DocumentCode :
109224
Title :
Smart Information Reconstruction via Time-Space-Spectrum Continuum for Cloud Removal in Satellite Images
Author :
Ni-Bin Chang ; Kaixu Bai ; Chi-Farn Chen
Author_Institution :
Dept. of Civil, Environ., & Constr. Eng., Univ. of Central Florida, Orlando, FL, USA
Volume :
8
Issue :
5
fYear :
2015
fDate :
May-15
Firstpage :
1898
Lastpage :
1912
Abstract :
Cloud contamination is a big obstacle when processing satellite images retrieved from visible and infrared spectral ranges for application. Although computational techniques including interpolation and substitution have been applied to recover missing information caused by cloud contamination, these algorithms are subject to many limitations. In this paper, a novel smart information reconstruction (SMIR) method is proposed, in order to reconstruct cloud contaminated pixel values from the time-space-spectrum continuum with the aid of a machine learning tool, namely extreme learning machine (ELM). For the purpose of demonstration, the performance of SMIR is evaluated by reconstructing the missing remote sensing reflectance values derived from the Moderate Resolution Imaging Spectroradiometer (MODIS) on board the Terra satellite over Lake Nicaragua, where is a very cloudy area year round. For comparison, the traditional backpropagation neural network algorithms will also be implemented to reconstruct the missing values. Experimental results show that the ELM outperforms the BP algorithms by an enhanced machine learning capacity with simulated memory effect embedded in MODIS due to linking the complex time-space-spectrum continuum between cloud-free and cloudy pixels. The ELM-based SMIR practice presents a correlation coefficient of 0.88 with root mean squared error of 7.4E - 04sr-1 between simulated and observed reflectance values. Finding suggests that the SMIR method is effective to reconstruct all the missing information providing visually logical and quantitatively assured images for further image processing and interpretation in environmental applications.
Keywords :
clouds; geophysical image processing; image reconstruction; lakes; learning (artificial intelligence); neural nets; reflectivity; remote sensing; ELM-based SMIR practice; Lake Nicaragua; SMIR method; Terra satellite; backpropagation neural network algorithm; cloud contaminated pixel reconstruction; cloud contamination; cloud removal; cloud-free; cloudy area; cloudy pixel; computational technique; enhanced machine learning capacity; environmental application; extreme learning machine; infrared spectral range; machine learning tool; missing information recovery; missing remote sensing reflectance value; moderate resolution imaging spectroradiometer; root mean squared error; satellite image processing; smart information reconstruction; time-space-spectrum continuum; visible spectral range; Clouds; Contamination; Image reconstruction; Neural networks; Remote sensing; Satellites; Training; Artificial neural network; cloud removal; computational intelligence; extreme learning machine; machine learning; satellite images;
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2015.2400636
Filename :
7063914
Link To Document :
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