Abstract
Aimed at solving the existing problems in most traditional classification algorithms applied in hyper-spectral classification, such as low speed, low accuracy, and difficult convergence, a hyper-spectral image classification based on an adaptive ant colony algorithm (ACA) is proposed in this paper. First of all, training samples are used to construct the paths selected by ants, and rule pruning is used to prune the paths irrelevant to classification and adaptively update paths. Then, the constructed paths are used to classify the hyper-spectral data. Finally, an accuracy evaluation of the classification is conducted. The hyper-spectral remote sensing data of Washington, D.C., was used to test the method. The method was also compared with principal component analysis (PCA), radial basis function (RBF) neural network, semi-supervised sparse discriminate embedding (SSDE), and adaptive sparse representation (ASP). Results show that the overall classification accuracy increases by about 7.6% using the adaptive ant colony algorithm compared with other algorithms, which improves the classification accuracy of hyper-spectral images efficiently.
Similar content being viewed by others
Change history
28 September 2021
An Editorial Expression of Concern to this paper has been published: https://doi.org/10.1007/s12517-021-08472-7
References
Alvarez GM, lrvine K, Griensven A (2013) Relationships between aquatic biotic communities and water quality in a tropical river-wetland system. Environ Sci Pol 5:1–13
Bachmann CM, Ainsworth R (2005) Exploiting manifold geometry in hyperspectral imagery. IEEE Trans Geosci Remote Sens 43(3):441–454
Bamberger RH, Smith MT (2002) A filter bank for the directional decomposition of images: theory and design. IEEE Trans Signal Process 40(4):882–893
Belhumeur PN, Hespanha JP, Kriegman DJ (2007) Recognition using class specific linear projection. IEEE Trans Pattern Anal Mach Intell 19(7):711–720
Bengio Y, Lamblin P, Popovici D et al (2006) Greedy layer-wise training of deep networks. Proc of international conference on neural information processing systems. MIT press, Cambridge, pp 153–160
Burt PJ, Adelson EH (2003) The Laplacian pyramid as a compact image code. IEEE Trans Commun 31(4):532–540
Dai Q, Liu JB (2006) Study on the multi-feature remote sensing data classification based on ACJO rule mining algorithm. Geogr Res 28(4):1136–1145
Dai Q, Liu JB (2008) Research on remote sensing image classification using ant Colony optimization based classification rule mining algorithm. Computer Engineering and Applications 15:4412–4414
Diao W, Sun X, Zheng X, Dou F, Wang H, Fu K (2016) Efficient saliency-based object detection in remote sensing images using deep belief networks. IEEE Geosci Remote Sens Lett 13:137–141
Do MN, Vetterli M (2002) Contourlets: a directional multi resolution image representation. In proceedings international conference on image processing, 357-360
Fan X, Pete WT (2018) Combined deep belief network in deep learning with affinity propagation clustering algorithm for roller bearings fault diagnosis without data label. J Vib Control 25(2):473–482
Gong MG, Zhao JJ, Liu J (2016) Change detection in synthetic aperture radar images based on deep neural networks. IEEE Transactions on Neural Networks and Learning Systems 27:25–138
Hai B, Huang R, Huang X et al (2016) Sound quality prediction of vehicle interior noise using deep belief networks. Appl Acoust 35:1–12
He XF (2010) Laplacian regularized D-optimal design for active learning and its application to image retrieval. IEEE Trans Image Process 19(1):254–263
He TD, Zhao KL (2018) Multi-spectral remote sensing land use classification based on RBF neural network with parameters optimized by genetic algorithm. International conference on sensor networks and signal processing, 118-123
Huang H (2014) Hyper-spectral remote sensing image classification based on SSDE. Opt Precis Eng 22:434–442
Jia L, Li M, Zhang P (2016) SAR image change detection based on multiple kernel k-means clustering with local neighborhood information. IEEE Geosci Remote Sens Lett 13(6):856–860
Kaya GT, Ersoy OK, Kamasak ME (2011) Support vector selection and adaptation for remote sensing classification. IEEE Transactions Geoscience & Remote Sensing 49:2071–2079
Lecun Y, Bottou L, Bengio Y et al (2014) Gradient-based learning applied to document recognition. Proc IEEE 86(11):2278–2324
Liu L, Sun W, Ding B (2016) Offline handwritten Chinese character recognition based on DBN fusion model. IEEE International Conference on Information and Automation (ICIA), 1911-1918
Liu J, Gong MG, Qin K (2018) A seep convolutional coupling network for change detection based on heterogeneous optical and radar images. IEEE Transactions on Neural Networks and Learning Systems 29:545–559
Lu J (2010) Enhanced locality sensitive discriminant analysis for image recognition. Electron Lett 46(3):213–214
Lv Q, Dou Y, Niu X et al (2014) Classification of land cover based on deep belief networks using polarimetric RADARSAT-2 data. Proc of Geoscience and Remote Sensing Symposium, 4679–4682
Niu X, Ban YF (2014) A novel contextual classification algorithm for multitemporal polarimetric SAR data. IEEE Geosci Remote Sens Lett 11(3):681–685
Qu F, Zhang JT, Shao ZT et al (2017) An intrusion detection model based on deep belief network. International Conference on Network, Communication and Computing, 97–101
Sugiyama M, Nakajima S, Sese J (2010) Semi-supervised local fisher discriminant analysis for dimensionality reduction. Mach Learn 78(1–2):35–61
Tenenbaum JB, Silva VD, Langford JC (2010) A global geometric framework for nonlinear dimensionality reduction. Science 290(5500):2319–2323
Tian B, Xiong WZ (2018) A side information generation method using deep learning for distributed video coding. J Phys Conf Ser 1087(6):210–223
Turk M, Pentland A (2001) Eigenfaces for recognition. J Cogn Neurosci 3(1):71–86
Wang ST, Chang ZG, Du WB (2011) Research on multi-source remote sensing image classification based on SVM different kernel functions. Journal of Henan Polytechnic University 30(3):304–308
Yang W, Yang XL (2016) Region-based change detection for polarimetric SAR images using Wishart mixture models. IEEE Trans Geosci Remote Sens 54(11):6746–6756
Yang Y, Li YX, Tao D (2009) Binary sparse nonnegative matrix factorization. IEEE Transactions on Circuits and Systems for Video Technology 19(5):772–777
Yu K, Lin TR, Tan J (2020) A bearing fault and severity diagnostic technique using adaptive deep belief networks and Dempster–Shafer theory. Struct Health Monit 19(1):240–261
Zanetti M, Bovolo F, Bruzzone L (2015) Rayleigh-Rice mixture parameter estimation via EM algorithm for change detection in multispectral images. IEEE Trans Image Process 24(12):5004–5016
Zhang YJ, Peng DF, Huang X (2018) Object-based change detection for VHR images based on multiscale uncertainty analysis. IEEE Geosci Remote Sens Lett 15:13–17
Zhu X, Goldberg AB (2009) Introduction to semi-supervised learning. Synthesis lectures on artificial intelligence and machine learning 3(1):1–130
Funding
This research work has been partially supported by National Science Foundation of China under grant No. 41371338.
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflicts of interest/competing interests
For the paper above mentioned, on behalf of all the authors, I (we) declare that we have no financial and personal relationships with other people or organizations that can inappropriately influence our work and there is no professional or other personal interests of any nature or kind in any product, service, and/or company that could be construed as influencing the position presented in, or the review of.
Availability of data and material
Please contact author for data requests.
Code availability
Please contact author for data requests.
Additional information
This article is part of the Topical Collection on Big Data and Intelligent Computing Techniques in Geosciences
Rights and permissions
About this article
Cite this article
He, T., Tong, H. Remote sensing image classification based on adaptive ant colony algorithm. Arab J Geosci 13, 675 (2020). https://doi.org/10.1007/s12517-020-05717-9
Received:
Accepted:
Published:
DOI: https://doi.org/10.1007/s12517-020-05717-9