Home > Research > Publications & Outputs > Spatio-temporal subpixel mapping with cloudy im...

Links

Text available via DOI:

View graph of relations

Spatio-temporal subpixel mapping with cloudy images

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

Spatio-temporal subpixel mapping with cloudy images. / Zhang, C.; Wang, Q.; Xie, H. et al.
In: Science of Remote Sensing, Vol. 6, 100068, 31.12.2022.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Zhang, C., Wang, Q., Xie, H., Ge, Y., & Atkinson, P. M. (2022). Spatio-temporal subpixel mapping with cloudy images. Science of Remote Sensing, 6, Article 100068. https://doi.org/10.1016/j.srs.2022.100068

Vancouver

Zhang C, Wang Q, Xie H, Ge Y, Atkinson PM. Spatio-temporal subpixel mapping with cloudy images. Science of Remote Sensing. 2022 Dec 31;6:100068. Epub 2022 Sept 29. doi: 10.1016/j.srs.2022.100068

Author

Zhang, C. ; Wang, Q. ; Xie, H. et al. / Spatio-temporal subpixel mapping with cloudy images. In: Science of Remote Sensing. 2022 ; Vol. 6.

Bibtex

@article{9e4c5db849924f27808c2194264c04b6,
title = "Spatio-temporal subpixel mapping with cloudy images",
abstract = "Spatio-temporal subpixel mapping (STSPM) has shown great potential for monitoring land surfaces, by generating land cover maps with both fine spatial and temporal resolutions. Selecting cloud-free fine spatial resolution images as ancillary data for STSPM can ensure that the temporal dependence term is measured for all subpixels, as in all current STSPM methods. However, such images are generally limited by cloud contamination, thereby resulting in great land cover changes between the available clear image and the desired fine spatial resolution land cover map. This research proposes a cloud-independent STSPM (C-STSPM) method to reconstruct the fine spatial resolution land cover maps by using cloudy images directly, which are assumed to have fewer land cover changes than temporally distant clear images. Cloud-independent spatio-temporal dependence was proposed in the presence of cloudy pixels. Experiments were performed under various cloud conditions involving 21 × 21 pairs of simulated cloudy images. The results demonstrate that by utilizing land cover information of clear pixels in cloudy images, more accurate prediction can be produced by C-STSPM compared to directly discarding those cloudy images, even if the number of cloud pixels increases to 95%. The advantage of C-STSPM is more evident when the clouds are distributed sparsely, which benefits from the increased number of clear pixels at the edge of the cloudy areas. Furthermore, a negative linear correlation was detected between the prediction accuracy and the ratio of overlapping cloudy pixels in the cloudy images. Moreover, the C-STSPM method helps to deal with abrupt changes occurred in the temporally distant cloud-free images by utilizing the temporally adjacent cloudy images with gradual land cover changes. Overall, the C-STSPM method provides a completely new solution to make fuller use of the widely existing cloudy images in multi-scale time-series images.",
keywords = "Land cover mapping, Downscaling, Subpixel mapping (SPM), Cloud contamination, Super-resolution mapping, Spatio-temporal dependence",
author = "C. Zhang and Q. Wang and H. Xie and Y. Ge and P.M. Atkinson",
year = "2022",
month = dec,
day = "31",
doi = "10.1016/j.srs.2022.100068",
language = "English",
volume = "6",
journal = "Science of Remote Sensing",
issn = "2666-0172",
publisher = "Elsevier BV",

}

RIS

TY - JOUR

T1 - Spatio-temporal subpixel mapping with cloudy images

AU - Zhang, C.

AU - Wang, Q.

AU - Xie, H.

AU - Ge, Y.

AU - Atkinson, P.M.

PY - 2022/12/31

Y1 - 2022/12/31

N2 - Spatio-temporal subpixel mapping (STSPM) has shown great potential for monitoring land surfaces, by generating land cover maps with both fine spatial and temporal resolutions. Selecting cloud-free fine spatial resolution images as ancillary data for STSPM can ensure that the temporal dependence term is measured for all subpixels, as in all current STSPM methods. However, such images are generally limited by cloud contamination, thereby resulting in great land cover changes between the available clear image and the desired fine spatial resolution land cover map. This research proposes a cloud-independent STSPM (C-STSPM) method to reconstruct the fine spatial resolution land cover maps by using cloudy images directly, which are assumed to have fewer land cover changes than temporally distant clear images. Cloud-independent spatio-temporal dependence was proposed in the presence of cloudy pixels. Experiments were performed under various cloud conditions involving 21 × 21 pairs of simulated cloudy images. The results demonstrate that by utilizing land cover information of clear pixels in cloudy images, more accurate prediction can be produced by C-STSPM compared to directly discarding those cloudy images, even if the number of cloud pixels increases to 95%. The advantage of C-STSPM is more evident when the clouds are distributed sparsely, which benefits from the increased number of clear pixels at the edge of the cloudy areas. Furthermore, a negative linear correlation was detected between the prediction accuracy and the ratio of overlapping cloudy pixels in the cloudy images. Moreover, the C-STSPM method helps to deal with abrupt changes occurred in the temporally distant cloud-free images by utilizing the temporally adjacent cloudy images with gradual land cover changes. Overall, the C-STSPM method provides a completely new solution to make fuller use of the widely existing cloudy images in multi-scale time-series images.

AB - Spatio-temporal subpixel mapping (STSPM) has shown great potential for monitoring land surfaces, by generating land cover maps with both fine spatial and temporal resolutions. Selecting cloud-free fine spatial resolution images as ancillary data for STSPM can ensure that the temporal dependence term is measured for all subpixels, as in all current STSPM methods. However, such images are generally limited by cloud contamination, thereby resulting in great land cover changes between the available clear image and the desired fine spatial resolution land cover map. This research proposes a cloud-independent STSPM (C-STSPM) method to reconstruct the fine spatial resolution land cover maps by using cloudy images directly, which are assumed to have fewer land cover changes than temporally distant clear images. Cloud-independent spatio-temporal dependence was proposed in the presence of cloudy pixels. Experiments were performed under various cloud conditions involving 21 × 21 pairs of simulated cloudy images. The results demonstrate that by utilizing land cover information of clear pixels in cloudy images, more accurate prediction can be produced by C-STSPM compared to directly discarding those cloudy images, even if the number of cloud pixels increases to 95%. The advantage of C-STSPM is more evident when the clouds are distributed sparsely, which benefits from the increased number of clear pixels at the edge of the cloudy areas. Furthermore, a negative linear correlation was detected between the prediction accuracy and the ratio of overlapping cloudy pixels in the cloudy images. Moreover, the C-STSPM method helps to deal with abrupt changes occurred in the temporally distant cloud-free images by utilizing the temporally adjacent cloudy images with gradual land cover changes. Overall, the C-STSPM method provides a completely new solution to make fuller use of the widely existing cloudy images in multi-scale time-series images.

KW - Land cover mapping

KW - Downscaling

KW - Subpixel mapping (SPM)

KW - Cloud contamination

KW - Super-resolution mapping

KW - Spatio-temporal dependence

U2 - 10.1016/j.srs.2022.100068

DO - 10.1016/j.srs.2022.100068

M3 - Journal article

VL - 6

JO - Science of Remote Sensing

JF - Science of Remote Sensing

SN - 2666-0172

M1 - 100068

ER -