots and systems, (2007)
  • [2] Choi C., Christensen H.I., Robust 3D visual tracking using particle filtering on the special Euclidean group: A combined approach of keypoint and edge features, Int. J. Robot. Res., 31, 4, pp. 498-519, (2012)
  • [3] Collet A., Berenson D., Srinivasa S.S., Ferguson D., Object recognition and full pose registration from a single image for robotic manipulation, IEEE international conference on robotics and automation 27, pp. 48-55, (2009)
  • [4] Doucet A., Godsill S., Andrieu C., On sequential Monte Carlo sampling methods for Bayesian filtering, Stat. Comput., 10, pp. 197-208, (2000)
  • [5] Doucet A., De Freitas N., Gordon N., Et al., Sequential Monte Carlo methods in practice, (2001)
  • [6] Drost B., Ulrich M., Navab N., Ilic S., Model globally, match locally: efficient and robust 3D object recognition, Computer vision and pattern recognition CVPR 2010 IEEE conference on, IEEE, pp. 998-1005, (2010)
  • [7] Fischler M.A., Bolles R.C., Random sample consensus: a paradigm for model fitting with applications to image analysis and automated cortography, Commun. ACM., 24, 6, pp. 381-395, (1981)
  • [8] Fuentes-Pacheco J., Ruiz-Ascencio J., Rendon-Mancha J.M., Binocular visual tracking and grasping of a moving object with a 3D trajectory, J. Appl. Res. Technol., 7, 3, pp. 259-274, (2009)
  • [9] Gordon I., Lowe D.G., What and where: 3D object recognition with accurate pose, Toward category-level object recognition, pp. 67-82, (2006)
  • [10] Kazhdan M., Bolitho M., Hoppe H., Poisson surface reconstruction, Polthier, K., Sheffer, A. (eds.) In: Proceedings of the fourth Eurographics symposium on Geometry processing, Eurographics Association, Eurographics Association, SGP ’06, pp. 61-70, (2006)