Abstract

Information on the spatial distribution of human disturbance is important for assessing and monitoring land degradation. In the Eastern Mongolian Steppe Ecosystem, one of the major driving factors of human-induced land degradation is the expansion of road networks mainly due to intensifications of oil exploration and exploitation. So far, neither the extents of road networks nor the extent of surrounding grasslands affected by the oil industry are monitored which is generally labor consuming. This causes that no information on the changes in the area which is affected by those disturbance drivers is available. Consequently, the study aim is to provide a cost-effective methodology to classify infrastructure and oil exploitation areas from remotely sensed images using object-based classifications with Random Forest. By combining satellite data with different spatial and spectral resolutions (PlanetScope, RapidEye, and Landsat ETM+), the product delivers data since 2005. For the classification variables, segmentation, spectral characteristics, and indices were extracted from all above mentioned imagery and used as predictors. Results show that overall accuracies of land use maps ranged 73%–93% mainly depending on satellites’ spatial resolution. Since 2005, the area of grassland disturbed by dirt roads and oil exploitation infrastructure increased by 88% with its highest expansion by 47% in the period 2005–2010. Settlements and croplands remained relatively constant throughout the 13 years. Comparison of multiscale classification suggests that, although high spatial resolutions are clearly beneficial, all datasets were useful to delineate linear features such as roads. Consequently, the results of this study provide an effective evaluation for the potential of Random Forest for extracting relatively narrow linear features such as roads from multiscale satellite images and map products that are possible to use for detailed land degradation assessments.

Highlights

  • Land degradation is defined by Food and Agriculture Organization of the United Nations [1] as “a reduction in the capacity of the land to provide ecosystem goods and services over a period of time for its beneficiaries”

  • Supervised classification was performed using the random forest classification algorithm on each image to calculate the disturbed grassland due to dirt road and petroleum extraction infrastructure and other land uses for years 2005, 2007, 2010, 2014, and 2018

  • The training samples for RapidEye and Landsat ETM+ were created from an existing result of PlanetScope classification using seed points

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Summary

Introduction

Land degradation is defined by Food and Agriculture Organization of the United Nations [1] as “a reduction in the capacity of the land to provide ecosystem goods and services over a period of time for its beneficiaries”. Recent studies combined high resolution PlanetScope and RapidEye data free of charge with other satellite imagery and achieved promising results for pixel-based classifications [15,16]. Such approaches could be straightforward and cost effective methods to detect linear features such as dirt roads and other infrastructure which have not been done so far. Several studies showed that land-use classifications based on high spatial resolution data are challenging if the size of the target to classify is larger in comparison to the spatial resolution of the imagery [18] As alternative, those studies suggest that object-oriented approaches may achieve highly accurate results [19]. Fooilr einxsptlaonrcaet,iobnlolcikceXnIsXe,sXdXivI,idanedd XinXtoII, wseevreeriaslsbuleodckusnednecrotmhepapsrsoidngucdtiifofnersehnatrainregascognratrnatcetdinin1d99if3fearnendt1y9e9a5rs(.FFigourriens1t)a.nIcne,adbldoictkioXnI,Xtw, XoXoIi,l eaxntdraXctXioIIn, wsiteerse wisseureedcounnsdtreurcttheedpinrotdhuecTtioosnonshUaruilnXgIcXonantrdacMt ianta1d99X3XaInidn12909053(aFnigdu2r0e015).[I2n7,a2d8d].ition, two oil extraction sites were constructed in the Toson Uul XIX and Matad XXI in 2003 and 2005 [27,28]

Data Collection
27 June 2010 16 October 2018
Supervised Classification Approach
Segmentation
Training Samples
Random Forest Classifier
Accuracy Assessment and Validation
Classification Results and Accuracy
Land Use Analysis
Conclusions
29. Planet Team Planet Application Program Interface
Full Text
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