12 January 2017 Cloud masking and removal in remote sensing image time series
Author Affiliations +
J. of Applied Remote Sensing, 11(1), 015005 (2017). doi:10.1117/1.JRS.11.015005
Automatic cloud masking of Earth observation images is one of the first required steps in optical remote sensing data processing since the operational use and product generation from satellite image time series might be hampered by undetected clouds. The high temporal revisit of current and forthcoming missions and the scarcity of labeled data force us to cast cloud screening as an unsupervised change detection problem in the temporal domain. We introduce a cloud screening method based on detecting abrupt changes along the time dimension. The main assumption is that image time series follow smooth variations over land (background) and abrupt changes will be mainly due to the presence of clouds. The method estimates the background surface changes using the information in the time series. In particular, we propose linear and nonlinear least squares regression algorithms that minimize both the prediction and the estimation error simultaneously. Then, significant differences in the image of interest with respect to the estimated background are identified as clouds. The use of kernel methods allows the generalization of the algorithm to account for higher-order (nonlinear) feature relations. After the proposed cloud masking and cloud removal, cloud-free time series at high spatial resolution can be used to obtain a better monitoring of land cover dynamics and to generate more elaborated products. The method is tested in a dataset with 5-day revisit time series from SPOT-4 at high resolution and with Landsat-8 time series. Experimental results show that the proposed method yields more accurate cloud masks when confronted with state-of-the-art approaches typically used in operational settings. In addition, the algorithm has been implemented in the Google Earth Engine platform, which allows us to access the full Landsat-8 catalog and work in a parallel distributed platform to extend its applicability to a global planetary scale.
© 2017 Society of Photo-Optical Instrumentation Engineers (SPIE)
Luis Gómez-Chova, Julia Amorós-López, Gonzalo Mateo-García, Jordi Muñoz-Marí, Gustau Camps-Valls, "Cloud masking and removal in remote sensing image time series," Journal of Applied Remote Sensing 11(1), 015005 (12 January 2017). http://dx.doi.org/10.1117/1.JRS.11.015005 Submission: Received 27 October 2016; Accepted 16 December 2016
Submission: Received 27 October 2016; Accepted 16 December 2016


Earth observing sensors


Remote sensing

Error analysis

Image processing


Back to Top