Citation: Matthieu Canaud, Lyudmila Mihaylova, Jacques Sau, Nour-Eddin El Faouzi. Probability hypothesis density filtering for real-time traffic state estimation and prediction[J]. Networks and Heterogeneous Media, 2013, 8(3): 825-842. doi: 10.3934/nhm.2013.8.825
[1] | Matthieu Canaud, Lyudmila Mihaylova, Jacques Sau, Nour-Eddin El Faouzi . Probability hypothesis density filtering for real-time traffic state estimation and prediction. Networks and Heterogeneous Media, 2013, 8(3): 825-842. doi: 10.3934/nhm.2013.8.825 |
[2] | Ye Sun, Daniel B. Work . Error bounds for Kalman filters on traffic networks. Networks and Heterogeneous Media, 2018, 13(2): 261-295. doi: 10.3934/nhm.2018012 |
[3] | Olli-Pekka Tossavainen, Daniel B. Work . Markov Chain Monte Carlo based inverse modeling of traffic flows using GPS data. Networks and Heterogeneous Media, 2013, 8(3): 803-824. doi: 10.3934/nhm.2013.8.803 |
[4] | Michael Herty, Lorenzo Pareschi, Mohammed Seaïd . Enskog-like discrete velocity models for vehicular traffic flow. Networks and Heterogeneous Media, 2007, 2(3): 481-496. doi: 10.3934/nhm.2007.2.481 |
[5] | Paola Goatin, Chiara Daini, Maria Laura Delle Monache, Antonella Ferrara . Interacting moving bottlenecks in traffic flow. Networks and Heterogeneous Media, 2023, 18(2): 930-945. doi: 10.3934/nhm.2023040 |
[6] | Edward S. Canepa, Alexandre M. Bayen, Christian G. Claudel . Spoofing cyber attack detection in probe-based traffic monitoring systems using mixed integer linear programming. Networks and Heterogeneous Media, 2013, 8(3): 783-802. doi: 10.3934/nhm.2013.8.783 |
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[10] | Paola Goatin, Sheila Scialanga . Well-posedness and finite volume approximations of the LWR traffic flow model with non-local velocity. Networks and Heterogeneous Media, 2016, 11(1): 107-121. doi: 10.3934/nhm.2016.11.107 |
Biomedical and health information processing and analysis is playing an increasingly important role in life sciences and medicine. Relevant technologies are developing rapidly and help to assess surgical risks, process electronic medical records (EMR) or medical images, and provide precision medicine. This special issue aims to present some research about the application of medical data mining, and bioinformatics in processing or analyzing biomedical and health information.
There are 7 full length articles in this special issue. All articles are focused on medical data mining and bioinformatics.
Wan et al. [1] proposed a ELMo-ET-CRF model to extract medical named entities from Chinese EMR. The model used a Chinese medical domain-specific pretrained ELMo model as embedding layer, an encoder from transformer (ET) as encoding layer, conditional random field (CRF) as decoding layer, respectively. The model achieved competitive performance to the current state-of-the-art method on CCKS 2019 datasets.
Che et al. [2] integrated temporal convolutional network (TCN) and CRF for biomedical named entity recognition. The model significantly reduced training time while achieved comparable performance to the state-of-the-art methods on GENIA and CoNLL-2003 datasets.
Based on a pre-trained language model, Zhang et al. [3] presented a novel encoder-decoder structure for Chinese clinical event detection. The structure integrated contextual representations and character embeddings to improve semantic understanding. The experiments demonstrated the novel structure achieved the best precision, recall and F1-score.
Cheng et al. [4] optimized the U-Net for retinal blood vessel segmentation by adding dense blocks. This optimization improved the sensitivity of small blood vessels and outperformed state-of-the-art methods on two public datasets DRIVE and CHASE_DB1.
Liu et al. [5] proposed four methods, namely SESOP, STSSO, SESOP-MFIR and STSSO-MFIR, for the surgical outcome monitoring. The methods were optimized by standardizing variables, replacing statistics, and upgrading the control limits from asymptotic to time-varying. The experiments showed that the methods could effectively monitor surgical outcomes and early shifts.
Zhang et al. [6] proposed an anomaly detection method based on local density. By integrating with homomorphic encryption, the method could effectively and efficiently perform anomaly detection in the case of multi-party participation without leaking the private data of participants.
Hou et al. [7] developed a knowledge representation model named precision medicine ontology (PMO) to represent the relationships among 11 fields related to precision medicine, such as diseases, phenotypes, genes, mutations, drugs, etc., in 93 semantic relationships. Compared with the existing work, PMO covered mutations, genes and gene products more extensively, and had richer term set including 4.53 million terms.
In conclusion, this special issue provides 7 outstanding full-length research articles, mainly about the application of medical data mining, and bioinformatics in processing or analyzing biomedical and health information. We sincerely express our gratitude to all researchers who accepted our invitation and contributed to this special issue. In addition, we also thank MBE for editing assistance.
The work is supported by Natural Science Foundation of China (No. 61772146 and No. 61672450) and Guangzhou Science Technology and Innovation Commission (No. 201803010063).
The authors declare that they have no conflict of interest.
[1] |
M. Arulampalam, S. Maskell, N. Gordon and T. Clapp, A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking, IEEE Transactions on Signal Processing, 50 (2002), 174-188. doi: 10.1109/78.978374
![]() |
[2] | G. Battistelli, L. Chisci, S. Morrocchi, F. Papi, A. Benavoli, A. Di Lallo, A. Farina and A. Graziano, Traffic intensity estimation via PHD filtering, In "Proc. 5th European Radar Conf.," Amsterdam, The Netherlands, (2008), 340-343. |
[3] | A. Ben Aissa, J. Sau, N-E. El Faouzi and O. De Mouzon, Sequential Monte Carlo traffic estimation for intelligent transportation system: Motorway travel time prediction application, "In Proc. Of the 2nd ISTS," Lausanne, Switzerland (2006). |
[4] |
R. Billot, N-E. El Faouzi, J. Sau and F. De Vuyst, Integrating the impact of rain into traffic management: Online traffic state estimation using sequential Monte Carlo techniques, Transportation Research Record: Journal of the Transportation Research Board, 2169 (2010), 141-149. doi: 10.3141/2169-15
![]() |
[5] | Z. Chen, Bayesian filtering: From Kalman filters to particle filters, and beyond, Adaptive Systems Lab., Technical Report, McMaster University, ON, Canada (2003). |
[6] | M. Canaud, N-E. El Faouzi and J. Sau, Reservoir-based urban traffic modeling for travel time estimation: Sensitivity analysis and case study, In "Proc. Of the 91th Transportation Research Board Annual Meeting," Washington D. C., USA, (2012). |
[7] |
C. Daganzo, The cell transmission model: A dynamic representation of highway traffic consistent with the hydrodynamic theory, Transportation Research B, 28 (1994), 269-287. doi: 10.1016/0191-2615(94)90002-7
![]() |
[8] | A. Doucet, "Monte Carlo Methods for Bayesian Estimation of Hidden Markov Models. Application to Radiation Signals," PhD thesis, Université Paris-Sud, Orsay (1997). |
[9] | A. Doucet, On sequential simulation-based methods for Bayesian filtering, Departement of Engineering, Technical report CUED/F-INFENG/TR.310, Cambridge University (1998). |
[10] | A. Doucet, N. De Freitas and N. Gordon, "Sequential Monte Carlo Methods in Practice," Statistics for Engineering and Information Science. Springer-Verlag, New York, 2001. xxviii+581 pp. |
[11] | N-E. El Faouzi, Research needs for real time monitoring, surveillance and control of road networks under adverse weather conditions, Research Agenda for the European Cooperation in the field of scientific and technical research (COST), (2007) - www.COST-TU0702.org. |
[12] |
O. Erdinc, P. Willett and Y. Bar-Shalom, Probability hypothesis density filter for multitarget multisensor tracking, In "Proc. Of the 8th Int. Conf. On Information Fusion," 146-153, Philadelphia, PA, USA (2005). doi: 10.1109/ICIF.2005.1591848
![]() |
[13] |
K. Gilholm, S. Godsill, S. Maskell and D. Salmond, Poisson models for extended target and group tracking, In "Proc. SPIE: Signal and Data Processing of Small Targets 5913," {230-241}, San. Diego, CA, USA (2005). doi: 10.1117/12.618730
![]() |
[14] |
K. Gilholm and D. Salmond, Spatial distribution model for tracking extended objects, In "Proc. IEEE on Radar, Sonar and Navigation,'' 152 (2005), 364-371. doi: 10.1049/ip-rsn:20045114
![]() |
[15] | A. Gning, L. Mihaylova and F. Abdallah, Mixture of uniform probability density functions for non linear state estimation using interval analysis, In "Proc. Of the 13th Int. Conf. On Information Fusion," Edinburgh, UK (2010). |
[16] | A. Gning, B. Ristic and L. Mihaylova, A box particle filter for stochastic set-theoretic measurements with association uncertainty, In "Proc. Of the 14th Int. Conf. On Information on Fusion," Chicago, IL, USA (2011). |
[17] |
A. Gning, B. Ristic and L. Mihaylova, Bernouilli particle/box particle filters for detection and tracking in the presence of triple uncertainty, IEEE Trans. Signal Processing, 60 (2012), 2138-2151. doi: 10.1109/TSP.2012.2184538
![]() |
[18] |
A. Hegyi, D. Girimonte, R. Babuska and B. De Schutter, A comparison of filter configurations for freeway traffic state estimation, In "Proc. Of the 2006 IEEE Intelligent Transportation Systems Conference (ITSC 2006)," 1029-1034, Toronto, Canada (2006). doi: 10.1109/ITSC.2006.1707357
![]() |
[19] | R. Juang and P. Burlina, Comparative performance evaluation of GM-PHD filter in clutter, In "Proc. Of the 12t Internatiinal Conf. On Information Fusion," (2009), 1195-1202. |
[20] |
S. Julier and J. Uhlmann, A new extension of the Kalman filter to nonlinear systems, In "International Symposium on Aerospace/Defense Sensing, Simulation and Controls," 182-193, Orlando, FL, USA (1997). doi: 10.1117/12.280797
![]() |
[21] |
R. Kalman, A new approach to linear filtering and prediction problems, Journal of Basic Engineering, 82 (1960), 35-45. doi: 10.1115/1.3662552
![]() |
[22] | J. Lebacque, The Godunov scheme and what it means for first order traffic flow models, In "Proc. Of the 13th nternaional symposium on transportation and traffic theory (ISTTT)," (1995), 647-677. |
[23] |
R. Mahler, Multitarget bayes filtering via first-order multitarget moments, IEEE Transactions on Aerospace and Electronic Systems, 39 (2003), 1152-1178. doi: 10.1109/TAES.2003.1261119
![]() |
[24] | R. Mahler, Statistical multisources multitarget information fusion, Artech House, 2007. |
[25] | R. Mahler, PHD filters for nonstandard targets, I: Extended targets, In "Proc. Of the 12th International Conference on Information Fusion," 914-921, Seattle, WA, USA (2009). |
[26] |
R. Mahler, B-T. Vo and B-N. Vo, CPHD filtering with unknown clutter rate and detection profile, IEEE Transactions on Signal Processing, 59 (2011), 3497-3513. doi: 10.1109/TSP.2011.2128316
![]() |
[27] |
L. Mihaylova and R. Boel, A particle filter for freeway traffic estimation, In "Proc. Of the 43rd IEEE Conference on Decision and Control," Atlantis, Paradise Island, Bahamas, 2 (2004), 2106-2111. doi: 10.1109/CDC.2004.1430359
![]() |
[28] |
L. Mihaylova, R. Boel and A. Hegyi, Freeway traffic estimation within recursive bayesian framework, Automatica J. IFAC, 43 (2007), 290-300. doi: 10.1016/j.automatica.2006.08.023
![]() |
[29] | {L. Mihaylova, A. Hegyi, A. Gning and R. Boel, Parallelized Particle and Gaussian Sum Particle Filters for Large Scale Traffic Systems,}, IEEE transactions on intelligent transportation systems. Special issue on emergent cooperative technologies in intelligent transp. Systems, 13 (2012), 36-48. |
[30] |
K. Panta, B. Vo, S. Singh and A. Doucet, Probability hypothesis density filter versus multiple hypothesis tracking, In "Proceedings of SPIE," 5429 (2004), 284-295. doi: 10.1117/12.543357
![]() |
[31] | B. Ristic, M. Arulampalam and N. Gordon, "Beyond the Kalman Filter: Particle Filters for Tracking Applications," Artech House, Boston, 2004. |
[32] | B. Ristic, D. Clark and B. Vo, Improved SMC implementation of the PHD filter, In "Proc. Of the 13th International Conference on Information Fusion," Edinburgh, UK (2010). |
[33] | J. Sau, N-E. El Faouzi and O. De Mouzon, Particle-filter traffic state estimation and sequential test for real-time traffic sensor diagnosis, In "Proc. Of ISTS'08 Symposium," Queensland (2008). |
[34] | M. Schikora, A. Gning, L. Mihaylova, D. Cremers and W. Koch, Box-particle PHD filter for multi-target tracking, IEEE Trans. on Aerospace and Electronic Systems, to appear (2013). |
[35] | H. Sidenbladh, Multi-target particle filtering for the probability hypothesis density, In "Proc. 6th Int'l Conf. on Information Fusion," Cairns, Australia (2003). |
[36] |
A. Sumalee, R. X. Zhong, T. L. Pan and W. Y. Szeto, Stochastic cell transmission model (SCTM): A stochastic dynamic traffic model for traffic state surveillance and assignment, Transportation Research Part B, 45 (2011), 507-533. doi: 10.1016/j.trb.2010.09.006
![]() |
[37] | X. Sun, L. Munoz and R. Horowitz, Highway traffic state estimation using improved mixture Kalman filters for effective ramp metering control, In "Proc. Of th 42nd IEEE Conf. On Decision and Control," 6333-6338, Maui, Hawaii, USA (2003). |
[38] | J. Sussman, Introduction to transportation problems, Artech House, Norwood, Masachussets, 2000. |
[39] | B. Vo, S. Singh and A. Doucet, Sequential Monte Carlo methods for multi-target filtering with random finite sets, IEEE Trans. Aerospace and Electronic Systems, 41 (2005), 1224-1245. |
[40] |
B. Vo and W. Ma, The gaussian mixture probability hypothesis density filter, IEEE Trans. Signal Processing, 54 (2006), 4091-4104. doi: 10.1109/TSP.2006.881190
![]() |
[41] |
B-T. Vo, B-N. Vo and A. Cantoni, Analytic implementations of the cardinalized probability hypothesis density filter, IEEE Trans. Signal. Processing, 55 (2007), 3553-3567. doi: 10.1109/TSP.2007.894241
![]() |
[42] | N.-N. Vo, B.-T. Vo and D. Clark, Bayesian multiple target tracking using random finite sets, ch. 3 in "Integrated Tracking, Classification, and Sensor Management: Theory and Applications," Eds. M. Mallick, V. Krishnamurthy, and B.-N. Vo, 75-125. John Wiley & Sons, 2012. |
[43] |
Y. Wang, M. Papageorgiou and A. Messmer, Real-time freeway traffic state estimation based on extended Kalman filter: A case study, Transportation Science, 41 (2007), 167-181. doi: 10.1287/trsc.1070.0194
![]() |
[44] |
Y. Wang, M. Papageorgiou, A. Messmer, P. Coppola, A. Tzimitsi and A. Nuzzolo, An adaptive freeway traffic state estimator, Automatica, 45 (2009), 10-24. doi: 10.1016/j.automatica.2008.05.019
![]() |
[45] | N. Whiteley, S. Singh and S. Godsill, Auxiliary particle implementation of the probability hypothesis density filter, IEEE Trans. on Aerospace and Electronic Systems, 46 (2010), 1437-1454. |
[46] | D. Work, S. Blandin, O-P. Tossavainen, B. Piccoli and A. Bayen, A Traffic Model for Velocity Data Assimilation, Applied Mathematics Research eXpress, 2010 (2010), 1-35. |
[47] |
D. Work, O.-P. Tossavainen, S. Blandin, A. M. Bayen, T. Iwuchukwu and K. Tracton, An ensemble Kalman filtering approach to highway traffic estimation using GPS enabled mobile devices, Proceedings of CDC, (2008), 5062-5068. doi: 10.1109/CDC.2008.4739016
![]() |
[48] |
T. Zajic and R. Mahler, Particle-systems implementation of the PHD multitarget tracking filter, In "Proceedings of SPIE," Signal Processing, Sensor Fusion, and Target Recognition, XII, 5096 (2003), 291-299, Bellingham. doi: 10.1117/12.488533
![]() |
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