• DocumentCode
    43560
  • Title

    Features, Color Spaces, and Boosting: New Insights on Semantic Classification of Remote Sensing Images

  • Author

    Tokarczyk, Piotr ; Wegner, Jan Dirk ; Walk, Stefan ; Schindler, Kaspar

  • Author_Institution
    Photogrammetry & Remote Sensing Group, Swiss Fed. Inst. of Technol., Zürich, Switzerland
  • Volume
    53
  • Issue
    1
  • fYear
    2015
  • fDate
    Jan. 2015
  • Firstpage
    280
  • Lastpage
    295
  • Abstract
    A major yet largely unsolved problem in the semantic classification of very high resolution remote sensing images is the design and selection of appropriate features. At a ground sampling distance below half a meter, fine-grained texture details of objects emerge and lead to a large intraclass variability while generally keeping the between-class variability at a low level. Usually, the user makes an educated guess on what features seem to appropriately capture characteristic object class patterns. Here, we propose to avoid manual feature selection and let a boosting classifier choose optimal features from a vast Randomized Quasi-Exhaustive (RQE) set of feature candidates directly during training. This RQE feature set consists of a multitude of very simple features that are computed efficiently via integral images inside a sliding window. This simple but comprehensive feature candidate set enables the boosting classifier to assemble the most discriminative textures at different scale levels to classify a small number of broad urban land-cover classes. We do an extensive evaluation on several data sets and compare performance against multiple feature extraction baselines in different color spaces. In addition, we verify experimentally if we gain any classification accuracy if moving from boosting stumps to trees. Cross-validation minimizes the possible bias caused by specific training/testing setups. It turns out that boosting in combination with the proposed RQE feature set outperforms all baseline features while still remaining computationally efficient. Particularly boosting trees (instead of stumps) captures class patterns so well that results suggest to completely leave feature selection to the classifier.
  • Keywords
    feature extraction; feature selection; geophysical image processing; image classification; image colour analysis; image resolution; image sampling; image texture; land cover; learning (artificial intelligence); remote sensing; RQE feature set; between-class variability; boosting classifier; broad urban land-cover class; color spacing; feature selection; fine-grained image texture; ground image sampling distance; image resolution; intraclass variability; multiple feature extraction; object class pattern characteristics; randomized quasiexhaustive feature set; remote sensing image classification; semantic image classification; training-testing setup; Boosting; Feature extraction; Remote sensing; Semantics; Standards; Training; Vectors; Classification; feature extraction; land cover; pattern recognition;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2014.2321423
  • Filename
    6827949