2022
DOI: 10.3390/app12147125
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Countrywide Mapping of Plant Ecological Communities with 101 Legends including Land Cover Types for the First Time at 10 m Resolution through Convolutional Learning of Satellite Images

Abstract: This paper presents next-generation mapping of plant ecological communities including land cover and agricultural types at 10 m spatial resolution countrywide. This research introduces modelling and mapping of land cover and ecological communities separately in small regions-of-interest (prefecture level), and later integrating the outputs into a large scale (country level) for dealing with regional distribution characteristics of plant ecological communities effectively. The Sentinel-2 satellite images were p… Show more

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Cited by 4 publications
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“…In recent years, research on the inversion of soil moisture and other related indicators based on machine learning algorithms has drawn significant attention [14,15]. Remote sensing methods provide high-resolution spectral data, offering a wealth of information for the inversion of soil moisture content [16,17]. Kingsley John et al successfully estimated the variability in soil organic carbon in alluvial soils using machine learning algorithms in conjunction with environmental variables and soil nutrient indicators, achieving an optimal R 2 value of 0.68 [18].…”
Section: Introductionmentioning
confidence: 99%
“…In recent years, research on the inversion of soil moisture and other related indicators based on machine learning algorithms has drawn significant attention [14,15]. Remote sensing methods provide high-resolution spectral data, offering a wealth of information for the inversion of soil moisture content [16,17]. Kingsley John et al successfully estimated the variability in soil organic carbon in alluvial soils using machine learning algorithms in conjunction with environmental variables and soil nutrient indicators, achieving an optimal R 2 value of 0.68 [18].…”
Section: Introductionmentioning
confidence: 99%
“…However, this method has drawbacks such as high cost, long time consumption, and difficulty in obtaining large-scale data [4]. In recent years, the rapid development of remote sensing technology has provided a new avenue for the accurate and rapid identification of crop species [5]. Nevertheless, traditional satellite remote sensing faces challenges, including low spatial and temporal resolutions, vulnerability to cloud cover, mixed pixel issues, and limited spectral discrimination, all of which can compromise the accuracy of crop extraction [6,7].…”
Section: Introductionmentioning
confidence: 99%