Click to open the HelpDesk interface
AECE - Front page banner

Menu:


FACTS & FIGURES

JCR Impact Factor: 0.700
JCR 5-Year IF: 0.700
SCOPUS CiteScore: 1.8
Issues per year: 4
Current issue: Aug 2024
Next issue: Nov 2024
Avg review time: 59 days
Avg accept to publ: 60 days
APC: 300 EUR


PUBLISHER

Stefan cel Mare
University of Suceava
Faculty of Electrical Engineering and
Computer Science
13, Universitatii Street
Suceava - 720229
ROMANIA

Print ISSN: 1582-7445
Online ISSN: 1844-7600
WorldCat: 643243560
doi: 10.4316/AECE


TRAFFIC STATS

2,984,112 unique visits
1,157,805 downloads
Since November 1, 2009



Robots online now
Googlebot
SemrushBot


SCOPUS CiteScore

SCOPUS CiteScore


SJR SCImago RANK

SCImago Journal & Country Rank




TEXT LINKS

Anycast DNS Hosting
MOST RECENT ISSUES

 Volume 24 (2024)
 
     »   Issue 3 / 2024
 
     »   Issue 2 / 2024
 
     »   Issue 1 / 2024
 
 
 Volume 23 (2023)
 
     »   Issue 4 / 2023
 
     »   Issue 3 / 2023
 
     »   Issue 2 / 2023
 
     »   Issue 1 / 2023
 
 
 Volume 22 (2022)
 
     »   Issue 4 / 2022
 
     »   Issue 3 / 2022
 
     »   Issue 2 / 2022
 
     »   Issue 1 / 2022
 
 
 Volume 21 (2021)
 
     »   Issue 4 / 2021
 
     »   Issue 3 / 2021
 
     »   Issue 2 / 2021
 
     »   Issue 1 / 2021
 
 
  View all issues  








LATEST NEWS

2024-Jun-20
Clarivate Analytics published the InCites Journal Citations Report for 2023. The InCites JCR Impact Factor of Advances in Electrical and Computer Engineering is 0.700 (0.700 without Journal self-cites), and the InCites JCR 5-Year Impact Factor is 0.600.

2023-Jun-28
Clarivate Analytics published the InCites Journal Citations Report for 2022. The InCites JCR Impact Factor of Advances in Electrical and Computer Engineering is 0.800 (0.700 without Journal self-cites), and the InCites JCR 5-Year Impact Factor is 1.000.

2023-Jun-05
SCOPUS published the CiteScore for 2022, computed by using an improved methodology, counting the citations received in 2019-2022 and dividing the sum by the number of papers published in the same time frame. The CiteScore of Advances in Electrical and Computer Engineering for 2022 is 2.0. For "General Computer Science" we rank #134/233 and for "Electrical and Electronic Engineering" we rank #478/738.

2022-Jun-28
Clarivate Analytics published the InCites Journal Citations Report for 2021. The InCites JCR Impact Factor of Advances in Electrical and Computer Engineering is 0.825 (0.722 without Journal self-cites), and the InCites JCR 5-Year Impact Factor is 0.752.

2022-Jun-16
SCOPUS published the CiteScore for 2021, computed by using an improved methodology, counting the citations received in 2018-2021 and dividing the sum by the number of papers published in the same time frame. The CiteScore of Advances in Electrical and Computer Engineering for 2021 is 2.5, the same as for 2020 but better than all our previous results.

Read More »


    
 

  4/2019 - 3

Incorporated Decision-maker-based Multiobjective Band Selection for Pixel Classification of Hyperspectral Images

SAQUI, D. See more information about SAQUI, D. on SCOPUS See more information about SAQUI, D. on IEEExplore See more information about SAQUI, D. on Web of Science, SAITO, J. H. See more information about  SAITO, J. H. on SCOPUS See more information about  SAITO, J. H. on SCOPUS See more information about SAITO, J. H. on Web of Science, De LIMA, D. C. See more information about  De LIMA, D. C. on SCOPUS See more information about  De LIMA, D. C. on SCOPUS See more information about De LIMA, D. C. on Web of Science, Del Val CURA, L. M. See more information about  Del Val CURA, L. M. on SCOPUS See more information about  Del Val CURA, L. M. on SCOPUS See more information about Del Val CURA, L. M. on Web of Science, ATAKY, S. T. M. See more information about ATAKY, S. T. M. on SCOPUS See more information about ATAKY, S. T. M. on SCOPUS See more information about ATAKY, S. T. M. on Web of Science
 
Extra paper information in View the paper record and citations in Google Scholar View the paper record and similar papers in Microsoft Bing View the paper record and similar papers in Semantic Scholar the AI-powered research tool
Click to see author's profile in See more information about the author on SCOPUS SCOPUS, See more information about the author on IEEE Xplore IEEE Xplore, See more information about the author on Web of Science Web of Science

Download PDF pdficon (201 KB) | Citation | Downloads: 883 | Views: 2,173

Author keywords
remote sensing, hyperspectral imaging, image segmentation, image classification, evolutionary computation

References keywords
hyperspectral(26), remote(21), selection(20), sensing(17), band(14), classification(12), geoscience(10), image(8), feature(7), tgrs(6)
Blue keywords are present in both the references section and the paper title.

About this article
Date of Publication: 2019-11-30
Volume 19, Issue 4, Year 2019, On page(s): 21 - 28
ISSN: 1582-7445, e-ISSN: 1844-7600
Digital Object Identifier: 10.4316/AECE.2019.04003
Web of Science Accession Number: 000500274700003
SCOPUS ID: 85077276122

Abstract
Quick view
Full text preview
Hyperspectral images (HIs) are characterized by a higher spectral resolution than other images and have applications in various fields, to wit, medicine, agriculture, mining, among others. Segmentation can be obtained from the pixel classification and it is a powerful tool for object identification. Notwithstanding, the problems of the curse of dimensionality and the demand for computational resources occur due to the number of bands. Techniques that reduce dimensionality, such as genetic algorithms, are promising, but they cannot assure a balance between conflicting objectives such as improving classification and reducing the number of bands. Multiobjective band selection can be applied to search for tradeoff solutions that have this balance. Therefore, in this manuscript, we propose a novel method called Incorporated Decision-Marker-based multiobjective band selection (IDMMoBS) that tries to find tradeoff solutions using spectral and spatial information. In the experiments, the IDMMoBS reduced the number of bands between 85.4 and 85.8 percent of the total and it outperformed the majority of other methods compared in this criterion. For the pixel classification, the IDMMoBS presented better results than all compared cases taking into account all evaluated metrics using SVM classifier. Accordingly, the IDMMoBS is suitable for band selection.


References | Cited By  «-- Click to see who has cited this paper

[1] A. Plaza, J. A. Benediktsson, J. W. Boardman, J. Brazile, L. Bruzzone, G. Camps-Valls, J. Chanussot, M. Fauvel, P. Gamba, A. Gualtieri, M. Marconcini, J. C. Tilton, G. Trianni, "Recent advances in techniques for hyperspectral image processing", Remote Sensing of Environment, vol. 113, pp S110-S122, 2009.
[CrossRef] [Web of Science Times Cited 1192] [SCOPUS Times Cited 1484]


[2] M. J. Khan, H. S. Khan, A. Yousaf, K. Khurshid, A. Abbas, "Modern Trends in Hyperspectral Image Analysis: A Review," IEEE Access, vol. 6, pp. 14118-14129, 2018.
[CrossRef] [Web of Science Times Cited 482] [SCOPUS Times Cited 598]


[3] M. Attas, E. Cloutis, C. Collins, D. Goltz, C. Majzels, J. R. Mansfield, H. H. Mantsch,"Near-infrared spectroscopic imaging in art conservation: investigation of drawing constituents", Journal of Cultural Heritage, vol. 4, n. 2, pp. 127-136, 2003.
[CrossRef] [Web of Science Times Cited 80] [SCOPUS Times Cited 86]


[4] M. Gong, M. Zhang and Y. Yuan, "Unsupervised Band Selection Based on Evolutionary Multiobjective Optimization for Hyperspectral Images," in IEEE Transactions on Geoscience and Remote Sensing, vol. 54, no. 1, pp. 544-557, 2016.
[CrossRef] [Web of Science Times Cited 131] [SCOPUS Times Cited 150]


[5] T. M. Lillesand, R. W. Kiefer, J. W. Chipman, "Remote Sensing and Image Interpretation", pp. 550-562, 5th ed., Ed. John Wiley & Sons, 2004.
[CrossRef] [Web of Science Times Cited 17]


[6] S. Amini, S. Homayouni, A. Safari, A. A. Darvishsefat, "Object-based classification of hyperspectral data using Random Forest algorithm", Geo-spatial Information Science, vol. 21, pp. 127-138, 2018.
[CrossRef] [Web of Science Times Cited 72] [SCOPUS Times Cited 78]


[7] J. Xia, P. Ghamisi, N. Yokoya, A. Iwasaki, "Random Forest Ensembles and Extended Multi-Extinction Profiles for Hyperspectral Image Classification." IEEE Transactions on Geoscience and Remote Sensing, vol. 56, n. 1, pp. 202-2016, 2018.
[CrossRef] [Web of Science Times Cited 122] [SCOPUS Times Cited 147]


[8] D. A. Landgrebe, "Signal Theory Methods in Multispectral Remote Sensing", John Wiley and Sons, pp. 237-239, 2003.
[CrossRef]


[9] G. Hughes, "On the mean accuracy of statistical pattern recognizers". IEEE Trans. Inf. Theory, vol. 14, n. 1, pp. 55-63, Jan. 1968.
[CrossRef] [SCOPUS Times Cited 2490]


[10] X. Zhang, Q. Sun, J. Li, "Optimal band selection for high dimensional remote sensing data using genetic algorithm", Proceedings of SPIE-The International Society for Optical Engineering., October 2009.
[CrossRef] [SCOPUS Times Cited 11]


[11] D. Saqui, J. H. Saito, L. A. C. Jorge, E. J. Ferreira, D. C. Lima, J. P. Herrera, "Methodology for band selection of Hyperspectral Images using Genetic Algorithms and Gaussian Maximum Likelihood Classifier", International Conference on Computational Science and Computational Intelligence, Las Vegas, EUA, pp. 733-738, 2016.
[CrossRef] [Web of Science Times Cited 13] [SCOPUS Times Cited 18]


[12] M. Kumar, "Feature Selection for Classification of Hyperspectral Remotely Sensed data using NSGA-II", Water Resources Seminar, Citeseer, 2004.

[13] M. D. Farrell, R. M. Mersereau, "On the impact of PCA dimension reduction for hyperspectral detection of difficult targets", IEEE Geoscience and Remote Sensing Letters, vol. 2, no. 2, pp. 192-195, Apr. 2005.
[CrossRef] [Web of Science Times Cited 217] [SCOPUS Times Cited 260]


[14] N. Falco, J. A. Benediktsson, L. Bruzzone, "A study on the effectiveness of different independent component analysis algorithms for hyperspectral image classification", IEEE J. Sel. Topics Appl. Earth Observ. Remote Sens., vol. 7, no. 6, pp. 2183-2199, Jun. 2014.
[CrossRef] [Web of Science Times Cited 48] [SCOPUS Times Cited 56]


[15] M. Masaeli, G. Fung, J. G. Dy, "From transformation-based dimensionality reduction to feature selection". ICML'10 Proceedings of the 27th International Conference on International Conference on Machine Learning, pp. 751-758, 2010.

[16] K. Sun, X. Geng, L. Ji., "Exemplar component analysis: A fast band selection method for hyperspectral imagery", IEEE Geoscience and Remote Sensing Letters, vol. 12, no. 5, pp. 998-1002, May 2015.
[CrossRef] [Web of Science Times Cited 101] [SCOPUS Times Cited 116]


[17] W. Sun, L. Zhang, B. Du, W. Li, Y. M. Lai, "Band selection using improved sparse subspace clustering for hyperspectral imagery classification," IEEE J. Sel. Topics Appl. Earth Observ. Remote Sens., vol. 8, no. 6, pp. 2784-2797, Jun. 2015.
[CrossRef] [Web of Science Times Cited 147] [SCOPUS Times Cited 176]


[18] W. Sun, L. Zhang, L. Zhang, Y. M. Lai. "A dissimilarity-weighted sparse self-representation method for band selection in hyperspectral imagery classification," IEEE J. Sel. Topics Appl. Earth Observ. Remote Sens., vol. 9, no. 9, pp. 4374-4388, Sep. 2016.
[CrossRef] [Web of Science Times Cited 70] [SCOPUS Times Cited 77]


[19] G. Zhu, Y. Huang, J. Lei, Z. Bi, F. Xu., "Unsupervised hyperspectral band selection by dominant set extraction," IEEE Geoscience and Remote Sensing Letters, vol. 54, no. 1, pp. 227-239, Jan. 2016.
[CrossRef] [Web of Science Times Cited 85] [SCOPUS Times Cited 95]


[20] A. Martínez-Uso, F. Pla, J. M. Sotoca, P. García-Sevilla, "Clustering-Based Hyperspectral Band Selection Using Information Measures". IEEE Transaction Geoscience Remote Sensing 2007, vol. 45, pp. 4158-4171. doi 10.1109/TGRS.2007.904951

[21] J. Feng, L. Jiao, F. Liu, T. Sun, X. Zhang, "Unsupervised feature selection based on maximum information and minimum redundancy for hyperspectral images". Pattern Recognition 2016, 51, 295-309.
[CrossRef] [Web of Science Times Cited 88] [SCOPUS Times Cited 108]


[22] R. Y. M. Nakamura, L. M. G. Fonseca, J. A. dos Santos, R. da S. Torres, X.-S. Yang, J. P. Papa, "Nature-inspired framework for hyperspectral band selection," IEEE Trans. Geoscience Remote Sensing, vol. 52, no. 4, pp. 2126-2137, Apr. 2014.
[CrossRef] [Web of Science Times Cited 55] [SCOPUS Times Cited 58]


[23] H. Su, B. Yong, Q. Du, "Hyperspectral band selection using improved firefly algorithm," IEEE Geosci. Remote Sens. Lett., vol. 13, no. 1, pp. 68-72, Jan. 2016.
[CrossRef] [Web of Science Times Cited 87] [SCOPUS Times Cited 108]


[24] C. Vaiphasa, A. K. Skidmore, W. F. Boer, T. Vaiphasa. "A hyperspectral band selector for plant species discrimination". ISPRS Journal of Photogrammetry and Remote Sensing, vol. 62, n. 3, p. 225-235, 2007.
[CrossRef] [Web of Science Times Cited 112] [SCOPUS Times Cited 127]


[25] L. Zhuo, J. Zheng, F. Wang, X. Li, B. Ai, J. Qian, "A Genetic Algorithm Based Wrapper Feature Selection Method for Classification of Hyperspectral Images Using Support Vector Machine". Proceedings of SPIE 7147, Geoinformatics 2008 and Joint Conference on GIS and Built Environment: Classification of Remote Sensing Images, vol. 7147, pp. 397-402, 2008.
[CrossRef] [SCOPUS Times Cited 54]


[26] X. Zhang, W. Wang, Y. Li, L. C. Jiao, "Pso-based automatic relevance determination and feature selection system for hyperspectral image classification", Electronics Letters, vol. 48, n. 20, pp. 1263-1265, 2012.
[CrossRef] [Web of Science Times Cited 12] [SCOPUS Times Cited 16]


[27] M. Zhang, J. Ma, M. Gong. "Unsupervised Hyperspectral Band Selection by Fuzzy Clustering with Particle Swarm Optimization". IEEE Geoscience and Remote Sensing Letters, vol. 14, nº5, pp. 773-777. 2017.
[CrossRef] [Web of Science Times Cited 77] [SCOPUS Times Cited 89]


[28] F. Xie, F. Li, C. Lei, L. Ke, "Representative Band Selection for Hyperspectral Image Classification". ISPRS International Journal of Geo-Information 2018, 7, 338.
[CrossRef] [Web of Science Times Cited 24] [SCOPUS Record]


[29] X. Xu, Z. Shi, B. Pan, "A New Unsupervised Hyperspectral Band Selection Method Based on Multiobjective Optimization," in IEEE Geoscience and Remote Sensing Letters, vol. 14, no. 11, pp. 2112-2116, Nov. 2017.
[CrossRef] [Web of Science Times Cited 26] [SCOPUS Times Cited 31]


[30] N. Sánchez-Maroño, A. Alonso-Betanzos, M. Tombilla-Sanromán, "Filter methods for feature selection-A comparative study". International Conference on Intelligent Data Engineering and Automated Learning. Lecture Notes in Computer Science, vol. 4881, Springer, Berlin, Heidelberg, 2007.
[CrossRef]


[31] X. Cao, B. Ji, Y. Ji, L. Wang, L. Jiao, "Hyperspectral image classification based on filtering: A comparative study". Journal of Applied Remote Sensing, vol. 11.
[CrossRef] [Web of Science Times Cited 16] [SCOPUS Times Cited 19]


[32] Z. Qingfu, Li, Hui, "MOEA/D: A Multiobjective Evolutionary Algorithm Based on Decomposition". IEEE Transactions on Evolutionary Computation, Vol. 11, N. 6, 2007.
[CrossRef] [Web of Science Times Cited 6300] [SCOPUS Times Cited 7667]


[33] D. Kimovski, R. Matha, S. Ristoy, R. Prodan, "Multiobjective service oriented network provisioning in ultra-scale systems". European Conference on Parallel Processing, Lecture Notes in Computer Science, vol 10659. Springer, Cham pp. 529-540, 2017.
[CrossRef] [Web of Science Times Cited 3] [SCOPUS Times Cited 1]


[34] V. N. Vapnik, "The Nature of Statistical Learning Theory". New York: Springer-Verlag, 1995.
[CrossRef]


[35] B. Boser, I. Guyon, and V. N. Vapnik, "A training algorithm for optimal margin classifiers," in Proc. 5th Annu. Workshop Comput. Learn. Theory, 1992, pp. 144-152.
[CrossRef]


[36] N. Cristianini and J. Shawe-Taylor. Cambridge, U.K.: Cambridge Univ. Press, 2000.
[CrossRef]


[37] M. Pal and G. M. Foody, "Feature Selection for Classification of Hyperspectral Data by SVM," in IEEE Transactions on Geoscience and Remote Sensing, vol. 48, no. 5, pp. 2297-2307, May 2010.
[CrossRef] [Web of Science Times Cited 610] [SCOPUS Times Cited 720]


[38] P. Ghamisi, J. Plaza, Y. Chen, J. Li, and A. Plaza, "Advanced spectral classifiers for hyperspectral images: A review," IEEE Geosci.Remote Sens. Mag., vol. 5, no. 1, pp. 8-32, Mar. 2017.
[CrossRef] [Web of Science Times Cited 478] [SCOPUS Times Cited 555]




References Weight

Web of Science® Citations for all references: 10,665 TCR
SCOPUS® Citations for all references: 15,395 TCR

Web of Science® Average Citations per reference: 273 ACR
SCOPUS® Average Citations per reference: 395 ACR

TCR = Total Citations for References / ACR = Average Citations per Reference

We introduced in 2010 - for the first time in scientific publishing, the term "References Weight", as a quantitative indication of the quality ... Read more

Citations for references updated on 2024-11-14 18:22 in 245 seconds.




Note1: Web of Science® is a registered trademark of Clarivate Analytics.
Note2: SCOPUS® is a registered trademark of Elsevier B.V.
Disclaimer: All queries to the respective databases were made by using the DOI record of every reference (where available). Due to technical problems beyond our control, the information is not always accurate. Please use the CrossRef link to visit the respective publisher site.

Copyright ©2001-2024
Faculty of Electrical Engineering and Computer Science
Stefan cel Mare University of Suceava, Romania


All rights reserved: Advances in Electrical and Computer Engineering is a registered trademark of the Stefan cel Mare University of Suceava. No part of this publication may be reproduced, stored in a retrieval system, photocopied, recorded or archived, without the written permission from the Editor. When authors submit their papers for publication, they agree that the copyright for their article be transferred to the Faculty of Electrical Engineering and Computer Science, Stefan cel Mare University of Suceava, Romania, if and only if the articles are accepted for publication. The copyright covers the exclusive rights to reproduce and distribute the article, including reprints and translations.

Permission for other use: The copyright owner's consent does not extend to copying for general distribution, for promotion, for creating new works, or for resale. Specific written permission must be obtained from the Editor for such copying. Direct linking to files hosted on this website is strictly prohibited.

Disclaimer: Whilst every effort is made by the publishers and editorial board to see that no inaccurate or misleading data, opinions or statements appear in this journal, they wish to make it clear that all information and opinions formulated in the articles, as well as linguistic accuracy, are the sole responsibility of the author.




Website loading speed and performance optimization powered by: 


DNS Made Easy