Remote Sensing (Sep 2024)

A Multi-Task Convolutional Neural Network Relative Radiometric Calibration Based on Temporal Information

  • Lei Tang,
  • Xiangang Zhao,
  • Xiuqing Hu,
  • Chuyao Luo,
  • Manjun Lin

DOI
https://doi.org/10.3390/rs16173346
Journal volume & issue
Vol. 16, no. 17
p. 3346

Abstract

Read online

Due to the continuous degradation of onboard satellite instruments over time, satellite images undergo degradation, necessitating calibration for tasks reliant on satellite data. The previous relative radiometric calibration methods are mainly categorized into traditional methods and deep learning methods. The traditional methods involve complex computations for each calibration, while deep-learning-based approaches tend to oversimplify the calibration process, utilizing generic computer vision models without tailored structures for calibration tasks. In this paper, we address the unique challenges of calibration by introducing a novel approach: a multi-task convolutional neural network calibration model leveraging temporal information. This pioneering method is the first to integrate temporal dynamics into the architecture of neural network calibration models. Extensive experiments conducted on the FY3A/B/C VIRR datasets showcase the superior performance of our approach compared to the existing state-of-the-art traditional and deep learning methods. Furthermore, tests with various backbones confirm the broad applicability of our framework across different convolutional neural networks.

Keywords