Current paradigms in intelligent transportation systems
Current paradigms in intelligent transportation systems
- Author(s): S.L. Toral ; M.R. Martínez Torres ; F.J. Barrero ; M.R. Arahal
- DOI: 10.1049/iet-its.2009.0102
For access to this article, please select a purchase option:
Buy article PDF
Buy Knowledge Pack
IET members benefit from discounts to all IET publications and free access to E&T Magazine. If you are an IET member, log in to your account and the discounts will automatically be applied.
Thank you
Your recommendation has been sent to your librarian.
- Author(s): S.L. Toral 1 ; M.R. Martínez Torres 2 ; F.J. Barrero 1 ; M.R. Arahal 1
-
-
View affiliations
-
Affiliations:
1: E.S. Ingenieros, University of Seville, Seville, Spain
2: E.U.E. Empresariales, University of Seville, Seville, Spain
-
Affiliations:
1: E.S. Ingenieros, University of Seville, Seville, Spain
- Source:
Volume 4, Issue 3,
September 2010,
p.
201 – 211
DOI: 10.1049/iet-its.2009.0102 , Print ISSN 1751-956X, Online ISSN 1751-9578
Intelligent transportation systems (ITS) constitute today a multidisciplinary field of study involving a large number of different research areas. As a consequence, it is difficult to achieve a structured view of ITS, which is necessary to unify efforts and as guidance for future developments. This study aims to identify the main paradigms in the field of ITS by semantically analysing studies related to this general topic. An understanding about which research is considered valuable by the research community to build upon may provide valuable insights in this field. As a result of the statistical treatment of data, up to 13 paradigms are obtained. The scope of these paradigms and the relationships between them have also been detailed, providing a structured vision of ITS synthesised in a map form.
Inspec keywords: traffic engineering computing
Other keywords:
Subjects: Traffic engineering computing
References
-
-
1)
- A.C. Rencher . (2002) Methods of multivariate analysis.
-
2)
- W. Xu , Y. Gong . Document clustering by concept factorization. Proc. Int. Conf. on Research and Development Information Retrieval , 202 - 209
-
3)
- S. Toral , M. Vargas , F. Barrero . Embedded multimedia processors for road-traffic parameter estimation. Computer , 12 , 61 - 68
-
4)
- T.L. Griffiths , M. Steyvers . Finding scientific topics. Proc. National Academy of Sciences, USA , 5228 - 5235
-
5)
- G. Salto , M.J. Mcgill . (1983) An introduction to modern information retrieval.
-
6)
- M. Koskela , A.F. Smeaton , J. Laaksonen . Measuring concept similarities in multimedia ontologies: analysis and evaluations. IEEE Trans. Multimedia , 5 , 912 - 922
-
7)
- J. Shi , J. Malik . Normalized cuts and image segmentation. IEEE Trans. Pattern Anal. Mach. Intel. , 8 , 888 - 905
-
8)
- C.D. Manning , H. Schütze . (1999) Foundations of statistical natural language processing.
-
9)
- W. Xu , X. Liu , Y. Gong . Document clustering based on non-negative matrix factorization. Proc. Int. Conf. on Research and Development in Information Retrieval , 267 - 273
-
10)
- C. Chen , R.J. Paul . Visualizing a knowledge domain's intellectual structure. Computer , 3 , 65 - 71
-
11)
- D.M. Blei , A.Y. Ng , M.I. Jordan . Latent Dirichlet allocation. J. Mach. Learn. Res. , 993 - 1022
-
12)
- V. Sugumaran , V.C. Storey . Ontologies for conceptual modeling: their creation, use and management. Data Knowl. Eng. , 251 - 271
-
13)
- I. Rowlands . Patterns of author co-citation in information policy: evidence of social, collaborative and cognitive structure. Scientometrics , 3 , 533 - 546
-
14)
- http://isi3.isiknowledge.com, accessed October 2009.
-
15)
- (2006) Strategic research agenda.
-
16)
- Shafiei, M.M., Milios, E.E.: `Latent Dirichlet co-clustering', Sixth Int. Conf. on Data Mining, ICDM'06, 2006, p. 542–551.
-
17)
- H. Small . Co-citation in the scientific literature: a new measure of the relationship between two documents. Essays Info. Sci. , 28 - 31
-
18)
- A.Y. Ng , M. Jordan , Y. Weiss . (2001) On spectral clustering: analysis and an algorithm, Advances in neural information processing systems 14.
-
19)
- O. Andrisano , R. Verdone , M. Nakagawa . Intelligent transportation systems: the role of third generation mobile radio networks. IEEE Commun. Mag. , 9 , 144 - 151
-
20)
- M. Callon , J.P. Courtial , F. Laville . Co-word analysis as a tool for describing the network of interactions between basic and technological research: the case of polymer chemistry. Scientometrics , 1 , 153 - 205
-
21)
- H. Zha , C. Ding , M. Gu , X. He , H. Simon . (2001) Spectral relaxation for k-means clustering, Advances in neural information processing systems 14.
-
22)
- Figueiredo, L., Jesus, I., Machado, J.A.T., Ferreira, J.R., Martins de carvalho, J.L.: `Towards the development of intelligent transportation systems', Proc. 2001 IEEE Intelligent Transportation Systems, 2001, Oakland, CA, USA, p. 1206–1211.
-
23)
- D. Cai , X. He , J. Han . Document clustering using locality preserving indexing. IEEE Trans. Knowl. Data Eng. , 12 , 1624 - 1637
-
24)
- T. Hofmann . Unsupervised learning by probabilistic latent semantic analysis. Mach. Learn. J. , 1 , 177 - 196
-
25)
- S. Deerwester , S.T. Dumais , G.W. Furnas , T.K. Landauer , R. Harshman . Indexing by latent semantic analysis. J. Am. Soc. Inf. Sci. , 6 , 391 - 407
-
26)
- F.-Y. Wang , P.B. Mirchandani , N. Zheng . Advances and trends in research and development of intelligent transportation systems: an introduction to the special issue. IEEE Trans. Intell. Transp. Syst. , 4 , 222 - 223
-
27)
- B. Mcqueen , J. Mcqueen . (1999) Intelligent transportation systems architectures.
-
28)
- C.H. Cheng , A. Kumar , J.G. Motwani , A. Reisman , M.S. Madan . A Citation analysis of the technology innovation management journals. IEEE Trans. Eng. Manage. , 1 , 4 - 13
-
29)
- Y. Ding , G.G. Chowdhury , S. Foo . Bibliometric cartography of information retrieval research by using co-word analysis. Inf. Process. Manage. , 817 - 842
-
30)
- US Department of Transportation, Federal Highway Administration: ‘Intelligent transportation systems benefits, costs and lessons learned’ (Mitretek Systems, 2005).
-
31)
- C. Wohlin . An analysis of the most cited articles in software engineering journals – 2001. Inf. Soft. Technol. , 3 - 9
-
32)
- S. Toral , M. Vargas , F. Barrero , M.G. Ortega . Improved sigma-delta background estimation for vehicle detection. Electron. Lett. , 1 , 32 - 34
-
33)
- M. Natvig , H. Westerheim . National multimodal travel information – a strategy based on stakeholder involvement and intelligent transportation system architecture. IET Intell. Transp. Syst. , 2 , 102 - 109
-
34)
- N. Zheng , H. Kawashima . Advances and trends in research and development of vehicular electronics and safety: special section. IEEE Trans. Intell. Transp. Syst. , 1 , 106 - 107
-
1)