An Overview of the Special Issue “Remote Sensing Applications in Vegetation Classification”
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Published:2023-04-26
Issue:9
Volume:15
Page:2278
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ISSN:2072-4292
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Container-title:Remote Sensing
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language:en
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Short-container-title:Remote Sensing
Author:
Jarocińska Anna1ORCID, Marcinkowska-Ochtyra Adriana1ORCID, Ochtyra Adrian1ORCID
Affiliation:
1. Department of Geoinformatics, Cartography and Remote Sensing, Faculty of Geography and Regional Studies, University of Warsaw, 00-927 Warsaw, Poland
Abstract
One of the ideas behind vegetation monitoring is the ability to identify different vegetation units, such as species, communities, habitats, or vegetation types. Remote sensing data allow for obtaining such information remotely, which is especially valuable in areas that are difficult to explore (such as mountains or wetlands). At the same time, such techniques allow for limiting field research, which is particularly important in this context. Remote sensing has been utilized for vegetation inventories for many decades, using airborne and spaceborne platforms. Developing newer tools, algorithms and sensors is conducive to more new applications in the vegetation identification field. The Special Issue “Remote Sensing Applications in Vegetation Classification” is an overview of the applications of remote sensing data with different resolutions for the identification of vegetation at different levels of detail. In 14 research papers, the most frequent different types of crops were analysed. In three cases, the authors recognised different types of grasslands, whereas trees were the object of the studies in two papers. The most commonly used sensors were Copernicus Sentinel-1 and Sentinel-2; however, to a lesser extent, MODIS, airborne hyperspectral and multispectral data, as well as LiDAR products, were also utilised. There were articles that tested and compared different combinations of datasets, different terms of data acquisition, or different classifiers in order to achieve the highest classification accuracy. These accuracies were assessed quite satisfactorily in each publication; the overall accuracy (OA) for the best result varied from 72% to 98%. In all of the research papers, at least one of the two commonly used machine learning algorithms, random forest (RF) and support vector machines (SVM), was applied. Additionally, one paper presented software ARTMO’s machine-learning classification algorithms toolbox, which allows for the testing of 13 different classifiers. The studies published in this Special Issue can be used by the vegetation research teams and practitioners to conduct deeper analysis via the utilization of the proposed solutions.
Subject
General Earth and Planetary Sciences
Reference16 articles.
1. Feng, X., Tan, S., Dong, Y., Zhang, X., Xu, J., Zhong, L., and Yu, L. (2023). Mapping Large-Scale Bamboo Forest Based on Phenology and Morphology Features. Remote Sens., 15. 2. Zhao, H., Meng, J., Shi, T., Zhang, X., Wang, Y., Luo, X., Lin, Z., and You, X. (2022). Validating the Crop Identification Capability of the Spectral Variance at Key Stages (SVKS) Computed via an Object Self-Reference Combined Algorithm. Remote Sens., 14. 3. Ioannidou, M., Koukos, A., Sitokonstantinou, V., Papoutsis, I., and Kontoes, C. (2022). Assessing the Added Value of Sentinel-1 PolSAR Data for Crop Classification. Remote Sens., 14. 4. Alabi, T.R., Adewopo, J., Duke, O.P., and Kumar, P.L. (2022). Banana Mapping in Heterogenous Smallholder Farming Systems Using High-Resolution Remote Sensing Imagery and Machine Learning Models with Implications for Banana Bunchy Top Disease Surveillance. Remote Sens., 14. 5. Aghababaei, M., Ebrahimi, A., Naghipour, A.A., Asadi, E., Pérez-Suay, A., Morata, M., Garcia, J.L., Rivera Caicedo, J.P., and Verrelst, J. (2022). Introducing ARTMO’s Machine-Learning Classification Algorithms Toolbox: Application to Plant-Type Detection in a Semi-Steppe Iranian Landscape. Remote Sens., 14.
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