Remote Sensing Applications for Land-Use and Land-Cover Change Research in South African Landscapes: A Review
Abstract
1. Introduction
2. Materials and Methods
2.1. Case Study: South Africa
2.2. Overview of Historical LULC Changes in South Africa
2.3. Selection of Studies
2.4. Data Analysis Methods
3. Results
3.1. Historical Research Trends
3.2. LULC Classification Algorithms and Software
3.3. Geographical Distribution of LULC Studies
3.4. Classification Framework for Remote Sensing in South Africa
4. Discussion
4.1. Key Trends and Challenges in the Application of Remote Sensing for LULC Changes
4.2. Limitations and Future Research
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| LULC Class | Years/Articles | Total Gains (%) | Total Losses (%) | ||||
|---|---|---|---|---|---|---|---|
| 2001–2005 | 2006–2010 | 2011–2015 | 2016–2020 | 2021–2024 | |||
| Built-up area | G | G | G | G | G | 93.1 | 6.9 |
| Waterbody | L | L | G | L | L | 37.8 | 62.1 |
| Grassland | L | L | L | L | L | 23.4 | 76.5 |
| Cultivated land | G | G | G | G | G | 73.5 | 26.4 |
| Forest land | G | G | G | L | C | 50.0 | 50.0 |
| Wetland | L | L | L | L | L | 15.4 | 84.6 |
| Shrubland | L | L | G | L | L | 36.8 | 63.6 |
| Mines & quarries | C | G | C | G | G | 62.5 | 37.5 |
| Barren land | G | G | G | G | G | 71.8 | 28.2 |
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Nxumalo, N.; Nzimande, N.P.; Xulu, S. Remote Sensing Applications for Land-Use and Land-Cover Change Research in South African Landscapes: A Review. Earth 2026, 7, 54. https://doi.org/10.3390/earth7020054
Nxumalo N, Nzimande NP, Xulu S. Remote Sensing Applications for Land-Use and Land-Cover Change Research in South African Landscapes: A Review. Earth. 2026; 7(2):54. https://doi.org/10.3390/earth7020054
Chicago/Turabian StyleNxumalo, Nzuzo, Ntombifuthi Precious Nzimande, and Sifiso Xulu. 2026. "Remote Sensing Applications for Land-Use and Land-Cover Change Research in South African Landscapes: A Review" Earth 7, no. 2: 54. https://doi.org/10.3390/earth7020054
APA StyleNxumalo, N., Nzimande, N. P., & Xulu, S. (2026). Remote Sensing Applications for Land-Use and Land-Cover Change Research in South African Landscapes: A Review. Earth, 7(2), 54. https://doi.org/10.3390/earth7020054

