Skip to main content
Top
Published in: International Journal of Machine Learning and Cybernetics 1/2020

12-02-2019 | Original Article

Automatic optic disc detection using low-rank representation based semi-supervised extreme learning machine

Authors: Wei Zhou, Shaojie Qiao, Yugen Yi, Nan Han, Yuqi Chen, Gang Lei

Published in: International Journal of Machine Learning and Cybernetics | Issue 1/2020

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Optic disc detection plays an important role in developing automatic screening systems for diabetic retinopathy. Several supervised learning-based approaches have been proposed for optic disc detection. However, these approaches demand that the input training examples are completely labelled. Essentially, in medical image analysis, it is difficult to prepare several training samples which were given reliable class labels due to the fact that manually labelling data is very expensive. Moreover, retinal images such as complex vessels structures in the optic disc constituting nonlinear relationships in high-dimensional observation space, which cannot work well by traditional linear classifiers. In this study, a novel approach named low-rank representation based semi-supervised extreme learning machine (LRR-SSELM) is proposed for automated optic disc detection. Our model has the following advantages. First, it detects the optic disc from the viewpoint of semi-supervised learning and overcomes the problem there are small portion of labelled samples. Second, a nonlinear classifier is introduced into our model to fully explore the nonlinear data. Third, the local and global structures of original data can be greatly persevered by low-rank representation (LRR). The performance of the proposed method is validated on three publicly available databases, DIARETDB0, DIARETDB1 and Messidor. The experimental results indicate the advantages and effectiveness of the proposed approach.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Show more products
Literature
1.
go back to reference Li R, Qin L, Yu J, Mao R (2015) Influential community search in large networks. Proc Vldb Endowment 8(5):509–520 Li R, Qin L, Yu J, Mao R (2015) Influential community search in large networks. Proc Vldb Endowment 8(5):509–520
2.
go back to reference Li R, Qin L, Yu J, Mao R (2017) Finding influential communities in massive networks. Vldb J 26(2):1–26 Li R, Qin L, Yu J, Mao R (2017) Finding influential communities in massive networks. Vldb J 26(2):1–26
3.
go back to reference Li R, Qin L, Ye F, Yu J, Xiao X, Xiao N, Zhang Z (2018) Skyline community search in multi-valued networks. In: Proceedings of the 2018 international conference on management of data, pp. 457–472 Li R, Qin L, Ye F, Yu J, Xiao X, Xiao N, Zhang Z (2018) Skyline community search in multi-valued networks. In: Proceedings of the 2018 international conference on management of data, pp. 457–472
4.
go back to reference Zhou W, Wu C, Gao Y, Yu X (2017) Automatic optic disc boundary extraction based on saliency object detection and modified local intensity clustering model in retinal images. Inst Electron Inf Commun Eng E 100-A(9):2069–2072 Zhou W, Wu C, Gao Y, Yu X (2017) Automatic optic disc boundary extraction based on saliency object detection and modified local intensity clustering model in retinal images. Inst Electron Inf Commun Eng E 100-A(9):2069–2072
5.
go back to reference Zhou W, Wu C, Yu X, Gao Y, Du W (2017) Automatic Fovea Center localization in retinal images using saliency-guided object discovery and feature extraction. J Med Imaging Health Inf 7:1–8 Zhou W, Wu C, Yu X, Gao Y, Du W (2017) Automatic Fovea Center localization in retinal images using saliency-guided object discovery and feature extraction. J Med Imaging Health Inf 7:1–8
6.
go back to reference Zhou W, Wu C, Du W (2017) Automatic Optic Disc Detection in Retinal Images via Group Sparse Regularization Extreme Learning Machine. Control Conference (CCC), 36th Dalian, China Zhou W, Wu C, Du W (2017) Automatic Optic Disc Detection in Retinal Images via Group Sparse Regularization Extreme Learning Machine. Control Conference (CCC), 36th Dalian, China
7.
go back to reference Osareh A, Mirmehdi M, Thomas B, Markham R (2002) Classification and localisation of diabetic-related eye disease. In: 7th European conference on computer vision (ECCV). May 2353:502–516 Osareh A, Mirmehdi M, Thomas B, Markham R (2002) Classification and localisation of diabetic-related eye disease. In: 7th European conference on computer vision (ECCV). May 2353:502–516
8.
go back to reference Sinthanayothin C, Boyce J, Cook H, Williamson T (1999) Automated localisation of the optic disc, fovea and retinal blood vessels from digital colour fundus images. Br J Ophthalmol 83:902–910 Sinthanayothin C, Boyce J, Cook H, Williamson T (1999) Automated localisation of the optic disc, fovea and retinal blood vessels from digital colour fundus images. Br J Ophthalmol 83:902–910
9.
go back to reference Li H, Chutatape O (2004) Automated feature extraction in color retinal images by a model based approach. IEEE Trans Biomed Eng 51:246–254 Li H, Chutatape O (2004) Automated feature extraction in color retinal images by a model based approach. IEEE Trans Biomed Eng 51:246–254
10.
go back to reference Park M, Jin JS, Luo S (2006) Locating the optic disc in retinal images. In: Proceedings of the international conference on computer graphics, imaging and visualisation, pp 141–145 Park M, Jin JS, Luo S (2006) Locating the optic disc in retinal images. In: Proceedings of the international conference on computer graphics, imaging and visualisation, pp 141–145
11.
go back to reference Seo JM, Kim KK, Kim JH, Park KS, Chung H (2004) Measurement of ocular torsion using digital fundus image. In: International conference of the IEEE engineering in medicine and biology society, 3, 1711 Seo JM, Kim KK, Kim JH, Park KS, Chung H (2004) Measurement of ocular torsion using digital fundus image. In: International conference of the IEEE engineering in medicine and biology society, 3, 1711
12.
go back to reference Liu S, Chen J (2011) Detection of the optic disc on retinal fluorescein angiograms. J Med Biol Eng 31(6):405–412 Liu S, Chen J (2011) Detection of the optic disc on retinal fluorescein angiograms. J Med Biol Eng 31(6):405–412
13.
go back to reference Mithun NC, Das S, Fattah SA (2014) Automated detection of optic disc and blood vessel in retinal image using morphological, edge detection and feature extraction technique. In: Proceedings of the 16th international conference on computer and information technology (ICCIT’14), pp 98–102 Mithun NC, Das S, Fattah SA (2014) Automated detection of optic disc and blood vessel in retinal image using morphological, edge detection and feature extraction technique. In: Proceedings of the 16th international conference on computer and information technology (ICCIT’14), pp 98–102
14.
go back to reference Lalonde M, Beaulieu M, Gagnon L (2001) Fast and robust optic disc detection using pyramidal decomposition and hausdorff based template matching. IEEE Trans Med Imaging 20(11):1193–1200 Lalonde M, Beaulieu M, Gagnon L (2001) Fast and robust optic disc detection using pyramidal decomposition and hausdorff based template matching. IEEE Trans Med Imaging 20(11):1193–1200
15.
go back to reference Youssif AR, Ghalwash AZ, Ghoneim AR (2008) Optic disc detection from normalized digital fundus images by means of a vessels’ direction matched filter. IEEE Trans Med Imaging 27(1):11–18 Youssif AR, Ghalwash AZ, Ghoneim AR (2008) Optic disc detection from normalized digital fundus images by means of a vessels’ direction matched filter. IEEE Trans Med Imaging 27(1):11–18
16.
go back to reference Zhang B, Karray F (2010) Optic disc and fovea detection via multi-scale matched filters and a vessels’ directional matched filter. In: Autonomous and intelligent systems—first international conference, pp 1–5 Zhang B, Karray F (2010) Optic disc and fovea detection via multi-scale matched filters and a vessels’ directional matched filter. In: Autonomous and intelligent systems—first international conference, pp 1–5
17.
go back to reference Niemeijer M, Abràmoff MD, Ginneken BV (2009) Fast detection of the optic disc and fovea in color fundus photographs. Med Image Anal 13(6):859–870 Niemeijer M, Abràmoff MD, Ginneken BV (2009) Fast detection of the optic disc and fovea in color fundus photographs. Med Image Anal 13(6):859–870
18.
go back to reference Tobin KW, Chaum E, Govindasamy VP, Karnowski TP (2007) Detection of anatomic structures in human retinal imagery. IEEE Trans Med Imaging 26(12):1729–1739 Tobin KW, Chaum E, Govindasamy VP, Karnowski TP (2007) Detection of anatomic structures in human retinal imagery. IEEE Trans Med Imaging 26(12):1729–1739
19.
go back to reference Perez CA, Schulz DA, Aravena CM, Perez CI, Verdaguer TJ (2013) A new method for online retinal optic-disc detection based on cascade classifiers. In: Proceedings of the 2013 IEEE international conference on systems, pp 4300–4304 Perez CA, Schulz DA, Aravena CM, Perez CI, Verdaguer TJ (2013) A new method for online retinal optic-disc detection based on cascade classifiers. In: Proceedings of the 2013 IEEE international conference on systems, pp 4300–4304
20.
go back to reference Zhou W, Wu C, Chen D, Yi Y, Du W (2017) Automatic microaneurysm detection using the sparse principal component analysis-based unsupervised classification method. IEEE Access 5(99):2563–2572 Zhou W, Wu C, Chen D, Yi Y, Du W (2017) Automatic microaneurysm detection using the sparse principal component analysis-based unsupervised classification method. IEEE Access 5(99):2563–2572
21.
go back to reference Zhou W, Wu C, Yi Y, Du W (2017) Automatic detection of exudates in digital color fundus images using superpixel multi-feature classification. IEEE Access 5:17077–17088 Zhou W, Wu C, Yi Y, Du W (2017) Automatic detection of exudates in digital color fundus images using superpixel multi-feature classification. IEEE Access 5:17077–17088
22.
go back to reference Zhou W, Wu H, Wu C, Yu X, Yi Y (2018) Automatic optic disc detection in color retinal images by local feature spectrum analysis. Comput Math Methods Med 2018:1–12MATH Zhou W, Wu H, Wu C, Yu X, Yi Y (2018) Automatic optic disc detection in color retinal images by local feature spectrum analysis. Comput Math Methods Med 2018:1–12MATH
23.
go back to reference Benhur A, Weston J (2010) A user’s guide to support vector machines. Methods Mol Biol 609(2010):223 Benhur A, Weston J (2010) A user’s guide to support vector machines. Methods Mol Biol 609(2010):223
24.
go back to reference Cao W, Wang X, Ming Z, Gao J (2018) A review on neural networks with random weights. Neurocomputing 275:278–287 Cao W, Wang X, Ming Z, Gao J (2018) A review on neural networks with random weights. Neurocomputing 275:278–287
25.
go back to reference Wang X, Cao W (2018) Non-iterative approaches in training feed-forward neural networks and their applications. Soft Comput 22(11):3473–3476MATH Wang X, Cao W (2018) Non-iterative approaches in training feed-forward neural networks and their applications. Soft Comput 22(11):3473–3476MATH
26.
go back to reference Zhai J, Zhang S, Wang C (2017) The classification of imbalanced large data sets based on mapreduce and ensemble of elm classifiers. Int J Mach Learn Cybern 8(3):1009–1017 Zhai J, Zhang S, Wang C (2017) The classification of imbalanced large data sets based on mapreduce and ensemble of elm classifiers. Int J Mach Learn Cybern 8(3):1009–1017
27.
go back to reference Cao W, Gao J, Ming Z, Cai S, Shan Z (2018) Fuzziness-based online sequential extreme learning machine for classification problems. Soft Comput 22(11):3487–3494 Cao W, Gao J, Ming Z, Cai S, Shan Z (2018) Fuzziness-based online sequential extreme learning machine for classification problems. Soft Comput 22(11):3487–3494
28.
go back to reference Liu M, Liu B, Zhang C, Wang W, Sun W (2017) Semi-supervised low rank kernel learning algorithm via extreme learning machine. Int J Mach Learn Cybern 8(3):1039–1052 Liu M, Liu B, Zhang C, Wang W, Sun W (2017) Semi-supervised low rank kernel learning algorithm via extreme learning machine. Int J Mach Learn Cybern 8(3):1039–1052
29.
go back to reference Ding S, Zhang N, Zhang J, Xu X, Shi Z (2017) Unsupervised extreme learning machine with representational features. Int J Mach Learn Cybern 8(2):587–595 Ding S, Zhang N, Zhang J, Xu X, Shi Z (2017) Unsupervised extreme learning machine with representational features. Int J Mach Learn Cybern 8(2):587–595
30.
go back to reference Mao W, Wang J, Xue Z (2017) An ELM-based model with sparse-weighting strategy for sequential data imbalance problem. Int J Mach Learn Cybern 8(4):1333–1345 Mao W, Wang J, Xue Z (2017) An ELM-based model with sparse-weighting strategy for sequential data imbalance problem. Int J Mach Learn Cybern 8(4):1333–1345
31.
go back to reference Yi Y, Chen Y, Dai J, Gui X, Chen C, Lei G, Wang W (2018) Semi-supervised ridge regression with adaptive graph-based label propagation. Appl Sci 8(12):2631–2636 Yi Y, Chen Y, Dai J, Gui X, Chen C, Lei G, Wang W (2018) Semi-supervised ridge regression with adaptive graph-based label propagation. Appl Sci 8(12):2631–2636
32.
go back to reference Huang G, Song S, Gupta JN, Wu C (2014) Semi-supervised and unsupervised extreme learning machines. Cybern IEEE Trans 44(12):2405–2417 Huang G, Song S, Gupta JN, Wu C (2014) Semi-supervised and unsupervised extreme learning machines. Cybern IEEE Trans 44(12):2405–2417
33.
go back to reference Liu G, Lin Z, Yan S, Sun J, Yu Y, Ma Y (2013) Robust recovery of subspace structures by low-rank representation. IEEE Trans Pattern Anal Mach Intell 35(1):171–184 Liu G, Lin Z, Yan S, Sun J, Yu Y, Ma Y (2013) Robust recovery of subspace structures by low-rank representation. IEEE Trans Pattern Anal Mach Intell 35(1):171–184
34.
go back to reference Sánchez CI, Hornero R, López MI (2008) A novel automatic image processing algorithm for detection of hard exudates based on retinal image analysis. Med Eng Phys 30(3):350–357 Sánchez CI, Hornero R, López MI (2008) A novel automatic image processing algorithm for detection of hard exudates based on retinal image analysis. Med Eng Phys 30(3):350–357
35.
go back to reference Reza AM (2004) Realization of the contrast limited adaptive histogram equalization (clahe) for real-time image enhancement. J Signal Process Syst 38(1):35–44 Reza AM (2004) Realization of the contrast limited adaptive histogram equalization (clahe) for real-time image enhancement. J Signal Process Syst 38(1):35–44
36.
go back to reference Bharath R, Nicholas LZJ, Xiang C (2013) Scalable scene understanding using saliency-guided object localization. IEEE Int Conf Control Autom 45(5):1503–1508 Bharath R, Nicholas LZJ, Xiang C (2013) Scalable scene understanding using saliency-guided object localization. IEEE Int Conf Control Autom 45(5):1503–1508
38.
go back to reference Huang G, Zhu Q, Siew C (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1–3):489–501 Huang G, Zhu Q, Siew C (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1–3):489–501
39.
go back to reference Liu T, Huang GB, Lin Z (2018) Extreme learning machine for joint embedding and clustering. Neurocomputing 277:78–88 Liu T, Huang GB, Lin Z (2018) Extreme learning machine for joint embedding and clustering. Neurocomputing 277:78–88
40.
go back to reference Yao L, Ge Z (2018) Deep learning of semi-supervised process data with hierarchical extreme learning machine and soft sensor application. IEEE Trans Industr Electron 65(2):1490–1498 Yao L, Ge Z (2018) Deep learning of semi-supervised process data with hierarchical extreme learning machine and soft sensor application. IEEE Trans Industr Electron 65(2):1490–1498
41.
go back to reference Pang J, Gu Y, Xu J, Yu G (2018) Semi-supervised multi-graph classification using optimal feature selection and extreme learning machine. Neurocomputing 277:89–100 Pang J, Gu Y, Xu J, Yu G (2018) Semi-supervised multi-graph classification using optimal feature selection and extreme learning machine. Neurocomputing 277:89–100
42.
go back to reference Chen Y, Song S, Li S, Lang L, Wu C (2018) Domain space transfer extreme learning machine for domain adaptation. IEEE Trans Cybern PP(99):1–14 Chen Y, Song S, Li S, Lang L, Wu C (2018) Domain space transfer extreme learning machine for domain adaptation. IEEE Trans Cybern PP(99):1–14
43.
go back to reference Yi Y, Qiao S, Zhou W, Zheng C, Liu Q, Wang J (2018) Adaptive multiple graph regularized semi-supervised extreme learning machine. Soft Comput 22(11):3545–3562MATH Yi Y, Qiao S, Zhou W, Zheng C, Liu Q, Wang J (2018) Adaptive multiple graph regularized semi-supervised extreme learning machine. Soft Comput 22(11):3545–3562MATH
44.
go back to reference Wright J, Yang AY, Ganesh A, Sastry SS, Ma Y (2009) Robust face recognition via sparse representation. IEEE Trans Pattern Anal Mach Intell 31(2):210–227 Wright J, Yang AY, Ganesh A, Sastry SS, Ma Y (2009) Robust face recognition via sparse representation. IEEE Trans Pattern Anal Mach Intell 31(2):210–227
45.
go back to reference Zhang L, Yang M, Feng X (2011) Sparse representation or collaborative representation: which helps face recognition? In: Proceeding of IEEE international conference on computer vision, pp 471–478 Zhang L, Yang M, Feng X (2011) Sparse representation or collaborative representation: which helps face recognition? In: Proceeding of IEEE international conference on computer vision, pp 471–478
47.
go back to reference Kauppi T, Kalesnykiene V, Kamarainen JK, Lensu L, Sorri I, Raninen A et al (2013) DIARETDB1 diabetic retinopathy database and evaluation protocol. In: British machine vision conference 2007, University of Warwick, UK, September. DBLP Kauppi T, Kalesnykiene V, Kamarainen JK, Lensu L, Sorri I, Raninen A et al (2013) DIARETDB1 diabetic retinopathy database and evaluation protocol. In: British machine vision conference 2007, University of Warwick, UK, September. DBLP
48.
go back to reference Decencière E, Zhang X, Cazuguel G, Lay B, Cochener B, Trone C, Gain P, Ordonez R, Massin P, Erginay A, Charton B, Klein JC (2014) Feedback on a publicly distributed image database: the Messidor database. Image Anal Stereol 33(3):231–234MATH Decencière E, Zhang X, Cazuguel G, Lay B, Cochener B, Trone C, Gain P, Ordonez R, Massin P, Erginay A, Charton B, Klein JC (2014) Feedback on a publicly distributed image database: the Messidor database. Image Anal Stereol 33(3):231–234MATH
49.
go back to reference Wang J, Zhao R, Wang Y, Zheng C, Kong J, Yi Y (2017) Locality constrained graph optimization for dimensionality reduction. Neurocomputing 245:55–67 Wang J, Zhao R, Wang Y, Zheng C, Kong J, Yi Y (2017) Locality constrained graph optimization for dimensionality reduction. Neurocomputing 245:55–67
50.
go back to reference An S, Liu W, Venkatesh S (2007) Face recognition using kernel ridge regression. Proc IEEE Int Conf Comput Vis 5(6):1–7 An S, Liu W, Venkatesh S (2007) Face recognition using kernel ridge regression. Proc IEEE Int Conf Comput Vis 5(6):1–7
51.
go back to reference Xiang S, Nie F, Zhang C (2010) Semi-supervised classification via local spline regression. IEEE Trans Pattern Anal Mach Intell 32(11):2039–2053 Xiang S, Nie F, Zhang C (2010) Semi-supervised classification via local spline regression. IEEE Trans Pattern Anal Mach Intell 32(11):2039–2053
52.
go back to reference Yu H, Barriga ES, Agurto C, Echegaray S, Pattichis MS, Bauman W (2012) Fast localization and segmentation of optic disk in retinal images using directional matched filtering and level sets. IEEE Trans Inf Technol Biomed 16(4):644–657 Yu H, Barriga ES, Agurto C, Echegaray S, Pattichis MS, Bauman W (2012) Fast localization and segmentation of optic disk in retinal images using directional matched filtering and level sets. IEEE Trans Inf Technol Biomed 16(4):644–657
53.
go back to reference Ahmed MI, Amin MA (2015) High speed detection of optical disc in retinal fundus image. Signal Image Video Processing 9(1):77–85 Ahmed MI, Amin MA (2015) High speed detection of optical disc in retinal fundus image. Signal Image Video Processing 9(1):77–85
54.
go back to reference Aquino A, Gegundez ME, Marin D (2012) Automated optic disc detection in retinal images of patients with diabetic retinopathy and risk of macular edema. Int J Biol Life Sci 8(2):87–92 Aquino A, Gegundez ME, Marin D (2012) Automated optic disc detection in retinal images of patients with diabetic retinopathy and risk of macular edema. Int J Biol Life Sci 8(2):87–92
55.
go back to reference Dashtbozorg B, Zhang J, Huang F, Haar Romeny ter BM (2016) Automatic optic disc and fovea detection in retinal images using super-elliptical convergence index filters. In: Proceedings of the international conference image analysis and recognition, pp 697–706 Dashtbozorg B, Zhang J, Huang F, Haar Romeny ter BM (2016) Automatic optic disc and fovea detection in retinal images using super-elliptical convergence index filters. In: Proceedings of the international conference image analysis and recognition, pp 697–706
56.
go back to reference Qureshi RJ, Kovacs L, Harangi B, Nagy B, Peto T, Hajdu A (2012) Combining algorithms for automatic detection of optic disc and macula in fundus images. Comput Vis Image Underst 116:138–145 Qureshi RJ, Kovacs L, Harangi B, Nagy B, Peto T, Hajdu A (2012) Combining algorithms for automatic detection of optic disc and macula in fundus images. Comput Vis Image Underst 116:138–145
57.
go back to reference Pereira C, Gonçalves L, Ferreira M (2013) Optic disc detection in color fundus images using ant colony optimization. Med Biol Eng Comput 51:295–303 Pereira C, Gonçalves L, Ferreira M (2013) Optic disc detection in color fundus images using ant colony optimization. Med Biol Eng Comput 51:295–303
58.
go back to reference Rahebi J, Hardalaç F (2016) A new approach to optic disc detection in human retinal images using the firefly algorithm. Med Biol Eng Comput 54(2–3):453–461 Rahebi J, Hardalaç F (2016) A new approach to optic disc detection in human retinal images using the firefly algorithm. Med Biol Eng Comput 54(2–3):453–461
59.
go back to reference Qiao S, Han N, Gao Y, Li R-H, Huang J, Guo J, Gutierrez LA, Wu X (2018) A fast parallel community discovery model on complex networks through approximate optimization. IEEE Trans Knowl Data Eng 30(9):1638–1651 Qiao S, Han N, Gao Y, Li R-H, Huang J, Guo J, Gutierrez LA, Wu X (2018) A fast parallel community discovery model on complex networks through approximate optimization. IEEE Trans Knowl Data Eng 30(9):1638–1651
60.
go back to reference Qiao S, Han N, Wang J, Li R-H, Gutierrez LA, Wu X (2017) Predicting long-term trajectories of connected vehicles via the prefix-projection technique. IEEE Trans Intell Transp Syst 19(7):2305–2315 Qiao S, Han N, Wang J, Li R-H, Gutierrez LA, Wu X (2017) Predicting long-term trajectories of connected vehicles via the prefix-projection technique. IEEE Trans Intell Transp Syst 19(7):2305–2315
61.
go back to reference Qiao S, Han N, Zhu W, Gutierrez LA (2015) Traplan: an effective three-in-one trajectory-prediction model in transportation networks. IEEE Trans Intell Transp Syst 16(3):1188–1198 Qiao S, Han N, Zhu W, Gutierrez LA (2015) Traplan: an effective three-in-one trajectory-prediction model in transportation networks. IEEE Trans Intell Transp Syst 16(3):1188–1198
62.
go back to reference Qiao S, Shen D, Wang X, Han N, Zhu W (2015) A self-adaptive parameter selection trajectory prediction approach via hidden markov models. IEEE Trans Intell Transp Syst 16(1):284–296 Qiao S, Shen D, Wang X, Han N, Zhu W (2015) A self-adaptive parameter selection trajectory prediction approach via hidden markov models. IEEE Trans Intell Transp Syst 16(1):284–296
63.
go back to reference Yi Y, Zhou W, Bi C, Luo G, Cao Y, Shi Y (2017) Inner product regularized nonnegative self representation for image classification and clustering. IEEE Access 5:14165–14176 Yi Y, Zhou W, Bi C, Luo G, Cao Y, Shi Y (2017) Inner product regularized nonnegative self representation for image classification and clustering. IEEE Access 5:14165–14176
64.
go back to reference Yi Y, Zhou W, Liu Q, Luo G, Wang J, Fang Y, Zheng C (2018) Ordinal preserving matrix factorization for unsupervised feature selection. Sig Process Image Commun 67:118–131 Yi Y, Zhou W, Liu Q, Luo G, Wang J, Fang Y, Zheng C (2018) Ordinal preserving matrix factorization for unsupervised feature selection. Sig Process Image Commun 67:118–131
65.
go back to reference Yi Y, Zhou W, Shi Y, Dai J (2018) Speedup two-class supervised outlier detection. IEEE Access 6:63923–63933 Yi Y, Zhou W, Shi Y, Dai J (2018) Speedup two-class supervised outlier detection. IEEE Access 6:63923–63933
Metadata
Title
Automatic optic disc detection using low-rank representation based semi-supervised extreme learning machine
Authors
Wei Zhou
Shaojie Qiao
Yugen Yi
Nan Han
Yuqi Chen
Gang Lei
Publication date
12-02-2019
Publisher
Springer Berlin Heidelberg
Published in
International Journal of Machine Learning and Cybernetics / Issue 1/2020
Print ISSN: 1868-8071
Electronic ISSN: 1868-808X
DOI
https://doi.org/10.1007/s13042-019-00939-0

Other articles of this Issue 1/2020

International Journal of Machine Learning and Cybernetics 1/2020 Go to the issue