2021
DOI: 10.1109/jstars.2021.3100923
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Mapping Wetland Plant Communities Using Unmanned Aerial Vehicle Hyperspectral Imagery by Comparing Object/Pixel-Based Classifications Combining Multiple Machine-Learning Algorithms

Abstract: Understanding the spatial patterns of plant communities is important for sustainable wetland ecosystem management and biodiversity conservation. With the rapid development of unmanned aerial vehicle (UAV) technology, UAV-borne hyperspectral data with high spatial resolution have become ideal for accurate classification of wetland plant communities. In this study, four dominant plant communities (Phragmites australis, Typha orientalis, Suaeda glauca, and Scirpus triqueter) and two unvegetated cover types (water… Show more

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Cited by 44 publications
(22 citation statements)
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“…The short‐wave infrared region (SWIR) has been found to be important for predicting wetlands (Mcpartland et al., 2019; Meingast et al., 2014). Various topographical features such as topographical wetness index (TWI) have been found to be important for predicting wetlands, but only for specific spatial resolutions (Lidberg et al., 2020; Rasanen et al., 2014) Thus, both high spatial and spectral resolution is necessary to map wetland plant communities (Du et al., 2021). Along the ridge‐snowbed gradient, snowbed had the lowest accuracy.…”
Section: Discussionmentioning
confidence: 99%
“…The short‐wave infrared region (SWIR) has been found to be important for predicting wetlands (Mcpartland et al., 2019; Meingast et al., 2014). Various topographical features such as topographical wetness index (TWI) have been found to be important for predicting wetlands, but only for specific spatial resolutions (Lidberg et al., 2020; Rasanen et al., 2014) Thus, both high spatial and spectral resolution is necessary to map wetland plant communities (Du et al., 2021). Along the ridge‐snowbed gradient, snowbed had the lowest accuracy.…”
Section: Discussionmentioning
confidence: 99%
“…Based on Landsat 8 images and RF classifier, Sharma et al [98] Some studies using hyperspectral data covered only the visible spectrum (VIS) and the near-infrared range (NIR), excluding the short-wave infrared (SWIR) range, providing lower results. The studies achieved 69-73% OA (in a spectrum range of 450−950 nm) for six wetland plant communities [104] and 71% OA (in a spectrum range of 400-1000 nm) for 19 classes of herbaceous vegetation [97]. The higher results we obtained (OA > 83%) may have been because we used the whole range of the spectrum (416-2510 nm) instead of only a part of it.…”
Section: Discussionmentioning
confidence: 77%
“…Grey-level Co-occurrence Matrix (GLCM) was the most commonly used method to extract texture information from images [25], and it was proved useful in aquaculture area classification [10], [14]. In this study, we first used principal components analysis (PCA) [26] to generate the first few principal component layers which indicated over 99% of the information of the input Sentinel-2 images.…”
Section: Ndvi = (Nir -R) / (Nir + R)mentioning
confidence: 99%