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Unpaired Cross-Domain Calibration of DMSP to VIIRS Nighttime Light Data Based on CUT Network

arXiv cs.CV / 3/18/2026

💬 OpinionModels & Research

Key Points

  • The paper proposes cross-sensor calibration of DMSP-OLS to VIIRS-like data using a Contrastive Unpaired Translation (CUT) network with multilayer patch-wise contrastive learning to maximize mutual information across corresponding patches while preserving content.
  • It trains on 2012-2013 overlapping data and generates VIIRS-style data from 1992-2013 DMSP imagery to extend nighttime light time series.
  • Validation shows the generated VIIRS-like data achieves high consistency with real VIIRS observations and socioeconomic indicators, with R-squared > 0.87.
  • The approach mitigates cross-sensor data fusion issues and defects in DMSP, offering a reliable tool for long-term nighttime light analyses.

Abstract

Defense Meteorological Satellite Program (DMSP-OLS) and Suomi National Polar-orbiting Partnership (SNPP-VIIRS) nighttime light (NTL) data are vital for monitoring urbanization, yet sensor incompatibilities hinder long-term analysis. This study proposes a cross-sensor calibration method using Contrastive Unpaired Translation (CUT) network to transform DMSP data into VIIRS-like format, correcting DMSP defects. The method employs multilayer patch-wise contrastive learning to maximize mutual information between corresponding patches, preserving content consistency while learning cross-domain similarity. Utilizing 2012-2013 overlapping data for training, the network processes 1992-2013 DMSP imagery to generate enhanced VIIRS-style raster data. Validation results demonstrate that generated VIIRS-like data exhibits high consistency with actual VIIRS observations (R-squared greater than 0.87) and socioeconomic indicators. This approach effectively resolves cross-sensor data fusion issues and calibrates DMSP defects, providing reliable attempt for extended NTL time-series.