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Kwanele Phinzi
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Year
The assessment of water-borne erosion at catchment level using GIS-based RUSLE and remote sensing: A review
K Phinzi, NS Ngetar
International Soil and Water Conservation Research 7 (1), 27-46, 2019
2052019
Machine learning for gully feature extraction based on a pan-sharpened multispectral image: Multiclass vs. Binary approach
K Phinzi, D Abriha, L Bertalan, I Holb, S Szabó
ISPRS International Journal of Geo-Information 9 (4), 252, 2020
452020
Mapping soil erosion in a quaternary catchment in Eastern Cape using geographic information system and remote sensing
K Phinzi, NS Ngetar
South African Journal of Geomatics 6 (1), 11-29, 2017
392017
Soil erosion risk assessment in the Umzintlava catchment (T32E), Eastern Cape, South Africa, using RUSLE and random forest algorithm
K Phinzi, NS Ngetar, O Ebhuoma
South African Geographical Journal 103 (2), 139-162, 2020
382020
Land use/land cover dynamics and soil erosion in the Umzintlava catchment (T32E), Eastern Cape, South Africa
K Phinzi, NS Ngetar
Transactions of the Royal Society of South Africa 74 (3), 223-237, 2019
222019
Classification efficacy using k-fold cross-validation and bootstrapping resampling techniques on the example of mapping complex gully systems
K Phinzi, D Abriha, S Szabó
Remote Sensing 13 (15), 2980, 2021
212021
Mapping permanent gullies in an agricultural area using satellite images: efficacy of machine learning algorithms
K Phinzi, I Holb, S Szabó
Agronomy 11 (2), 333, 2021
192021
The assessment of water-borne erosion at catchment level using GIS-based RUSLE and remote sensing: A review. International Soil and Water Conservation Research, 7 (1), 27–46
K Phinzi, NS Ngetar
ISSN, 2019
152019
Climate change and the response of streamflow of watersheds under the high emission scenario in Lake Tana sub-basin, upper Blue Nile basin, Ethiopia
GG Chakilu, S Sándor, T Zoltán, K Phinzi
Journal of Hydrology: Regional Studies 42, 101175, 2022
132022
Soil erosion vulnerability mapping in selected rural communities of uThukela catchment, South Africa, using the analytic hierarchy process
O Ebhuoma, M Gebreslasie, NS Ngetar, K Phinzi, S Bhattacharjee
Earth Systems and Environment 6 (4), 851-864, 2022
82022
Urban vegetation classification with high-resolution PlanetScope and SkySat multispectral imagery
L Szabó, D Abriha, K Phinzi, S Szabó
Acta Geographica Debrecina Landscape & Environment series 15 (1), 66-75, 2021
62021
Comparison of Rusle and Supervised Classification Algorithms for Identifying Erosion-Prone Areas in a Mountainous Rural Landscape.
K Phinzi, NS Ngetar, O Ebhuoma, S Szabo
Earth Environ. Sci 15 (2), 405-413, 2020
62020
Spatio-temporal appraisal of water-borne erosion using optical remote sensing and GIS in the Umzintlava catchment (T32E), Eastern Cape, South Africa
K Phinzi
University of KwaZulu-Natal, Westville, 2018
62018
The assessment of water-borne erosion at catchment level using GIS-based RUSLE and remote sensing: A review. Int Soil Water Conserv Res 7 (1): 27–46
K Phinzi, NS Ngetar
52019
Understanding the role of training sample size in the uncertainty of high-resolution LULC mapping using random forest
K Phinzi, NS Ngetar, QB Pham, GG Chakilu, S Szabó
Earth Science Informatics 16 (4), 3667-3677, 2023
42023
Monitoring Changing Land Use-Land Cover Change to Reflect the Impact of Urbanisation on Environmental Assets in Durban, South Africa
B Mazeka, K Phinzi, C Sutherland
Sustainable Urban Futures in Africa, 132-158, 2021
42021
Predictive machine learning for gully susceptibility modeling with geo-environmental covariates: main drivers, model performance, and computational efficiency
K Phinzi, S Szabó
Natural Hazards, 1-34, 2024
2024
Urbanization in Algeria: Toward a More Balanced and Sustainable Urban Network?
FA Saidi, K Phinzi, E Molnár
Social Sciences 12 (3), 174, 2023
2023
Supervised machine learning for gully mapping and modeling using low-cost, high-resolution sensors and open-source geospatial data in a semi-arid environment
K Phinzi
University of Debrecen, 2023
2023
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Articles 1–19