Embedding Motion in Model-Based Stochastic Tracking

Particle filtering is now established as one of the most popular methods for visual tracking. Within this framework, there are two important considerations. The first one refers to the generic assumption that the observations are temporally independent given the sequence of object states. The second consideration, often made in the literature, uses the transition prior as the proposal distribution. Thus, the current observations are not taken into account, requiring the noise process of this prior to be large enough to handle abrupt trajectory changes. As a result, many particles are either wasted in low likelihood regions of the state space, resulting in low sampling efficiency, or more importantly, propagated to distractor regions of the image, resulting in tracking failures. In this paper, we propose to handle both considerations using motion. We first argue that, in general, observations are conditionally correlated, and propose a new model to account for this correlation, allowing for the natural introduction of implicit and/or explicit motion measurements in the likelihood term. Second, explicit motion measurements are used to drive the sampling process towards the most likely regions of the state space. Overall, the proposed model handles abrupt motion changes and filters out visual distractors, when tracking objects with generic models based on shape or color distribution. Results were obtained on head tracking experiments using several sequences with moving camera involving large dynamics. When compared against the Condensation Algorithm, they have demonstrated the superior tracking performance of our approach

[1]  Jean-Marc Odobez,et al.  Embedding motion in model-based stochastic tracking , 2004, Proceedings of the 17th International Conference on Pattern Recognition, 2004. ICPR 2004..

[2]  Yong Rui,et al.  Real-time speaker tracking using particle filter sensor fusion , 2004, Proceedings of the IEEE.

[3]  Patrick Pérez,et al.  Data fusion for visual tracking with particles , 2004, Proceedings of the IEEE.

[4]  Étienne Mémin,et al.  Optimal Importance Sampling for Tracking in Image Sequences: Application to Point Tracking , 2004, ECCV.

[5]  Bruno Cernuschi-Frias,et al.  Filtrage conditionnel pour la trajectographie dans des séquences d'images - Application au suivi de points Conditional filters for image sequence tracking - Application to point tracker , 2004 .

[6]  Michael J. Black,et al.  EigenTracking: Robust Matching and Tracking of Articulated Objects Using a View-Based Representation , 1996, International Journal of Computer Vision.

[7]  B. Ripley,et al.  Robust Statistics , 2018, Encyclopedia of Mathematical Geosciences.

[8]  Patrick Pérez,et al.  Maintaining multimodality through mixture tracking , 2003, Proceedings Ninth IEEE International Conference on Computer Vision.

[9]  Timothy J. Robinson,et al.  Sequential Monte Carlo Methods in Practice , 2003 .

[10]  Jean-Marc Odobez,et al.  A Mixed-State I-Particle Filter for Multi-Camera Speaker Tracking , 2003, ICCV 2003.

[11]  Patrick Pérez,et al.  Color-Based Probabilistic Tracking , 2002, ECCV.

[12]  Patrick Pérez,et al.  Towards Improved Observation Models for Visual Tracking: Selective Adaptation , 2002, ECCV.

[13]  Hai Tao,et al.  Object Tracking with Bayesian Estimation of Dynamic Layer Representations , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[14]  David J. Fleet,et al.  Robust online appearance models for visual tracking , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[15]  Yong Rui,et al.  Better proposal distributions: object tracking using unscented particle filter , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[16]  Ying Wu,et al.  A co-inference approach to robust visual tracking , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[17]  Andrew Blake,et al.  Probabilistic tracking in a metric space , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[18]  Michael J. Black,et al.  Learning image statistics for Bayesian tracking , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[19]  M. Worring,et al.  Occlusion robust adaptive template tracking , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[20]  Trevor Darrell,et al.  Reducing drift in parametric motion tracking , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[21]  Neil J. Gordon,et al.  A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking , 2002, IEEE Trans. Signal Process..

[22]  J. Sullivan,et al.  Guiding random particles by deterministic search , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[23]  Simon J. Godsill,et al.  On sequential Monte Carlo sampling methods for Bayesian filtering , 2000, Stat. Comput..

[24]  David J. Fleet,et al.  Stochastic Tracking of 3D Human Figures Using 2D Image Motion , 2000, ECCV.

[25]  Dorin Comaniciu,et al.  Real-time tracking of non-rigid objects using mean shift , 2000, Proceedings IEEE Conference on Computer Vision and Pattern Recognition. CVPR 2000 (Cat. No.PR00662).

[26]  Michael Isard,et al.  Object localization by Bayesian correlation , 1999, Proceedings of the Seventh IEEE International Conference on Computer Vision.

[27]  M. Pitt,et al.  Filtering via Simulation: Auxiliary Particle Filters , 1999 .

[28]  Michael J. Black,et al.  A Probabilistic Framework for Matching Temporal Trajectories: CONDENSATION-Based Recognition of Gestures and Expressions , 1998, ECCV.

[29]  Shaogang Gong,et al.  Colour Model Selection and Adaption in Dynamic Scenes , 1998, ECCV.

[30]  Michael Isard,et al.  ICONDENSATION: Unifying Low-Level and High-Level Tracking in a Stochastic Framework , 1998, ECCV.

[31]  Michael Isard,et al.  A mixed-state condensation tracker with automatic model-switching , 1998, Sixth International Conference on Computer Vision (IEEE Cat. No.98CH36271).

[32]  Michael Isard,et al.  Active Contours , 2000, Springer London.

[33]  오승준 [서평]「Digital Video Processing」 , 1996 .

[34]  Patrick Pérez,et al.  Statistical model-based estimation and tracking of non-rigid motion , 1996, Proceedings of 13th International Conference on Pattern Recognition.

[35]  Jean-Marc Odobez,et al.  Robust Multiresolution Estimation of Parametric Motion Models , 1995, J. Vis. Commun. Image Represent..

[36]  Berthold K. P. Horn,et al.  Determining Optical Flow , 1981, Other Conferences.