Human action recognition in videos based on the Transferable Belief Model (original) (raw)
Hu W, Tan T, Wang L, Maybank S (2004) A survey on visual surveillance of object motion and behaviors. IEEE Trans Systems Man Cybern C 34(3):334–352 Article Google Scholar
Messer K, Christmas WJ, Jaser E, Kittler J, Levienaise-Obadia B, Koubaroulis D (2005) A unified approach to the generation of semantic cues for sports video annotation. Signal Processing 85:357–383 Article Google Scholar
Jaimes A, Sebe N (2005) Multimodal human computer interaction: a survey. In: IEEE International Workshop on Human Computer Interaction in conjunction with ICCV, vol 3766. Beijing, China, pp 1–15
Li B, Errico JH, Pan H, Sezan I (2004) Bridging the semantic gap in sports video retrieval and summarization. J Vis Commun Image Represent 15:393–424 Google Scholar
Sadlier DA, O’Connor NE (2005) Event detection in field sports video using audio-visual features and a support vector machine. IEEE Trans Circuit Syst Video Technol 15(10):1225–1233 Google Scholar
Lew M, Sebe N, Eakins J (2002) Challenges in image and video retrieval. Lect Notes Comput Sci ICIVR 2383:1–6 Article Google Scholar
Freitas ND, Brochu E, Barnard K, Duygulu P, Forsyth D (2002) Bayesian models for massive multimedia databases: a new frontier. In: Valencia International Meeting on Bayesian Statistics/2002 ISBA International Meeting
Shah M (2003) Understanding human behavior from motion imagery. Mach Vis Appl 14:210–214 Article Google Scholar
Hongeng S, Nevatia R, Bremond F (2004) Video-based event recognition and probabilistic recognition methods. Comput Vis Image Underst 96:129–162 Article Google Scholar
Klir GJ, Wierman MJ (1999) Uncertainty-based information. Elements of generalized information theory, 2nd edn. Studies in fuzzyness and soft computing. Physica-Verlag, New York
Dubois D, Grabisch M, Prade H, Smets Ph (2001) Using the transferable belief model and a qualitative possibility theory approach on an illustrative example: the assessment of the value of a candidate. Int J Intell Syst 16:1245–1272 ArticleMATH Google Scholar
Ristic B, Smets P (2005) Target identification using belief functions and implication rules. IEEE Trans Aerosp Electron Syst 41(3):1097–1102 Article Google Scholar
Petkovic M, Jonker W (2004) Integrated use of different content derivation techniques within a multimedia database management system. J Vis Commun Image Represent 15:303–329 Article Google Scholar
Shafer G (1976) A mathematical theory of evidence. Princeton University Press, Princeton MATH Google Scholar
Smets P (1994) Advances in the Dempster–Shafer theory of evidence—What is Dempster–Shafer’s model? In: Yager RR, Fedrizzi M, Kacprzyk J, edition. Wiley, New York, pp 5–34
Ramasso E, Rombaut M, Pellerin D (2006) A temporal belief filter improving human action recognition in videos. In: IEEE international conference on acoustics, speech and signal processing, vol 2, pp 141–144
Schubert J (2004) Clustering belief functions based on attracting and conflicting metalevel evidence using Potts spin mean field theory. Inform Fusion 5(4):309–318 ArticleMathSciNet Google Scholar
Wang L, Hu W, Tan T (2003) Recent developments in human motion analysis. Pattern Recognit 36(3):585–601 Article Google Scholar
Yacoob Y, Black M (1999) Parametrized modeling and recognition of activities. Comput Vis Image Underst 73(2):232–247 Article Google Scholar
Rabiner LR (1989) A tutorial on hidden Markov models and selected applications in speech recognition. Proc IEEE 77:257–285 Article Google Scholar
Xiang T, Gong S (2003) Discovering Bayesian causality among visual events in a complex outdoor scene. In: IEEE on advanced video and signal based surveillance, pp 177–182
Luo Y, Wu TD, Hwang JN (2003) Object-based analysis and interpretation of human motion in sports video sequences by dynamic Bayesian networks. Comput Vis Image Underst 92:196–216 Article Google Scholar
Vefghi L, Linkens DA (1999) Dynamic monitoring and control of patient anaesthetic and dose levels: time-delay, moving-average neural networks, and principal components analysis. Comput Methods Programs Biomed 59:91–106 Article Google Scholar
Zhong D, Chang S-F (2004) Real-time view recognition and event detection for sports video. J Vis Commun Image Represent 15:330–347 Article Google Scholar
Medioni G, Cohen I, Brémond F, Hongeng S, Nevatia R (2001) Event detection and analysis from video streams. PAMI 23(8):873–889 Google Scholar
Ayers D, Shah M (2001) Monitoring human behavior from video taken in an office environment. Image Vis Comput 13:833–846 Article Google Scholar
Ding Z, Bunke H, Schneider M, Kandel A (2005) Fuzzy timed Petri net: definitions, properties, and applications. Math Comput Model 41:345–360 ArticleMATHMathSciNet Google Scholar
Lee SJ, Seong PH (2004) Development of automated operating procedure system using fuzzy colored Petri nets for nuclear power plants. Ann Nucl Energy 31:849–869 Article Google Scholar
Fay A (2000) A fuzzy knowledge-based system for railway traffic control. Eng Appl Artif Intell 13:719–729 Article Google Scholar
Bourbakis N, Gattiker JR, Bebis G (2003) Interpreting a dynamic and uncertain world: task-based control. Int J Artif Intell Tools 12(1):5–85 Article Google Scholar
Nigro JM, Loriette-Rougegrez S, Rombaut M (2002) Driving situation recognition with uncertainty management and rule-based systems. Eng Appl Artif Intell 15:217–228 Article Google Scholar
Rombaut M, Jarkass I, Denoeux T (1999) State recognition in discret dynamical systems using Petri nets and evidence theory. In: European conference on symbolic and quantitative approaches to reasoning with uncertainty
Girondel V, Caplier A, Bonnaud L, Rombaut M (2005) Belief theory-based classifiers comparison for static human body postures recognition in video. Int J Signal Process 2(1):29–33 Google Scholar
Hammal Z, Caplier A, Rombaut M (2005) Belief theory applied to facial expressions classification. In: International conference on advances in pattern recognition, Bath, UK
Moeslund TB, Granum E (2001) A survey of computer vision-based human motion capture. Comput Vis Image Underst 81:231–268 ArticleMATH Google Scholar
Wang J, Singh S (2003) Video analysis of human dynamics—a survey. Real-Time Imaging 9(5):321–346 Article Google Scholar
Odobez JM, Bouthemy P (1995) Robust multiresolution estimation of parametric motion models. J Vis Commun Image Represent 6(4):348–365 Article Google Scholar
Piriou G, Bouthemy P, Peyrard N, Yao JF (2002) Probabilistic models of image motion for recognition of dynamic content in video. In: International workshop on computer vision and image analysis, vol 11. Las Palmas de Gran Canaria, Spain
Fablet R, Bouthemy P, Perez P (2002) Non parametric motion characterization using causal probabilistic models for video indexing and retrieval. IEEE Trans Image Process 11(4):393–407 Article Google Scholar
Panagiotakis C, Tziritas G (2004) Recognition and tracking of the members of a moving human body. In: Articulated motion and deformable objects, pp 86–98
Yaghlane B, Smets P, Mellouli K (2002) Independence concept for belief functions. In: Technologies for constructing intelligent systems: tools, Heidelberg, Germany. Physica-Verlag GmbH, New York
Ayoun A, Smets Ph (2001) Data association in multi-target detection using the transferable belief model. Int J Intell Syst 16(10):1167–1182
Zribi M, Benjelloun M (2003) Parametric estimation of Dempster–Shafer belief functions. In: International conference on information fusion, pp 485–491
Elouedi Z, Mellouli K, Smets Ph (2004) Assessing sensor reliability for multisensor data fusion within the transferable belief model. IEEE Trans Syst Man Cybern 34(1):782–787 Article Google Scholar
Smets P (1993) Beliefs functions: the disjunctive rule of combination and the Generalized Bayesian Theorem. Int J Approx Reason 9:1–35 ArticleMATHMathSciNet Google Scholar
Rombaut M, Zhu YM (2002) Study of Dempster–Shafer theory for image segmentation applications. Image Vis Comput 20(1):15–23 Article Google Scholar
Denoeux T, Yaghlane AB (2002) Approximating the combination of belief functions using the fast moebius transform in a coarsened frame. Int J Approx Reason 37:77–101 Article Google Scholar
Philippe Smets (2002) The application of the matrix calculus to belief functions. Int J Approx Reason 31(1–2):1–30 ArticleMATHMathSciNet Google Scholar
Haenni R, Lehmann N (2003) Implementing belief function computations. Int J Intell Syst 18(1):31–49 ArticleMATH Google Scholar
Smets Ph (2005) Decision making in the TBM: the necessity of the pignistic transformation. Int J Approx Reason 38:133–147 ArticleMATHMathSciNet Google Scholar
Ramasso E, Pellerin D, Rombaut M (2006) Belief scheduling for the recognition of human action sequence. In: International conference on information fusion, Florence, Italia, pp 1–8
Panagiotakis C, Ramasso E, Tziritas G, Rombaut M, Pellerin D (2006) Shape-motion based athlete tracking for multilevel action recognition. In: Perales FJ, Fisher RB (eds) Proceedings of the fourth international conference on articulated motion and deformable objects. Springer, Berlin, pp 385–394
Witten IH, Frank E (2005) Data-mining: practical machine learning tools and techniques, 2nd edn. Morgan Kaufman, San Francisco, Publishers, pp 560. ISBN 0-12-088407-0