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PERFORMANCE ASSESSMENT OF LANDSAT 8 AND SENTINEL-2 SATELLITE IMAGES FOR THE PRODUCTION OF TIME SERIES LAND USE/LAND COVER (LULC) MAPS

Year 2023, , 1 - 15, 30.06.2023
https://doi.org/10.59313/jsr-a.1213548

Abstract

Land use/Land cover (LULC) maps are essential tools used in various disciplines, including geosciences, urban and regional planning, climate, and agriculture. LULC maps provide a visual representation of the Earth's surface, depicting the different types of land use and land cover in a given area. Land use refers to the human activities that take place on the land, such as agriculture, urban development, and mining, while land cover refers to the physical characteristics of the land, such as forests, grasslands, and wetlands. Researchers can gain insights into environmental trends and patterns, such as deforestation, urbanization, and climate change by analysing changes in LULC over time. While Landsat 8 images have been used to create LULC maps for years, the high-resolution images provided by Sentinel-2 since 2017 have allowed for the creation of highly detailed LULC maps. However, it is still necessary to use Landsat 8 images to produce LULC maps for time-series analyses and future predictions. Unsupervised classification is a method used to create LULC maps using Landsat 8 images, but this study found that the resulting maps differed from those created using Sentinel-2 images, with up to a two-fold difference in the classification of classes such as "Bare Ground," "Built Area," "Crops," and "Trees". Especially when using Landsat data, it is suggested that it would be useful to make evaluations for wider areas/regions as the resolution of Landsat 8 satellite images is limited to 30 meters.

Thanks

The authors express their gratitude to the Kütahya Dumlupınar University for providing licensed access to ArcGIS Pro software developed by ESRI.

References

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  • [16] Lemenkova, P., (2021), ISO Cluster classifier by ArcGIS for unsupervised classification of the Landsat TM image of Reykjavík, Bulletin of Natural Sciences Research. 11 29–37.
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  • [18] Lemenkova, P., (2021), ISO Cluster Classifier by ArcGIS for Unsupervised Classification of the Landsat TM Image of Reykjavik Iso Cluster Classifier By Arcgis For Unsupervised Classification Of The Landsat Tm Image Of Reykjavík, Bulletin of Natural Sciences Research, 11, 29–37.
  • [19] Altman, N.S., (1992), An introduction to kernel and nearest-neighbor nonparametric regression, American Statistician. 46 175–185.
  • [20] Abburu, S., Babu Golla, S., (2015), Satellite Image Classification Methods and Techniques: A Review, Int J Comput Appl. 119 20–25.
  • [21] Ahady, A.B., Kaplan, G., (2022), International Journal of Engineering and Geosciences Classification comparison of Landsat-8 and Sentinel-2 data in Google Earth Engine, study case of the city of Kabul, International Journal of Engineering and Geosciences. 7, 24–31.
  • [22] Ghayour, L., Neshat, A., Paryani, S., Shahabi, H., Shirzadi, A., Chen, W., Al-Ansari, N., Geertsema, M., Amiri, M.P., Gholamnia, M., Dou, J., Ahmad, A., (2021), Performance evaluation of sentinel-2 and landsat 8 OLI data for land cover/use classification using a comparison between machine learning algorithms, Remote Sens (Basel), 13, 1349.
Year 2023, , 1 - 15, 30.06.2023
https://doi.org/10.59313/jsr-a.1213548

Abstract

References

  • [1] Townshend, J.R.G., (1992), Improved global data for land applications. A proposal for a new high resolution data set. Report of the Land Cover Working Group of IGBP-DIS, Global Change Report (Sweden).
  • [2] Duku, E., Mattah, P.A.D., and Angnuureng D.B., (2021), Assessment of land use/land cover change and morphometric parameters in the keta lagoon complex ramsar site, ghana, Water (Switzerland). 13 2537.
  • [3] Ekumah B., Armah, F.A., Afrifa, E.K.A., Aheto, D.W., Odoi, J.O. and Afitiri,A., (2020) Assessing land use and land cover change in coastal urban wetlands of international importance in Ghana using Intensity Analysis, Wetl Ecol Manag. 28, 271-284.
  • [4] Ma, Z., Liu, Z., Zhao, Y., Zhang, L., Liu, D., Ren, T., Zhang, X., and Shaoming, Li,(2020), An unsupervised crop classification method based on principal components isometric binning, ISPRS Int J Geoinf. 9(11, 648).
  • [5] Karra, K., Kontgis, C., Statman-Weil, Z., Mazzariello, J.C., Mathis, M., Brumby, S.P., (2021), Global land use / land cover with Sentinel 2 and deep learning, in: 2021 IEEE International Geoscience and Remote Sensing Symposium IGARSS, 4704–4707.
  • [6] Zanaga, D., van de Kerchove, R., de Keersmaecker, W., Souverijns, N., Brockmann, C., Quast, R., Wevers, J., Grosu, A., Paccini, A., Vergnaud, S., Cartus, O., Santoro, M., Fritz, S., Georgieva, I., Lesiv, M., Carter, S., Herold, M., Li, L., Tsendbazar, N.E., Ramoino, F., Arino, O., (2021), ESA World Cover 10 m 2020 v100.
  • [7] Enderle, D.I.M., Weih R.C. (2005), Integrating Supervised and Unsupervised Classification Methods to Develop a More Accurate Land Cover Classification, J Ark Acad Sci. 59, 10.
  • [8] Olofsson, P., Foody, G.M., Herold, M., Stehman, S.V., Woodcock, C.E., Wulder, M.A., (2014), Good practices for estimating area and assessing accuracy of land change, Remote Sens Environ. 148, 42–57.
  • [9] Khan, A., Hansen, M.C., Potapov, P., Adusei, B., Stehman, S.V., Steininger, M.K., (2021), An operational automated mapping algorithm for in-season estimation of wheat area for Punjab, Pakistan, 42, 3833–3849.
  • [10] Pickens, A.H., Hansen, M.C., Hancher, M., Stehman, S.V., Tyukavina, A., Potapov, P., Marroquin, B., Sherani, Z., (2020), Mapping and sampling to characterize global inland water dynamics from 1999 to 2018 with full Landsat time-series, Remote Sens Environ. 243, 111792.
  • [11] Ying, Q., Hansen, M.C., Potapov, P.V., Tyukavina, A., Wang, L., Stehman, S.V., Moore, R., Hancher, M., (2021), Global bare ground gain from 2000 to 2012 using Landsat imagery, Remote Sens Environ. 194, 161–176.
  • [12] Potapov, P., Li, X., Hernandez-Serna, A., Tyukavina, A., Hansen, M.C., Kommareddy, A., Pickens, A., Turubanova, S., Tang, H., Silva, C.E., Armston, J., Dubayah, R., Blair, J.B., Hofton, M., (2021), Mapping global forest canopy height through integration of GEDI and Landsat data, Remote Sens Environ. 253, 112165.
  • [13] Hansen, M.C., Potapov, P.V., Moore, R., Hancher, M., Turubanova, S.A., Tyukavina, A., Thau, D., Stehman, S.V., Goetz, S.J., Loveland, T.R., Kommareddy, A., Egorov, A.V., Chini, L., Justice, C.O., Townshend, J.R.G., (2013), High-resolution global maps of 21st-century forest cover change, Science. 342 (6160), 850-853.
  • [14] Zengin, E., A Combined Assessment of Sea Level Rise (SLR) Effect on Antalya Gulf (Türkiye) and Future Predictions on Land Loss, (2023), Journal of the Indian Society of Remote Sensing.
  • [15] Paris, C., Bruzzone, L., Fernandez-Prieto, D., (2019), A Novel Approach to the Unsupervised Update of Land-Cover Maps by Classification of Time Series of Multispectral Images, IEEE Transactions on Geoscience and Remote Sensing. 57, 4259–4277.
  • [16] Lemenkova, P., (2021), ISO Cluster classifier by ArcGIS for unsupervised classification of the Landsat TM image of Reykjavík, Bulletin of Natural Sciences Research. 11 29–37.
  • [17] U.S. Geological Survey 2018 Landsat collections: U.S. Geological Survey Fact Sheet, (2018), 3049.
  • [18] Lemenkova, P., (2021), ISO Cluster Classifier by ArcGIS for Unsupervised Classification of the Landsat TM Image of Reykjavik Iso Cluster Classifier By Arcgis For Unsupervised Classification Of The Landsat Tm Image Of Reykjavík, Bulletin of Natural Sciences Research, 11, 29–37.
  • [19] Altman, N.S., (1992), An introduction to kernel and nearest-neighbor nonparametric regression, American Statistician. 46 175–185.
  • [20] Abburu, S., Babu Golla, S., (2015), Satellite Image Classification Methods and Techniques: A Review, Int J Comput Appl. 119 20–25.
  • [21] Ahady, A.B., Kaplan, G., (2022), International Journal of Engineering and Geosciences Classification comparison of Landsat-8 and Sentinel-2 data in Google Earth Engine, study case of the city of Kabul, International Journal of Engineering and Geosciences. 7, 24–31.
  • [22] Ghayour, L., Neshat, A., Paryani, S., Shahabi, H., Shirzadi, A., Chen, W., Al-Ansari, N., Geertsema, M., Amiri, M.P., Gholamnia, M., Dou, J., Ahmad, A., (2021), Performance evaluation of sentinel-2 and landsat 8 OLI data for land cover/use classification using a comparison between machine learning algorithms, Remote Sens (Basel), 13, 1349.
There are 22 citations in total.

Details

Primary Language English
Subjects Engineering
Journal Section Research Articles
Authors

Recep Uğur Acar 0000-0002-0420-6263

Enes Zengin 0000-0002-5740-7763

Publication Date June 30, 2023
Submission Date December 2, 2022
Published in Issue Year 2023

Cite

IEEE R. U. Acar and E. Zengin, “PERFORMANCE ASSESSMENT OF LANDSAT 8 AND SENTINEL-2 SATELLITE IMAGES FOR THE PRODUCTION OF TIME SERIES LAND USE/LAND COVER (LULC) MAPS”, JSR-A, no. 053, pp. 1–15, June 2023, doi: 10.59313/jsr-a.1213548.