2018
DOI: 10.3390/rs10101614
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Desertification Information Extraction Based on Feature Space Combinations on the Mongolian Plateau

Abstract: The Mongolian plateau is a hotspot of global desertification because it is heavily affected by climate change, and has a large diversity of vegetation cover across various regions and seasons. Within this arid region, it is difficult to distinguish desertified land from other land cover types using low-quality vegetation information. To address this, we analyze both the effects and the applicability of different feature space models for the extraction of desertification information with the goal of finding app… Show more

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Cited by 62 publications
(62 citation statements)
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“…In this study, the desertification index with respect to Naiman Banner was calculated using two categories of feature space models. The desertification indexes of the two categories of the feature space models were divided into five categories (Table 1, Wei et al 2018) for obtaining the spatial distributions of different levels of desertification (Figure 8) using the natural breaks method of ArcGIS 10.2, which can completely consider the image histogram distribution o and the spatial clustering characteristics of the features. 245 sites from regions exhibiting different types of landscape were selected by utilizing Google Earth and field observations to validate the reversion and classification results for the two categories of the feature space models (Tables 2 and 3).…”
Section: Resultsmentioning
confidence: 99%
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“…In this study, the desertification index with respect to Naiman Banner was calculated using two categories of feature space models. The desertification indexes of the two categories of the feature space models were divided into five categories (Table 1, Wei et al 2018) for obtaining the spatial distributions of different levels of desertification (Figure 8) using the natural breaks method of ArcGIS 10.2, which can completely consider the image histogram distribution o and the spatial clustering characteristics of the features. 245 sites from regions exhibiting different types of landscape were selected by utilizing Google Earth and field observations to validate the reversion and classification results for the two categories of the feature space models (Tables 2 and 3).…”
Section: Resultsmentioning
confidence: 99%
“…The two aforementioned sensitive desertification indices were calculated using the reflectance data of blue (B blue ), red (B red ), near-infrared (B nir ), and short-wave infrared band (B swir1 and B swir2 ) obtained from Landsat8 OLI (August 29, 2017; path/row, 121/30). The formulas for calculating albedo and MSAVI are as follows (Wei et al 2018):…”
Section: Sensitive Feature Space Indicesmentioning
confidence: 99%
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“…Land cover changes in the region are related to both climate change Miao et al 2015) as well as anthropogenic impacts related to urbanization (Allington et al 2017;Fan et al 2016), livestock herding (Allington et al 2017, Sternberg 2012, mining (Batbayar et al 2019;Jarsjö et al 2017) and logging (Batkhuu et al 2011;Tsogtbaatar 2004). In vast parts of the Mongolian Plateau, forest degradation and losses (Gradel et al 2017;Juřička et al 2019a) as well as desertification of grasslands (Khodolmor et al 2013;Wei et al 2019) have modified a natural land cover. The key drivers of these processes are mining, agriculture / urbanization and deforestation, which are at the same time major water users and polluters (Batbayar et al 2019;Jarsjö et al 2017;Karthe et al 2017).…”
mentioning
confidence: 99%
“…The key drivers of these processes are mining, agriculture / urbanization and deforestation, which are at the same time major water users and polluters (Batbayar et al 2019;Jarsjö et al 2017;Karthe et al 2017). The above mentioned processes have also had strong effects on the soils, which are affected by anthropogenic impacts in three major ways: nutrient depletion due to intensive agriculture (Hofmann et al 2016); soil erosion due to land use change, mining and increasing livestock densities (Sasaki et al 2018;Sternberg 2012;Wei et al 2019); and soil pollution (mostly with heavy metals) due to mining, industry and coal combustion in urban areas (Jarsjö et al 2017;Kosheleva et al 2019).…”
mentioning
confidence: 99%