Now showing 1 - 3 of 3
  • Publication
    Restricted
    Comparing statistical and neural network methods applied to very high resolution satellite images showing changes in man-made structures at Rocky Flats
    (2008-06) ; ; ; ; ;
    Chini, M.; Istituto Nazionale di Geofisica e Vulcanologia, Sezione CNT, Roma, Italia
    ;
    Pacifici, F.; University of Tor Vergata
    ;
    Emery, W.; University of Colorado
    ;
    Pierdicca, N.; Sapienza University of Rome
    ;
    Del Frate, F.; University of Tor Vergata
    ;
    ;
    ; ; ;
    Parametric and nonparametric approaches to evaluate land-cover change detection using very high resolution (VHR) satellite imagery are applied to the analysis of the demolition of the Rocky Flats nuclear weapons facility located near Denver, CO. Both maximum-likelihood and neural network classifiers are used to validate a new parallel architecture which improves the accuracy when applied to VHR satellite imagery for the study of land-cover change between sequential satellite acquisitions. An enhancement of about 14% was found between the single-step classification and the new parallel architecture, confirming the advantage and the robust improvement obtained with this architecture regardless of the classification algorithm used. In this paper, we demonstrate and document the demolition and removal of hundreds of buildings taken down to bare soil between 2003 and 2005 at the Rocky Flats site.
      187  29
  • Publication
    Restricted
    AUTOMATIC DAMAGE DETECTION USING PULSE-COUPLED NEURAL NETWORKS FOR THE 2009 ITALIAN EARTHQUAKE
    (2010-07) ; ; ; ; ;
    Pacifici, Fabio; Digital Globe, Research and Development, Longmotn, CO, USA
    ;
    Chini, Marco; Istituto Nazionale di Geofisica e Vulcanologia, Sezione CNT, Roma, Italia
    ;
    Bignami, Christian; Istituto Nazionale di Geofisica e Vulcanologia, Sezione CNT, Roma, Italia
    ;
    Stramondo, Salvatore; Istituto Nazionale di Geofisica e Vulcanologia, Sezione CNT, Roma, Italia
    ;
    Emery, William J.; University of Colorado, Boulder (CO), USA
    ;
    ;
    ;
    ; ;
    In this paper, we investigate the performance of pulse-coupled neural networks (PCNNs) to detect the damage caused by an earthquake. PCNN is an unsupervised model in the sense that it does not need to be trained, which makes it an operational tool during crisis events when it is crucial to produce damage maps as soon as the post-event images are available. The damage map resulting from PCNN was validated at a block scale of 120x120m using ground truth obtained by a combination of ground survey and visual inspection of the before- and after-event images. The comparison showed agreement between the change measured by PCNN on block scale and the damage occurred.
      178  23
  • Publication
    Restricted
    A neural network approach using multi-scale textural metrics from very high resolution panchromatic imagery for urban land-use classification
    (2009-06) ; ; ;
    Pacifici, F.; Tor Vergata University
    ;
    Chini, M.; Istituto Nazionale di Geofisica e Vulcanologia, Sezione CNT, Roma, Italia
    ;
    Emery, W. J.; Colorado University
    ;
    ;
    ;
    The successful launch of panchromatic WorldView-1 and the planned launch of WorldView-2 will make a major contribution towards the advancement of the commercial remote sensing industry by providing improved capabilities, more frequent revisits and greater imaging flexibility with respect to the precursor QuickBird satellite. Remote sensing data from panchromatic systems have a potential for more detailed and accurate mapping of the urban environment with details of sub-meter ground resolution, but at the same time, they present additional complexities for information mining. In this study, very high-resolution panchromatic images from QuickBird and WorldView-1 have been used to accurately classify the land-use of four different urban environments: Las Vegas (U.S.A.), Rome (Italy), Washington D.C. (U.S.A.) and San Francisco (U.S.A.). The proposed method is based on the analysis of firstand second-order multi-scale textural features extracted from panchromatic data. For this purpose, textural parameters have been systematically investigated by computing the features over five different window sizes, three different directions and two different cell shifts for a total of 191 input features. Neural Network Pruning and saliency measurements made it possible to determine the most important textural features for sub-metric spatial resolution imagery of urban scenes. The results show that with a multi-scale approach it is possible to discriminate different asphalt surfaces, such as roads, highways and parking lots due to the different textural information content. This approach also makes it possible to differentiate building architectures, sizes and heights, such as residential houses, apartment blocks and towers with classification accuracies above 0.90 in terms of Kappa coefficient computed over more than a million independent validation pixels.
      118  20