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Published in: Neural Computing and Applications 2/2019

10-12-2008 | ISNN 2008

An adaptive PNN-DS approach to classification using multi-sensor information fusion

Authors: Ning Chen, Fuchun Sun, Linge Ding, Hongqiao Wang

Published in: Neural Computing and Applications | Special Issue 2/2019

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Abstract

In this paper, an adaptive neural network approach to classification which combines modified probabilistic neural network and D-S evidence theory (PNN-DS) is proposed. It attempts to deal with the drawbacks of information uncertainty and imprecision using single classification algorithm. This PNN-DS approach firstly adopts a modified probabilistic neural network (PNN) to obtain posteriori probabilities and make a primary classification decision in feature-level fusion. Then posteriori probabilities are transformed to masses noting the evidence of the D-S evidential theory. Finally advanced D-S evidential theory is utilized to gain more accurate classification results in the last decision-level fusion. In order to implement PNN-DS, covariance matrices are firstly employed in the modified PNN module to replace the singular smoothing factor in the PNN’s kernel function, and linear function is utilized in the pattern of summation layer. Secondly, the whole scheme of the proposed approach is explained in depth. Thirdly, three classification experiments are carried out on the proposed approach and a large amount of comparable analyses are done to demonstrate the effectiveness and robustness of the proposed approach. Experiments reveal that the PNN-DS outperforms BPNN-DS, which provides encouraging results in terms of classification accuracy and the speed of learning convergence.

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Literature
1.
go back to reference Basir Otman, Karray Fakhri, Zhu Hongwei (2005) Connectionist-based Dempster–Shafer evidential reasoning for data fusion. IEEE Trans Neural Netw 16:1513–1516CrossRef Basir Otman, Karray Fakhri, Zhu Hongwei (2005) Connectionist-based Dempster–Shafer evidential reasoning for data fusion. IEEE Trans Neural Netw 16:1513–1516CrossRef
2.
go back to reference Hégarat-Mascle SL, Bloch I, Vidal-Madjar D (1997) Application of Dempster-Shafer evidence theory to unsupervised classification in multisource remote sensing. IEEE Trans Geosci Remote Sens 35:1018–1031CrossRef Hégarat-Mascle SL, Bloch I, Vidal-Madjar D (1997) Application of Dempster-Shafer evidence theory to unsupervised classification in multisource remote sensing. IEEE Trans Geosci Remote Sens 35:1018–1031CrossRef
3.
go back to reference Hégarat-Mascle SL, Bloch I, Vidal-Madjar D (1998) Introduction of neighborhood information in evidence theory and application to data fusion of radar and optical images with partial cloud cover. Pattern Recognit 31:1811–1823 Hégarat-Mascle SL, Bloch I, Vidal-Madjar D (1998) Introduction of neighborhood information in evidence theory and application to data fusion of radar and optical images with partial cloud cover. Pattern Recognit 31:1811–1823
4.
go back to reference Bloch I (1996) Some aspects of Dempster-Shafer evidence theory for classification of multi-modality medical images taking partial volume effect into account. Pattern Recognit Lett 17:905–919CrossRef Bloch I (1996) Some aspects of Dempster-Shafer evidence theory for classification of multi-modality medical images taking partial volume effect into account. Pattern Recognit Lett 17:905–919CrossRef
5.
go back to reference Rombaut M, Zhu YM (2002) Study of Dempster–Shafer for image segmentation applications. Image Vis Comput 20:15–23CrossRef Rombaut M, Zhu YM (2002) Study of Dempster–Shafer for image segmentation applications. Image Vis Comput 20:15–23CrossRef
6.
go back to reference Huang J, Cheng Y, Pi Y, Pan Q (2005) Airplane image recognition based on BP neural network and DS evidence reasoning. Comput Simul China 22:184–186 Huang J, Cheng Y, Pi Y, Pan Q (2005) Airplane image recognition based on BP neural network and DS evidence reasoning. Comput Simul China 22:184–186
7.
go back to reference Chiping Z (2006) Methods of multi-sensor data fusion and their application in the spatial targets recogntion, Doctoral dissertation, V249.122, pp 1–11 Chiping Z (2006) Methods of multi-sensor data fusion and their application in the spatial targets recogntion, Doctoral dissertation, V249.122, pp 1–11
8.
go back to reference Shijie T, Shesheng G, Hualing X (2007) Research of information fusion model combining DS evidence theory and neural Network. Chin J Sens Actuators 1815–1818 Shijie T, Shesheng G, Hualing X (2007) Research of information fusion model combining DS evidence theory and neural Network. Chin J Sens Actuators 1815–1818
9.
go back to reference Poirazi P, Neocleous C, Pattichis CS, Schizas CN (2004) Classification capacity of a modular neural network implementing neurally inspired architecture and training rules. IEEE Trans Neural Netw 15:597–612CrossRef Poirazi P, Neocleous C, Pattichis CS, Schizas CN (2004) Classification capacity of a modular neural network implementing neurally inspired architecture and training rules. IEEE Trans Neural Netw 15:597–612CrossRef
10.
11.
go back to reference Song T, Jamshidi MM, Lee RR, Huang M (2007) A modified probabilistic neural network for partial volume segmentation in brain MR image. IEEE Trans Neural Netw 18:1424–1432 Song T, Jamshidi MM, Lee RR, Huang M (2007) A modified probabilistic neural network for partial volume segmentation in brain MR image. IEEE Trans Neural Netw 18:1424–1432
12.
go back to reference Zhang C, Cui P, Zhang Y (2006) An algorithm of data fusion combined neural networks with DS evidential theory. In: First international aerospace and astronautics ISSCAA 2006, Harbin, EI, pp 1141–1144 Zhang C, Cui P, Zhang Y (2006) An algorithm of data fusion combined neural networks with DS evidential theory. In: First international aerospace and astronautics ISSCAA 2006, Harbin, EI, pp 1141–1144
13.
go back to reference Zhang C, Cui P, Zhang Y (2006) An algorithm of characteristic data fusion based on neural network group. In: Proceedings of the fifth international conference on machine learning and cybernetics, Aug 2006, pp 2917–2919 Zhang C, Cui P, Zhang Y (2006) An algorithm of characteristic data fusion based on neural network group. In: Proceedings of the fifth international conference on machine learning and cybernetics, Aug 2006, pp 2917–2919
14.
go back to reference Zhu H, Basir O (2006) A novel fuzzy evidental reasoning paradigm for data fusion with applications in image processing. Soft Comput 10:1169–1180CrossRefMATH Zhu H, Basir O (2006) A novel fuzzy evidental reasoning paradigm for data fusion with applications in image processing. Soft Comput 10:1169–1180CrossRefMATH
Metadata
Title
An adaptive PNN-DS approach to classification using multi-sensor information fusion
Authors
Ning Chen
Fuchun Sun
Linge Ding
Hongqiao Wang
Publication date
10-12-2008
Publisher
Springer London
Published in
Neural Computing and Applications / Issue Special Issue 2/2019
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-008-0221-3

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