Selected Publications

You can find all my articles on Google Scholar.
This page only shows my first-/corresponding-authored articles. You can find all my articles on Google Scholar.

Journal Articles


A shift from human-directed to wild-undirected land disturbances in the US

Published in Nature Geoscience, 2025

This paper produces the first-ever 30m US land disturbance dataset, and documents land disturbance regime shift 1988-2022.

Recommended citation: Qiu S., Zhu Z., Yang X., Woodcock C., Fahey R., Stehman S., Zhang Y., Cullerton M., Grinstead A., Hong F., Song K., Suh J., Li T., Ren W., Nemani R. (2025). "A shift from human-directed to wild-undirected land disturbances in the US." Nature Geoscience. in Press.

Physics-informed machine learning for cloud detection

Published in Remote Sensing of Environment, 2025

This paper introduces a novel Physics-Informed Machine Learning (PIML) framework for better cloud detection for Landsat and Sentinel-2 imagery.

Recommended citation: Shi Qiu, Zhe Zhu, Xiucheng Yang, Junchang Ju, Qiang Zhou, and Christopher S.R. Neigh (2025). "Physics-informed machine learning for cloud detection." Remote Sensing of Environment. in Revise.

Can Landsat 7 preserve its science capability with a drifting orbit?

Published in Science of Remote Sensing, 2021

This paper is the first to report the orbital drift of the Landsat 7 satellite and its impact on reflectance. The findings summarized in this study currently serve as foundational information about Landsat 7, as featured in Google Earth Engine.

Recommended citation: Shi Qiu, Zhe Zhu, Rong Shang, and Christopher J Crawford (2021). "Can Landsat 7 preserve its science capability with a drifting orbit?." Science of Remote Sensing. 4.
Download Paper

Cirrus clouds that adversely affect Landsat 8 images: What are they and how to detect them?

Published in Remote Sensing of Environment, 2020

This paper not only introduces an algorithm called Cmask (Cirrus cloud mask) for cirrus cloud detection in Landsat 8 imagery using time series of Cirrus Band, but also quantifies the effect of increasing Cirrus Band TOA reflectance on the surface reflectance of spectral bands.

Recommended citation: Shi Qiu, Zhe Zhu, and Curtis E Woodcock (2020). "Cirrus clouds that adversely affect Landsat 8 images: What are they and how to detect them?." Remote Sensing of Environment. 111884.
Download Paper

Fmask 4.0: Improved cloud and cloud shadow detection in Landsats 4–8 and Sentinel-2 imagery

Published in Remote Sensing of Environment, 2019

This paper introduces the Fmask 4 algorithm, which is currently used to generate the quality assessment band for NASA’s Harmonized Landsat and Sentinel-2 (HLS) data (see this paper for details).

Recommended citation: Shi Qiu, Zhe Zhu, and Binbin He (2019). "Fmask 4.0: Improved cloud and cloud shadow detection in Landsats 4–8 and Sentinel-2 imagery." Remote Sensing of Environment. 111205.
Download Paper

Improving Fmask cloud and cloud shadow detection in mountainous area for Landsats 4–8 images

Published in Remote Sensing of Environment, 2019

This paper introduces the Mountainous Fmask (MFmask) algorithm, a specialized version designed for mountainous areas that integrates DEM data and enhances shadow matching in the original Fmask algorithm. These improvements have been incorporated into the latest versions of Fmask.

Recommended citation: Shi Qiu, Binbin He, Zhe Zhu, Zhanmang Liao, and Xingwen Quan (2017). "Improving Fmask cloud and cloud shadow detection in mountainous area for Landsats 4–8 images." Remote Sensing of Environment. 199: 107-119.
Download Paper

Making Landsat time series consistent: Evaluating and improving Landsat analysis ready data

Published in Remote Sensing, 2018

This paper examines the impacts of data resampling, cloud and cloud shadow detection, Bidirectional Reflectance Distribution Function (BRDF) correction, and topographic correction on the temporal consistency of the Landsat Time Series (LTS), by comparing Landsat Collection 1 ARD with standard Path/Row scenes.

Recommended citation: Shi Qiu, Yukun Lin, Rong Shang, Junxue Zhang, Lei Ma, and Zhe Zhu (2019). "Making Landsat time series consistent: Evaluating and improving Landsat analysis ready data." Remote Sensing. 11(1).
Download Paper