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A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia. / Crowson, Merry; Warren-Thomas, Eleanor; Hill, Jane K. et al.
In: Remote Sensing in Ecology and Conservation, Vol. 5, No. 3, 01.09.2019, p. 247-258.

Research output: Contribution to journalArticlepeer-review

HarvardHarvard

Crowson, M, Warren-Thomas, E, Hill, JK, Hariyadi, B, Agus, F, Saad, A, Hamer, KC, Hodgson, JA, Kartika, WD, Lucey, J, McClean, C, Nurida, NL, Pratiwi, E, Stringer, LC, Ward, C & Pettorelli, N 2019, 'A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia', Remote Sensing in Ecology and Conservation, vol. 5, no. 3, pp. 247-258. https://doi.org/10.1002/rse2.102

APA

Crowson, M., Warren-Thomas, E., Hill, J. K., Hariyadi, B., Agus, F., Saad, A., Hamer, K. C., Hodgson, J. A., Kartika, W. D., Lucey, J., McClean, C., Nurida, N. L., Pratiwi, E., Stringer, L. C., Ward, C., & Pettorelli, N. (2019). A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia. Remote Sensing in Ecology and Conservation, 5(3), 247-258. https://doi.org/10.1002/rse2.102

CBE

Crowson M, Warren-Thomas E, Hill JK, Hariyadi B, Agus F, Saad A, Hamer KC, Hodgson JA, Kartika WD, Lucey J, et al. 2019. A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia. Remote Sensing in Ecology and Conservation. 5(3):247-258. https://doi.org/10.1002/rse2.102

MLA

VancouverVancouver

Crowson M, Warren-Thomas E, Hill JK, Hariyadi B, Agus F, Saad A et al. A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia. Remote Sensing in Ecology and Conservation. 2019 Sept 1;5(3):247-258. Epub 2018 Dec 10. doi: 10.1002/rse2.102

Author

Crowson, Merry ; Warren-Thomas, Eleanor ; Hill, Jane K. et al. / A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia. In: Remote Sensing in Ecology and Conservation. 2019 ; Vol. 5, No. 3. pp. 247-258.

RIS

TY - JOUR

T1 - A comparison of satellite remote sensing data fusion methods to map peat swamp forest loss in Sumatra, Indonesia

AU - Crowson, Merry

AU - Warren-Thomas, Eleanor

AU - Hill, Jane K.

AU - Hariyadi, Bambang

AU - Agus, Fahmuddin

AU - Saad, Asmadi

AU - Hamer, Keith C.

AU - Hodgson, Jenny A.

AU - Kartika, Winda D.

AU - Lucey, Jennifer

AU - McClean, Colin

AU - Nurida, Neneng Laela

AU - Pratiwi, Etty

AU - Stringer, Lindsay C.

AU - Ward, Caroline

AU - Pettorelli, Nathalie

PY - 2019/9/1

Y1 - 2019/9/1

N2 - The loss of huge areas of peat swamp forest in Southeast Asia and the resulting negative environmental effects, both local and global, have led to an increasing interest in peat restoration in the region. Satellite remote sensing offers thepotential to provide up-to-date information on peat swamp forest loss across large areas, and support spatial explicit conservation and restoration planning. Fusion of optical and radar remote sensing data may be particularly valuable in this context, as most peat swamp forests are in areas with high cloud cover, which limits the use of optical data. Radar data can ‘see through’ cloud, but experience so far has shown that it doesn’t discriminate well between certain types of land cover. Various approaches to fusion exist, but there is little information on how they compare. To assess this untapped potential, we compare three different classification methods with Sentinel-1 and Sentinel-2 images to map the remnant distribution of peat swamp forest in the area surrounding Sungai Buluh Protection Forest, Sumatra, Indonesia. Results show that data fusion increases overall accuracy in one of the three methods, compared to theuse of optical data only. When data fusion was used with the pixel-based classification using the original pixel values, overall accuracy increased by a small, but statistically significant amount. Data fusion was not beneficial in the case ofobject-based classification or pixel-based classification using principal components. This indicates optical data are still the main source of information for land cover mapping in the region. Based on our findings, we provide methodological recommendations to help those involved in peatland restoration capitalize on the potential of big data.

AB - The loss of huge areas of peat swamp forest in Southeast Asia and the resulting negative environmental effects, both local and global, have led to an increasing interest in peat restoration in the region. Satellite remote sensing offers thepotential to provide up-to-date information on peat swamp forest loss across large areas, and support spatial explicit conservation and restoration planning. Fusion of optical and radar remote sensing data may be particularly valuable in this context, as most peat swamp forests are in areas with high cloud cover, which limits the use of optical data. Radar data can ‘see through’ cloud, but experience so far has shown that it doesn’t discriminate well between certain types of land cover. Various approaches to fusion exist, but there is little information on how they compare. To assess this untapped potential, we compare three different classification methods with Sentinel-1 and Sentinel-2 images to map the remnant distribution of peat swamp forest in the area surrounding Sungai Buluh Protection Forest, Sumatra, Indonesia. Results show that data fusion increases overall accuracy in one of the three methods, compared to theuse of optical data only. When data fusion was used with the pixel-based classification using the original pixel values, overall accuracy increased by a small, but statistically significant amount. Data fusion was not beneficial in the case ofobject-based classification or pixel-based classification using principal components. This indicates optical data are still the main source of information for land cover mapping in the region. Based on our findings, we provide methodological recommendations to help those involved in peatland restoration capitalize on the potential of big data.

KW - Deforestation

KW - land cover

KW - peat swamp forest

KW - restoration

KW - satellite data fusion

KW - tropical peatland

U2 - 10.1002/rse2.102

DO - 10.1002/rse2.102

M3 - Article

VL - 5

SP - 247

EP - 258

JO - Remote Sensing in Ecology and Conservation

JF - Remote Sensing in Ecology and Conservation

SN - 2056-3485

IS - 3

ER -