• DocumentCode
    1005522
  • Title

    Automated Image Registration Based on Pseudoinvariant Metrics of Dynamic Land-Surface Features

  • Author

    Shah, Chintan A. ; Sheng, Yongwei ; Smith, Laurence C.

  • Author_Institution
    Dept. of Geogr., California Univ., Los Angeles, CA
  • Volume
    46
  • Issue
    11
  • fYear
    2008
  • Firstpage
    3908
  • Lastpage
    3916
  • Abstract
    Accurate assessment of land-cover/land-use change is essential for understanding the impacts of global change and necessitates the use of satellite data. Satellite change detection requires large volumes of multitemporal images to be precisely registered. Image registration is particularly difficult in dynamic (i.e., rapidly time varying) landscapes since the changes themselves interfere with the process of tie-point identification. Despite the existence of sophisticated registration algorithms, it is still problematic to register images acquired over such areas due to a dearth of stable features. Hence, we propose an automated image registration method using tie points derived from pseudoinvariant features (PIFs) and apply the method to register satellite images for hydrologic change detection in the Arctic, where abundant shallow lakes dominate the landscape but change significantly over time. A key to the method is the identification of ldquoshape-stablerdquo lakes as PIFs, which preserve their geometric shape even though the shorelines may migrate significantly. The proposed method automatically identifies PIFs based on scale-invariant shape descriptors and employs their center points for establishing the registration model. Our method thus consists of water-body feature extraction, PIF detection based on feature shape criteria, and image registration using tie points derived from the PIFs. The approach is used to register 1978 and 2000 Landsat images in Alaska, where lakes dominate the landscape and change significantly over time. The performance of the proposed approach is evaluated quantitatively, and a high subpixel registration accuracy of 0.66 pixel at Enhanced Thematic Mapper Plus resolution (i.e., 19 m) is achieved. A comparative evaluation indicates that the proposed approach outcompetes the conventional manual tie-point selection method and automated image registration techniques based on fast Fourier transform.
  • Keywords
    fast Fourier transforms; feature extraction; hydrological techniques; image registration; lakes; terrain mapping; AD 1978 to 2000; Alaska; Arctic; Enhanced Thematic Mapper Plus resolution; Landsat images; automated image registration method; dynamic landscapes; fast Fourier transform; feature shape criteria; hydrologic change detection; land-cover change; land-surface features; land-use change; multitemporal images; pseudoinvariant features; pseudoinvariant metrics; satellite change detection; shallow lakes; tie-point selection method; water-body feature extraction; Arctic; Change detection algorithms; Computer vision; Feature extraction; Image registration; Lakes; Manuals; Remote sensing; Satellites; Shape; Centroid; invariant moments; lake dynamics; land-cover/land-use change; multitemporal image analysis; precise registration; pseudoinvariant feature (PIF);
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2008.2000636
  • Filename
    4686033