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REVIEW article

Front. Earth Sci.

Sec. Cryospheric Sciences

Volume 13 - 2025 | doi: 10.3389/feart.2025.1649808

Advances and Prospects in Reconstruction Approaches for Snow Cover Mapping using Polar-Orbiting Satellites

Provisionally accepted
Jun  ZhangJun Zhang1Xiaoyue  ZengXiaoyue Zeng2,3,4*Jun  WanJun Wan2,3,4Jinghui  LiuJinghui Liu2,3,4Zhihong  XiaZhihong Xia2,3,4
  • 1China Yangtze Power Co., Ltd., Yichang, China
  • 2Hubei Climate Center, Wuhan, China
  • 3Three Gorges National Climatological Observatory, Yichang, China
  • 4Key laboratory of Basin Heavy Rainfall, CMA, Wuhan, China

The final, formatted version of the article will be published soon.

Snow cover is recognized as one of the most variable land cover parameters and plays a critical role in the global energy balance, climate change, and hydrological processes. Polar-orbiting satellites serve as the primary data source for monitoring both polar and global snow cover, providing wide coverage and high spatial resolution products. However, the utility of these snow cover products is significantly limited by data gaps caused by unfavorable observation conditions, such as cloud cover. Various reconstruction approaches are required to fill these gaps, depending on the snow cover product types (binary snow cover (BSC), normalized difference snow index (NDSI), or fractional snow cover (FSC)), snow characteristics, and the availability of auxiliary datasets. This paper categorizes current reconstruction approaches into eight types: temporal filters, spatial filters, multisensor fusion, and the hidden Markov random field (HMRF) model for BSC mapping, as well as temporal and spatial interpolation methods, spatiotemporal reconstruction algorithms, machine learning-based reconstruction techniques, and data assimilation methods for NDSI or FSC mapping. The paper provides a comprehensive review of the principles, advantages, and limitations of these approaches and offers recommendations for their appropriate application. The paper highlights that future improvements in snow cover reconstruction can be achieved through three key approaches. First, enhancing snow cover recognition algorithms will increase the accuracy of the original snow cover products, providing more reliable prior information for reconstruction. Second, carefully considering spatiotemporal environmental factors, such as terrain, temperature, precipitation, solar radiation, and forest cover, along with the development of corresponding multisource data processing and fusion techniques will be essential. Third, further explorations of the synergy between machine learning and data assimilation could leverage their strengths in multisource data processing scenarios, offering novel insights for conducting snow monitoring and forecasting in complex environments. This review contributes to snow cover mapping and related research by offering a comprehensive analysis and guidelines for generating gap-filled snow cover products across a variety of spatiotemporal scales.

Keywords: snow cover reconstruction1, remote sensing2, spatiotemporal methods3, machinelearning4, data assimilation5

Received: 19 Jun 2025; Accepted: 22 Aug 2025.

Copyright: © 2025 Zhang, Zeng, Wan, Liu and Xia. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

* Correspondence: Xiaoyue Zeng, Hubei Climate Center, Wuhan, China

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