• DocumentCode
    35866
  • Title

    Semisupervised Self-Learning for Hyperspectral Image Classification

  • Author

    Dopido, Inmaculada ; Jun Li ; Marpu, Prashanth R. ; Plaza, Antonio ; Bioucas Dias, Jose M. ; Benediktsson, Jon Atli

  • Author_Institution
    Dept. of Technol. of Comput. & Commun., Univ. of Extremadura, Caceres, Spain
  • Volume
    51
  • Issue
    7
  • fYear
    2013
  • fDate
    Jul-13
  • Firstpage
    4032
  • Lastpage
    4044
  • Abstract
    Remotely sensed hyperspectral imaging allows for the detailed analysis of the surface of the Earth using advanced imaging instruments which can produce high-dimensional images with hundreds of spectral bands. Supervised hyperspectral image classification is a difficult task due to the unbalance between the high dimensionality of the data and the limited availability of labeled training samples in real analysis scenarios. While the collection of labeled samples is generally difficult, expensive, and time-consuming, unlabeled samples can be generated in a much easier way. This observation has fostered the idea of adopting semisupervised learning techniques in hyperspectral image classification. The main assumption of such techniques is that the new (unlabeled) training samples can be obtained from a (limited) set of available labeled samples without significant effort/cost. In this paper, we develop a new approach for semisupervised learning which adapts available active learning methods (in which a trained expert actively selects unlabeled samples) to a self-learning framework in which the machine learning algorithm itself selects the most useful and informative unlabeled samples for classification purposes. In this way, the labels of the selected pixels are estimated by the classifier itself, with the advantage that no extra cost is required for labeling the selected pixels using this machine-machine framework when compared with traditional machine-human active learning. The proposed approach is illustrated with two different classifiers: multinomial logistic regression and a probabilistic pixelwise support vector machine. Our experimental results with real hyperspectral images collected by the National Aeronautics and Space Administration Jet Propulsion Laboratory´s Airborne Visible-Infrared Imaging Spectrometer and the Reflective Optics Spectrographic Imaging System indicate that the use of self-learning represents an effective and promising strategy in the cont- xt of hyperspectral image classification.
  • Keywords
    geophysical image processing; image classification; learning (artificial intelligence); regression analysis; remote sensing; support vector machines; Earth surface; Jet Propulsion Laboratory; National Aeronautics and Space Administration; active learning method; airborne visible-infrared imaging spectrometer; classification purpose; hyperspectral image classification; imaging instrument; machine learning algorithm; machine-human active learning; machine-machine framework; multinomial logistic regression; probabilistic pixelwise support vector machine; reflective optics spectrographic imaging system; remotely sensed hyperspectral imaging; self-learning framework; semisupervised self-learning technique; Hyperspectral imaging; Kernel; Probabilistic logic; Semisupervised learning; Support vector machines; Training; Hyperspectral image classification; multinomial logistic regression (MLR); probabilistic support vector machine (SVM); semisupervised self-learning;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2012.2228275
  • Filename
    6423895