Biologically-inspired data decorrelation for hyper-spectral imaging

被引:5
作者
Picon, Artzai [1 ]
Ghita, Ovidiu [2 ]
Rodriguez-Vaamonde, Sergio [1 ]
Ma Iriondo, Pedro [3 ]
Whelan, Paul F. [2 ]
机构
[1] Tecnalia, Informat & Interact Syst Unit, Zamudio, Bizkaia, Spain
[2] Dublin City Univ, Sch Elect Engn, Ctr Image Proc & Anal, Dublin 9, Ireland
[3] Univ Basque Country, Dept Automat Control & Syst Engn, UPV EHU, Bilbao, Spain
来源
EURASIP JOURNAL ON ADVANCES IN SIGNAL PROCESSING | 2011年
关键词
Hyper-spectral data; feature extraction; fuzzy sets; material classification; MATERIAL IDENTIFICATION; HYPERSPECTRAL IMAGERY; CLASSIFICATION; SELECTION; SENSITIVITIES; ILLUMINATION; FEATURES; CONES;
D O I
10.1186/1687-6180-2011-66
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Hyper-spectral data allows the construction of more robust statistical models to sample the material properties than the standard tri-chromatic color representation. However, because of the large dimensionality and complexity of the hyper-spectral data, the extraction of robust features (image descriptors) is not a trivial issue. Thus, to facilitate efficient feature extraction, decorrelation techniques are commonly applied to reduce the dimensionality of the hyper-spectral data with the aim of generating compact and highly discriminative image descriptors. Current methodologies for data decorrelation such as principal component analysis (PCA), linear discriminant analysis (LDA), wavelet decomposition (WD), or band selection methods require complex and subjective training procedures and in addition the compressed spectral information is not directly related to the physical (spectral) characteristics associated with the analyzed materials. The major objective of this article is to introduce and evaluate a new data decorrelation methodology using an approach that closely emulates the human vision. The proposed data decorrelation scheme has been employed to optimally minimize the amount of redundant information contained in the highly correlated hyper-spectral bands and has been comprehensively evaluated in the context of non-ferrous material classification
引用
收藏
页数:10
相关论文
共 50 条
[31]   Hyper-spectral Image Super-resolution Using Non-negative Spectral Representation with Data-guided Sparsity [J].
Han, Xian-Hua ;
Wang, Jian ;
Shi, Boxin ;
Zheng, YinQiang ;
Chen, Yen-Wei .
2017 IEEE INTERNATIONAL SYMPOSIUM ON MULTIMEDIA (ISM), 2017, :500-506
[32]   Automated classification and visualization of healthy and pathological dental tissues based on near-infrared hyper-spectral imaging [J].
Usenik, Peter ;
Buermen, Miran ;
Vrtovec, Tomaz ;
Fidler, Ales ;
Pernus, Franjo ;
Likar, Bostjan .
MEDICAL IMAGING 2011: COMPUTER-AIDED DIAGNOSIS, 2011, 7963
[33]   A REVIEW OF DIMENSIONALITY REDUCTION TECHNIQUES FOR PROCESSING HYPER-SPECTRAL OPTICAL SIGNAL [J].
del Aguila, Ana ;
Efremenko, Dmitry S. ;
Trautmann, Thomas .
LIGHT & ENGINEERING, 2019, 27 (03) :85-98
[34]   Low-cost hyper-spectral imaging system using a linear variable bandpass filter for agritech applications [J].
Song, Shigeng ;
Gibson, Des ;
Ahmadzadeh, Sam ;
Chu, Hin On ;
Warden, Barry ;
Overend, Russell ;
Macfarlane, Fraser ;
Murray, Paul ;
Marshall, Stephen ;
Aitkenhead, Matt ;
Bienkowski, Damian ;
Allison, Russell .
APPLIED OPTICS, 2020, 59 (05) :A167-A175
[35]   Drusen diagnosis comparison between hyper-spectral and color retinal mages [J].
Wang, Yiyang ;
Soetikno, Brian ;
Furst, Jacob ;
Raicu, Daniela ;
Fawzi, Amani A. .
BIOMEDICAL OPTICS EXPRESS, 2019, 10 (02) :914-931
[36]   Biologically-Inspired Learning and Adaptation of Self-Evolving Control for Networked Mobile Robots [J].
Xu, Sendren Sheng-Dong ;
Huang, Hsu-Chih ;
Chiu, Tai-Chun ;
Lin, Shao-Kang .
APPLIED SCIENCES-BASEL, 2019, 9 (05)
[37]   Hyper-Spectral Image Analysis With Partially Latent Regression and Spatial Markov Dependencies [J].
Deleforge, Antoine ;
Forbes, Florence ;
Ba, Sileye ;
Horaud, Radu .
IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2015, 9 (06) :1037-1048
[38]   Residual HSRCNN: Residual Hyper-Spectral Reconstruction CNN from an RGB Image [J].
Han, Xian-Hua ;
Shi, Boxin ;
Zheng, Yinqiang .
2018 24TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2018, :2664-2669
[39]   Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data [J].
Abelardo Montesinos-López ;
Osval A. Montesinos-López ;
Jaime Cuevas ;
Walter A. Mata-López ;
Juan Burgueño ;
Sushismita Mondal ;
Julio Huerta ;
Ravi Singh ;
Enrique Autrique ;
Lorena González-Pérez ;
José Crossa .
Plant Methods, 13
[40]   Hyper-spectral image segmentation using an improved PSO aided with multilevel fuzzy entropy [J].
Chakraborty, Rupak ;
Sushil, Rama ;
Garg, M. L. .
MULTIMEDIA TOOLS AND APPLICATIONS, 2019, 78 (23) :34027-34063