Remotely sensed imagery and machine learning for mapping of sesame crop in the Brazilian Midwest

被引:8
作者
de Azevedo, Raul Pio [1 ]
Dallacort, Rivanildo [2 ]
Boechat, Cacio Luiz [3 ]
Teodoro, Paulo Eduardo [4 ]
Teodoro, Larissa Pereira Ribeiro [4 ]
Rossi, Fernando Saragosa [4 ]
Corrcia Filho, Washington Luiz Felix [5 ]
Della-Silva, Joao Lucas [6 ]
Baio, Fabio Henrique Rojo [4 ]
Lima, Mendelson [7 ]
da Silva Jr, Carlos Antonio [6 ]
机构
[1] State Univ Mato Grosso UNEMAT, Postgrad Program Biodivers & Amazonian Agroecosyst, Alta Floresta, Mato Grosso, Brazil
[2] State Univ Mato Grosso UNEMAT, Tangara Da Serra, Mato Grosso, Brazil
[3] Fed Univ Piaui UFPI, Bom Jesus, Piaui, Brazil
[4] Fed Univ Mato Grosso Sul UFMS, Chapadao Do Sul, MS, Brazil
[5] Fed Univ Rio Grande FURG, BR-96203900 Rio Grande, RS, Brazil
[6] State Univ Mato Grosso UNEMAT, Sinop, Mato Grosso, Brazil
[7] State Univ Mato Grosso UNEMAT, Alta Floresta, Mato Grosso, Brazil
关键词
Sesame; Random forest; SVM; Classification; Monitoring; Machine learning; SUPPORT VECTOR MACHINES; CLASSIFICATION; ACCURACY; INDEX; UNCERTAINTY; SELECTION; AREA; MAP;
D O I
10.1016/j.rsase.2023.101018
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The changes in landscapes have been followed more intensely in recent decades thanks to scientific advances, both in the field of technological improvement of satellites and in remote sensing techniques. Advanced and efficient machine learning techniques have helped remote sensing professionals to determine these changes, from the simplest to the most complex landscapes, allowing the identification of the most varied land uses and occupation, as well as the estimation of the areas that these uses occupy, allowing a more dynamic management of natural resources, especially in agricultural exploitation, providing reliable information to decision makers. Thus, the objective of this work is, through machine learning techniques, to estimate the area of sesame (Sesamum indicum) cultivation in the crop season 2021/2022, in the municipality of Canarana, in the state of Mato Grosso, comparing the performance of the Random Forest and Support Vector Machine (SVM) classifiers, using images from the Landsat 8/OLI satellite. As a source of information for the supervised classification, control points in geographic coordinates were collected in the study area to identify the areas cultivated with sesame. The vegetation indices NDVI, EVI, NDBI, PVI and SAVI were used for the elaboration of thematic maps, along with the Landsat 8/OLI images. Global Accuracy and Kappa index were used as a rule of thumb in the evaluation of the thematic maps, compared by the Z test, with significance at & alpha; = 0.05. The test revealed that the Random Forest classifier showed better performance in identifying the sesame cultivated areas, with Global Accuracy of 0.95 and Kappa of 0.90, when compared to SVM, which showed 0.91 and 0.81, respectively. The use of machine learning techniques in Landsat 8/OLI images proved satisfactory in estimating areas cultivated with sesame in the municipality of Canarana-MT, demonstrating confidence in the mapping. The way Random Forest structures its training model, creating as many decision trees as necessary, ended up mitigating more classification errors , proved to be more promising when compared to SVM. As a rule, both algorithms showed potential for mapping the sesame crop.
引用
收藏
页数:12
相关论文
共 46 条
  • [1] Ali Asghar Ali Asghar, 2014, American Journal of Food and Nutrition, V4, P21
  • [2] Koppen's climate classification map for Brazil
    Alvares, Clayton Alcarde
    Stape, Jose Luiz
    Sentelhas, Paulo Cesar
    de Moraes Goncalves, Jose Leonardo
    Sparovek, Gerd
    [J]. METEOROLOGISCHE ZEITSCHRIFT, 2013, 22 (06) : 711 - 728
  • [3] [Anonymous], 2022, EarthExplorer
  • [4] Camps-Valls G, 2009, IEEE INT WORKS MACH, P216
  • [5] Weed detection in sesame fields using a YOLO model with an enhanced attention mechanism and feature fusion
    Chen, Jiqing
    Wang, Huabin
    Zhang, Hongdu
    Luo, Tian
    Wei, Depeng
    Long, Teng
    Wang, Zhikui
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2022, 202
  • [6] Conab, 2020, CALENDARIO PLANTIO C
  • [7] CONAB, 2020, COMP NAC AB AC SAFR
  • [8] Discrimination of soybean areas through images EVI/MODIS and analysis based on geo-object
    da Silva Junior, Carlos A.
    Frank, Thiago
    Rodrigues, Taissa C. S.
    [J]. REVISTA BRASILEIRA DE ENGENHARIA AGRICOLA E AMBIENTAL, 2014, 18 (01): : 44 - 53
  • [9] Vegetation Indices for Discrimination of Soybean Areas: A New Approach
    da Silva Junior, Carlos Antonio
    Nanni, Marcos Rafael
    Teodoro, Paulo Eduardo
    Capristo Silva, Guilherme Fernando
    [J]. AGRONOMY JOURNAL, 2017, 109 (04) : 1331 - 1343
  • [10] Machine learning
    Delhommelle, Jerome
    [J]. MOLECULAR SIMULATION, 2018, 44 (11) : 865 - 865