Evaluating Landsat-8, Landsat-9 and Sentinel-2 imageries in land use and land cover (LULC) classification in a heterogeneous urban area

被引:20
作者
Jombo, Simbarashe [1 ,2 ]
Adelabu, Samuel [3 ]
机构
[1] Sol Plaatje Univ, Dept Phys & Earth Sci, Private Bag X5008, Kimberley, South Africa
[2] Sol Plaatje Univ, Risk & Vulnerabil Sci Ctr, Private Bag X5008, Kimberley, South Africa
[3] Univ Free State, Dept Geog, POB 339, Bloemfontein, South Africa
关键词
Land use and land cover (LULC); Random forest (RF); k-nearest neighbor (kNN); Machine learning algorithms; Variable importance; SUPPORT VECTOR MACHINES; RANDOM FOREST; ACCURACY; JOHANNESBURG; PERFORMANCE; ALGORITHMS; CHINA;
D O I
10.1007/s10708-023-10982-8
中图分类号
P9 [自然地理学]; K9 [地理];
学科分类号
0705 ; 070501 ;
摘要
Land use and land cover (LULC) mapping is important for sustainable land management and has received great attention from researchers over the years. Classifying satellite imagery within urban environments poses challenges due to the spectral similarity among various LULC features. This study aims to evaluate Landsat 9, Landsat 8 and Sentinel-2 imageries in LULC classification in a heterogeneous urban area, using the city of Johannesburg as a case study. The objectives of the study were to examine the effectiveness of Random Forest (RF) and k-Nearest Neighbor (kNN) in the classification of Landsat 9, Landsat 8 and Sentinel-2 imageries in the study area. The benefits of integrating ancillary data and using post-classification correction (PCC) to generate precise LULC maps in the study area were also assessed. The performance of the multispectral bands for the satellite imageries was evaluated. The RF classifier performed better than kNN in LULC classification with high overall accuracies of 96%, 92% and 94% for Landsat 9, Landsat 8, and Sentinel-2 imageries, respectively. The kNN classifier produced overall accuracies of 95% (Landsat 9), 91% (Landsat 8) and 90% (Sentinel-2). The integration of additional data and the application of the PCC method led to enhanced accuracies in all three satellite imageries. For Landsat 9, both the RF and kNN classifiers exhibited a 1% improvement in accuracy. Notably, all overall accuracies demonstrated enhancements, with the maximum increase reaching 2%. The NIR, Red, and SWIR bands were the most influential with values of 100%, 94%, and 85%, respectively, in the LULC classification. The results of this study provide valuable information to land managers, municipalities, and stakeholders in understanding the spatial distribution of LULC classes, data, and classification methods to use in a heterogeneous urban environment.
引用
收藏
页码:377 / 399
页数:23
相关论文
共 75 条
[1]   Land cover and land use classification performance of machine learning algorithms in a boreal landscape using Sentinel-2 data [J].
Abdi, Abdulhakim Mohamed .
GISCIENCE & REMOTE SENSING, 2020, 57 (01) :1-20
[2]   Land-use/cover classification in a heterogeneous coastal landscape using RapidEye imagery: evaluating the performance of random forest and support vector machines classifiers [J].
Adam, Elhadi ;
Mutanga, Onisimo ;
Odindi, John ;
Abdel-Rahman, Elfatih M. .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2014, 35 (10) :3440-3458
[3]   Testing the reliability and stability of the internal accuracy assessment of random forest for classifying tree defoliation levels using different validation methods [J].
Adelabu, Samuel ;
Mutanga, Onisimo ;
Adam, Elhadi .
GEOCARTO INTERNATIONAL, 2015, 30 (07) :810-821
[4]   Environmental impact assessment of the current, emerging, and alternative waste management systems using life cycle assessment tools: a case study of Johannesburg, South Africa [J].
Adeleke, Oluwatobi ;
Akinlabi, Stephen A. ;
Jen, Tien-Chien ;
Dunmade, Israel .
ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2022, 29 (05) :7366-7381
[5]   Urban land-cover change analysis in Central Puget Sound [J].
Alberti, M ;
Weeks, R ;
Coe, S .
PHOTOGRAMMETRIC ENGINEERING AND REMOTE SENSING, 2004, 70 (09) :1043-1052
[6]   Mapping urban forest structure and function using hyperspectral imagery and lidar data [J].
Alonzo, Michael ;
McFadden, Joseph P. ;
Nowak, David J. ;
Roberts, Dar A. .
URBAN FORESTRY & URBAN GREENING, 2016, 17 :135-147
[7]  
[Anonymous], 2009, CLIMATE CHANGE ADAPT
[8]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[9]   Bagging predictors [J].
Breiman, L .
MACHINE LEARNING, 1996, 24 (02) :123-140
[10]   Locally adaptive k parameter selection for nearest neighbor classifier: one nearest cluster [J].
Bulut, Faruk ;
Amasyali, Mehmet Fatih .
PATTERN ANALYSIS AND APPLICATIONS, 2017, 20 (02) :415-425