Journal of the Japan society of photogrammetry and remote sensing
Online ISSN : 1883-9061
Print ISSN : 0285-5844
ISSN-L : 0285-5844
Volume 57, Issue 6
Displaying 1-15 of 15 articles from this issue
Preface
Original Papers
  • Takashi MIURA, Masao MORIYAMA
    2018 Volume 57 Issue 6 Pages 277-288
    Published: 2018
    Released on J-STAGE: January 01, 2020
    JOURNAL FREE ACCESS

    We propose a fire radiative power (FRP) estimation algorithm which is adaptable to the Second-generation GLobal Imager (SGLI) sensor on board the GCOM-C satellite. This algorithm is based on the Stefan-Boltzmann's law to calculate FRP. In the Stefan-Boltzmann's law based FRP calculation, sub-pixel fire information is required ; fire temperature and its fractional area coverage in the observed fire pixel. In this study, a bi-spectral method is employed to retrieve sub-pixel fire information. Furthermore, “a stepwise estimation approach” is applied to estimate the sub-pixel fire information for a good FRP estimation. This approach estimates the fire area coverage at first using a regression formula which is expressed by the logistic function, and then estimates the fire temperature. The FRP calculated by our algorithm is evaluated by comparing with the MODIS fire product FRP. The correlation between our algorithm derived FRP and the MODIS FRP shows relatively high (0.70) with low bias error (0.42 [MW]).

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  • Masafumi NAKAGAWA, Koichi SASAKI, Shigeo MATSUDA, Hirohito ITO
    2018 Volume 57 Issue 6 Pages 289-297
    Published: 2018
    Released on J-STAGE: January 01, 2020
    JOURNAL FREE ACCESS

    A 3D measurement, such as a terrestrial laser scanning, is applied for an advanced infrastructure management and Building Information Modeling (BIM). Although a terrestrial laser scanning can acquire massive point cloud data for the BIM, 3D measurement using high precision LiDAR is affected by slab-vending with active loading, such as vehicle movements on a bridge. Thus, stripy noises occur in acquired point clouds. Therefore, we proposed three methodologies, such as multiple data subtraction, plane estimation with Least Median of Squares (LMeds), and noise pattern estimation, to remove the stripy noises for precise 3D bridge modeling. Our three methodologies were verified using terrestrial LiDAR data taken under a road bridge. Through our experiments, we confirmed that our algorithms can automatically cancel the vending affect of bridge in laser scanning works.

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