Landsat 8Bands' 1 to 7 spectral vectors plus machine learning to improve land use/cover classification using Google Earth Engine

被引:1
|
作者
Mfondoum, Alfred Homere Ngandam [1 ,2 ]
Hakdaoui, Sofia [3 ]
Batcha, Roseline [2 ]
机构
[1] Statsnmaps Consulting Firm, Dallas, TX 75201 USA
[2] Univ Yaounde, Dept Geog, Nat Resources Management Lab, Yaounde, Cameroon
[3] Mohammed V Univ Rabat, Fac Sci, Geosci Water & Environm Lab, Rabat, Morocco
关键词
Spectral vector; machine learning classifiers; Landsat8; Google Earth Engine; hilly urban areas; BUILT-UP INDEX; COVER CHANGE; URBAN AREAS; IMAGE; FEATURES; IMPACT;
D O I
10.1080/19475683.2022.2026475
中图分类号
P9 [自然地理学]; K9 [地理];
学科分类号
0705 ; 070501 ;
摘要
This paper explores a spectral vector-based methodology on Landsat 8 bands of the visible wavelengths, that is deep-blue (1) to shortwave infrared (7), to improve the urban land features classification. Using two different ratio models, based on two and three bands' combinations in the cloud environment of Google Earth Engine, the Uncertainty reducing Spectral Vector (USVr), the Onward Continuous Spectral Vector (OSVc) and the Onward Discontinuous Spectral Vector (OSVd) are proposed as new entries for the land use land cover (LULC) classification. Two different sizes of arrays are built, i.e. 42 vectors and 15 vectors corresponding to the same number of derivative bands and new pixels ' values. A decision tree is built in J.48 and applied to select the most suitable derivative bands for the analysis. Hereafter, the selected ones are stacked and submitted to five machine learning classifiers using a supervised process, namely, Classification and Regression Trees (CART), Random Forest (RF) Gradient Boosting (GBR), Support Vector Machine (SVM) and Minimum Distance (MD). This method was tested in the two cities of Bamenda and Foumban in west-Cameroon highlands, due to their good representativeness of tropical hilly urban areas' spatial heterogeneity. The results are satisfying for 4/5 classifiers, up to 87% Overall Accuracy, OA, for 0.82 kappa coefficient, KC, in Bamenda, while combining SVM/OSVd. Whereas, in Foumban, the classifiers perform up to 85%OA and 0.78 KC for the combination SVM/USVr. Only the MD classifier has always performed below 80%OA. The process has been found better than performing classifiers directly on the multispectral (MS) image, by providing more possibilities of hidden spectral indices not yet explored, as far as we know, to detect and discriminate between LULC features, plus an accurate extraction of human settlements.
引用
收藏
页码:401 / 424
页数:24
相关论文
共 50 条
  • [21] Characterizing land use/land cover change dynamics by an enhanced random forest machine learning model: a Google Earth Engine implementation
    Pande, Chaitanya Baliram
    Srivastava, Aman
    Moharir, Kanak N.
    Radwan, Neyara
    Sidek, Lariyah Mohd
    Alshehri, Fahad
    Pal, Subodh Chandra
    Tolche, Abebe Debele
    Zhran, Mohamed
    [J]. ENVIRONMENTAL SCIENCES EUROPE, 2024, 36 (01)
  • [22] Land cover changes in grassland landscapes: combining enhanced Landsat data composition, LandTrendr, and machine learning classification in google earth engine with MLP-ANN scenario forecasting
    Parracciani, Cecilia
    Gigante, Daniela
    Mutanga, Onisimo
    Bonafoni, Stefania
    Vizzari, Marco
    [J]. GISCIENCE & REMOTE SENSING, 2024, 61 (01)
  • [23] Google Earth Engine for large-scale land use and land cover mapping: an object-based classification approach using spectral, textural and topographical factors
    Shafizadeh-Moghadam, Hossein
    Khazaei, Morteza
    Alavipanah, Seyed Kazem
    Weng, Qihao
    [J]. GISCIENCE & REMOTE SENSING, 2021, 58 (06) : 914 - 928
  • [24] Impact of land use/land cover changes on evapotranspiration and model accuracy using Google Earth engine and classification and regression tree modeling
    Pande, Chaitanya B.
    Diwate, Pranaya
    Orimoloye, Israel R.
    Sidek, Lariyah Mohd
    Mishra, Arun Pratap
    Moharir, Kanak N.
    Pal, Subodh Chandra
    Alshehri, Fahad
    Tolche, Abebe Debele
    [J]. GEOMATICS NATURAL HAZARDS & RISK, 2024, 15 (01)
  • [25] Machine Learning Algorithms for Satellite Image Classification Using Google Earth Engine and Landsat Satellite Data: Morocco Case Study
    Ouchra, Hafsa
    Belangour, Abdessamad
    Erraissi, Allae
    [J]. IEEE ACCESS, 2023, 11 : 71127 - 71142
  • [26] AGTML: A novel approach to land cover classification by integrating automatic generation of training samples and machine learning algorithms on Google Earth Engine
    Cui, Yanglin
    Yang, Gaoxiang
    Zhou, Yanbing
    Zhao, Chunjiang
    Pan, Yuchun
    Sun, Qian
    Gu, Xiaohe
    [J]. ECOLOGICAL INDICATORS, 2023, 154
  • [27] Evaluating Combinations of Temporally Aggregated Sentinel-1, Sentinel-2 and Landsat 8 for Land Cover Mapping with Google Earth Engine
    Carrasco, Luis
    O'Neil, Aneurin W.
    Morton, R. Daniel
    Rowland, Clare S.
    [J]. REMOTE SENSING, 2019, 11 (03)
  • [28] Accurate classification of land use and land cover using a boundary-specific two-level learning approach augmented with auxiliary features in Google Earth Engine
    Rohini Selvaraj
    Geraldine Bessie Amali D
    [J]. Environmental Monitoring and Assessment, 2023, 195
  • [29] Accurate classification of land use and land cover using a boundary-specific two-level learning approach augmented with auxiliary features in Google Earth Engine
    Selvaraj, Rohini
    Amali, D. Geraldine Bessie
    [J]. ENVIRONMENTAL MONITORING AND ASSESSMENT, 2023, 195 (11)
  • [30] LAND USE AND LAND COVER CLASSIFICATION IN SAO PAULO, BRAZIL, USING LANDSAT-8 OLI IMAGES AND DERIVED SPECTRAL INDICES
    Da Silva, Gabriel M.
    Arai, Egidio
    Hoffmann, Tania B.
    Duarte, Valdete
    Martini, Paulo R.
    Dutra, Andeise C.
    Mataveli, Guilherme
    Cassol, Henrique L. G.
    Shimabukuro, Yosio E.
    [J]. IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 2961 - 2964