A Study on Dimensionality Reduction and Parameters for Hyperspectral Imagery Based on Manifold Learning

被引:2
|
作者
Song, Wenhui [1 ]
Zhang, Xin [2 ]
Yang, Guozhu [3 ]
Chen, Yijin [1 ]
Wang, Lianchao [1 ]
Xu, Hanghang [1 ]
机构
[1] China Univ Min & Technol Beijing, Coll Geosci & Surveying Engn, Beijing 100083, Peoples R China
[2] Chinese Acad Sci, Inst Remote Sensing & Digital Earth, Beijing 100101, Peoples R China
[3] State Grid Gen Aviat Co Ltd, Beijing 102209, Peoples R China
关键词
hyperspectral imagery; manifold learning; dimensionality reduction; feature extraction; optimal neighborhood; intrinsic dimensionality; INTRINSIC DIMENSIONALITY; SPARSE REPRESENTATION; EIGENMAPS; ALGORITHM;
D O I
10.3390/s24072089
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
With the rapid advancement of remote-sensing technology, the spectral information obtained from hyperspectral remote-sensing imagery has become increasingly rich, facilitating detailed spectral analysis of Earth's surface objects. However, the abundance of spectral information presents certain challenges for data processing, such as the "curse of dimensionality" leading to the "Hughes phenomenon", "strong correlation" due to high resolution, and "nonlinear characteristics" caused by varying surface reflectances. Consequently, dimensionality reduction of hyperspectral data emerges as a critical task. This paper begins by elucidating the principles and processes of hyperspectral image dimensionality reduction based on manifold theory and learning methods, in light of the nonlinear structures and features present in hyperspectral remote-sensing data, and formulates a dimensionality reduction process based on manifold learning. Subsequently, this study explores the capabilities of feature extraction and low-dimensional embedding for hyperspectral imagery using manifold learning approaches, including principal components analysis (PCA), multidimensional scaling (MDS), and linear discriminant analysis (LDA) for linear methods; and isometric mapping (Isomap), locally linear embedding (LLE), Laplacian eigenmaps (LE), Hessian locally linear embedding (HLLE), local tangent space alignment (LTSA), and maximum variance unfolding (MVU) for nonlinear methods, based on the Indian Pines hyperspectral dataset and Pavia University dataset. Furthermore, the paper investigates the optimal neighborhood computation time and overall algorithm runtime for feature extraction in hyperspectral imagery, varying by the choice of neighborhood k and intrinsic dimensionality d values across different manifold learning methods. Based on the outcomes of feature extraction, the study examines the classification experiments of various manifold learning methods, comparing and analyzing the variations in classification accuracy and Kappa coefficient with different selections of neighborhood k and intrinsic dimensionality d values. Building on this, the impact of selecting different bandwidths t for the Gaussian kernel in the LE method and different Lagrange multipliers lambda for the MVU method on classification accuracy, given varying choices of neighborhood k and intrinsic dimensionality d, is explored. Through these experiments, the paper investigates the capability and effectiveness of different manifold learning methods in feature extraction and dimensionality reduction within hyperspectral imagery, as influenced by the selection of neighborhood k and intrinsic dimensionality d values, identifying the optimal neighborhood k and intrinsic dimensionality d value for each method. A comparison of classification accuracies reveals that the LTSA method yields superior classification results compared to other manifold learning approaches. The study demonstrates the advantages of manifold learning methods in processing hyperspectral image data, providing an experimental reference for subsequent research on hyperspectral image dimensionality reduction using manifold learning methods.
引用
收藏
页数:40
相关论文
共 50 条
  • [21] Interpretation of hyperspectral imagery based on hybrid dimensionality reduction methods
    Sellami, Akrem
    Ettabaa, Karim Saheb
    Farah, Imed Riadh
    Solaiman, Basel
    2014 FIRST INTERNATIONAL IMAGE PROCESSING, APPLICATIONS AND SYSTEMS CONFERENCE (IPAS), 2014,
  • [22] Graph-Based Dimensionality Reduction for Hyperspectral Imagery: A Review
    Ye, Zhen
    Shi, Shihao
    Cao, Zhan
    Lin, Bai
    Li, Cuiling
    Sun, Tao
    Xi, Yongqiang
    Journal of Beijing Institute of Technology (English Edition), 2021, 30 (02): : 91 - 112
  • [23] Graph-Based Dimensionality Reduction for Hyperspectral Imagery: A Review
    Zhen Ye
    Shihao Shi
    Zhan Cao
    Lin Bai
    Cuiling Li
    Tao Sun
    Yongqiang Xi
    Journal of Beijing Institute of Technology, 2021, 30 (02) : 91 - 112
  • [24] Clustered Multiple Manifold Metric Learning for Hyperspectral Image Dimensionality Reduction and Classification
    Dong, Yanni
    Jin, Yao
    Cheng, Shunbo
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [25] Spectral-Locational-Spatial Manifold Learning for Hyperspectral Images Dimensionality Reduction
    Li, Na
    Zhou, Deyun
    Shi, Jiao
    Wu, Tao
    Gong, Maoguo
    REMOTE SENSING, 2021, 13 (14)
  • [26] Dimensionality reduction of hyperspectral images based on sparse discriminant manifold embedding
    Huang, Hong
    Luo, Fulin
    Liu, Jiamin
    Yang, Yaqiong
    ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2015, 106 : 42 - 54
  • [27] Dimensionality Reduction via Regression in Hyperspectral Imagery
    Laparra, Valero
    Malo, Jesus
    Camps-Valls, Gustau
    IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2015, 9 (06) : 1026 - 1036
  • [28] Progressive dimensionality reduction by transform for hyperspectral imagery
    Chang, Chein-I
    Safavi, Haleh
    PATTERN RECOGNITION, 2011, 44 (10-11) : 2760 - 2773
  • [29] A Comparison of Dimensionality Reduction Techniques for Hyperspectral Imagery
    Race, Benjamin
    Wittman, Todd
    ALGORITHMS, TECHNOLOGIES, AND APPLICATIONS FOR MULTISPECTRAL AND HYPERSPECTRAL IMAGING XXVIII, 2022, 12094
  • [30] Learning a local manifold representation based on improved neighborhood rough set and LLE for hyperspectral dimensionality reduction
    Yu, Wenbo
    Zhang, Miao
    Shen, Yi
    SIGNAL PROCESSING, 2019, 164 : 20 - 29