Building consistent time series night-time light data from average DMSP/OLS images for indicating human activities in a large-scale oceanic area

•Random Forest algorithm and a stepwise intercalibration approach were combined.•Multi-filter and bathymetric images were composited to improve intercalibration.•Noise impact on the intercalibration was greatly eliminated.•Consistent time series night-time light data specialized for large-scale ocea...

Full description

Saved in:
Bibliographic Details
Published inInternational journal of applied earth observation and geoinformation Vol. 114; p. 103023
Main Authors Huang, Rongyong, Wu, Wenqian, Yu, Kefu
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.11.2022
Elsevier
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:•Random Forest algorithm and a stepwise intercalibration approach were combined.•Multi-filter and bathymetric images were composited to improve intercalibration.•Noise impact on the intercalibration was greatly eliminated.•Consistent time series night-time light data specialized for large-scale oceanic area was build.•Total light index was implied as an effective indicator of ocean fishery activities. Human activities in the ocean have never been chronically and continuously investigated on a large scale. Night-time light (NTL) images collected by the Defense Meteorological Satellite Program/Operational Linescan System (DMSP/OLS) have been used as a proxy for monitoring the distribution and intensity of some human activities in the ocean from 1992 to 2013. However, systematic radiometric biases exist among the average visible-light DMSP/OLS NTL images (DMSPavg) derived from different satellites. Moreover, the high randomness of fishing vessel locations and the large amount of noise impede the intercalibration of DMSPavg. To address these issues, this study has developed a method for generating a series of consistent NTL images from 1992 to 2013 for a large-scale oceanic area. A composite image was first constructed by combining the original DMSPavg, median, and standard deviation filter images derived from the DMSPavg, and a bathymetry image. Thereafter, Random Forest (RF) algorithm was employed to classify the composite image into effective and noisy pixels. Finally, a stepwise intercalibration method was adopted to reduce the systematic radiometric biases in the denoised images. The experimental results showed that RF had an overall accuracy of 96% and a Kappa coefficient of 0.775. Furthermore, the intercalibration was shown to significantly reduce the systematic radiometric biases owing to the noises being effectively discarded by the RF. Specifically, the Sum Normalized Different Index (SNDI) of the images intercalibrated by the proposed method can reach 0.61, which is 68.2% less than that of the original DMSPavg. In addition, the correlation coefficients between the intercalibrated DMSPavg and fishery catches in the exclusive economic zones (EEZs) of Japan and Malaysia can reach 0.949 and 0.901, respectively, which are higher than other values, such as the one intercalibrated using the Pseudo-Invariant Features (PIFs) method. In summary, the proposed method has been proven to be effective and feasible for generating consistent time-series NTL data for a large-scale oceanic area, and the derived Total Light Index (TLI) is an effective indicator of ocean fishery activities for ocean ecosystem research and related applications.
ISSN:1569-8432
1872-826X
DOI:10.1016/j.jag.2022.103023