An evidence clustering DSmT approximate reasoning method based on convex functions analysis

The computational complexity of Dezert-Smarandache Theory (DSmT) increases exponentially with the linear increment of element number in the discernment frame, and it limits the wide applications and development of DSmT. In order to efficiently reduce the computational complexity and remain high accuracy, a new Evidence Clustering DSmT Approximate Reasoning Method for two sources of information is proposed based on convex function analysis. This new method consists of three steps. First, the belief masses of focal elements in each evidence are clustered by the Evidence Clustering method. Second, the un-normalized approximate fusion results are obtained using the DSmT approximate convex function formula, which is acquired based on the mathematical analysis of Proportional Conflict Redistribution 5 (PCR5) rule in DSmT. Finally, the normalization step is applied. The computational complexity of this new method increases linearly rather than exponentially with the linear growth of the elements. The simulations show that the approximate fusion results of the new method have higher Euclidean similarity to the exact fusion results of PCR5 based information fusion rule in DSmT framework (DSmT + PCR5), and it requires lower computational complexity as well than the existing approximate methods, especially for the case of large data and complex fusion problems with big number of focal elements.

[1]  Youcef Chibani,et al.  A DSmT based combination scheme for multi-class classification , 2013, Proceedings of the 16th International Conference on Information Fusion.

[2]  Franck Luthon,et al.  Theory of evidence for face detection and tracking , 2012, Int. J. Approx. Reason..

[3]  Florentin Smarandache,et al.  Advances and Applications of DSmT for Information Fusion , 2004 .

[4]  Arnaud Martin,et al.  Implementing general belief function framework with a practical codification for low complexity , 2008, ArXiv.

[5]  Quan Pan,et al.  Combination of sources of evidence with different discounting factors based on a new dissimilarity measure , 2011, Decis. Support Syst..

[6]  Jean Dezert,et al.  Presentation of DSmT , 2016 .

[7]  Glenn Shafer,et al.  Perspectives on the theory and practice of belief functions , 1990, Int. J. Approx. Reason..

[8]  John Illingworth,et al.  Sensor fusion by a novel algorithm for time delay estimation , 2012, Digit. Signal Process..

[9]  Richa Singh,et al.  Integrated multilevel image fusion and match score fusion of visible and infrared face images for robust face recognition , 2008, Pattern Recognit..

[10]  Thierry Denoeux,et al.  Approximating the combination of belief functions using the fast Mo"bius transform in a coarsened frame , 2002, Int. J. Approx. Reason..

[11]  Bjørnar Tessem,et al.  Approximations for Efficient Computation in the Theory of Evidence , 1993, Artif. Intell..

[12]  Chongzhao Han,et al.  Discounted combination of unreliable evidence using degree of disagreement , 2013, Int. J. Approx. Reason..

[13]  Quan Pan,et al.  A New Incomplete Pattern Classification Method Based on Evidential Reasoning , 2015, IEEE Transactions on Cybernetics.

[14]  Hassiba Nemmour,et al.  Handwritten Digit Recognition Based on a DSmT-SVM Parallel Combination , 2012, 2012 International Conference on Frontiers in Handwriting Recognition.

[15]  Véronique Berge-Cherfaoui,et al.  Optimal Object Association in the Dempster–Shafer Framework , 2014, IEEE Transactions on Cybernetics.

[16]  Wu Xue-jian A Fast Approximate Reasoning Method in Hierarchical DSmT(A) , 2010 .

[17]  Lauro Snidaro,et al.  Fusing uncertain knowledge and evidence for maritime situational awareness via Markov Logic Networks , 2015, Inf. Fusion.

[18]  Xinde Li,et al.  Fusion of imprecise qualitative information , 2010, Applied Intelligence.

[19]  Quan Pan,et al.  Dynamic evidential reasoning for change detection in remote sensing images , 2012, IEEE Transactions on Geoscience and Remote Sensing.

[20]  Quan Pan,et al.  Credal classification rule for uncertain data based on belief functions , 2014, Pattern Recognit..

[21]  Lyudmila Mihaylova,et al.  Joint target tracking and classification with particle filtering and mixture Kalman filtering using kinematic radar information , 2006, Digit. Signal Process..

[22]  Glenn Shafer,et al.  A Mathematical Theory of Evidence , 2020, A Mathematical Theory of Evidence.

[23]  Xinde Li,et al.  Evidence supporting measure of similarity for reducing the complexity in information fusion , 2011, Inf. Sci..

[24]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[25]  Xinde Li,et al.  A SUCCESSFUL APPLICATION OF DSMT IN SONAR GRID MAP BUILDING AND COMPARISON WITH DST-BASED APPROACH , 2007 .

[26]  Éloi Bossé,et al.  A new distance between two bodies of evidence , 2001, Inf. Fusion.

[27]  Buyurman Baykal,et al.  Multiple target localization & data association for frequency-only widely separated MIMO radar , 2014, Digit. Signal Process..

[28]  Jean Dezert,et al.  DSmT: A new paradigm shift for information fusion , 2006, ArXiv.

[29]  Thierry Denoeux,et al.  An evidential classifier based on feature selection and two-step classification strategy , 2015, Pattern Recognit..

[30]  J. Dezert,et al.  Information fusion based on new proportional conflict redistribution rules , 2005, 2005 7th International Conference on Information Fusion.

[31]  Thierry Denoeux,et al.  Maximum Likelihood Estimation from Uncertain Data in the Belief Function Framework , 2013, IEEE Transactions on Knowledge and Data Engineering.

[32]  Adel Belouchrani,et al.  Performance improvement of direction finding algorithms in non-homogeneous environment through data fusion , 2015, Digit. Signal Process..

[33]  Jean Dezert,et al.  Partial Ordering on Hyper-Power Sets , 2016 .

[34]  Xinde Li,et al.  An approximate reasoning method in Dezert-Smarandache Theory , 2009 .

[35]  Florentin Smarandache Algebraic Generalization of Venn Diagram , 2015 .

[36]  Dominic Grenier,et al.  Reducing DSmT hybrid rule complexity through optimization of the calculation algorithm , 2016 .

[37]  Xinde Li,et al.  Combination of Qualitative Information with 2-Tuple Linguistic Representation in DSmT , 2009, Journal of Computer Science and Technology.

[38]  Johan Schubert,et al.  Dempster's rule for evidence ordered in a complete directed acyclic graph , 1993, Int. J. Approx. Reason..

[39]  Jean Dezert,et al.  An introduction to DSmT , 2009, ArXiv.

[40]  Jean Dezert,et al.  Credal c-means clustering method based on belief functions , 2015, Knowl. Based Syst..