Abstract

The sparse Ulmus pumila L. woodland in the Otingdag Sandy Land of China is indispensable in maintaining the ecosystem stability of the desertified grasslands. Many studies of this region have focused on community structure and analysis of species composition, but without consideration of spatial distribution. Based on a combination of spectral and multiscale spatial variation features, we present a method for automated extraction of information on the U. pumila trees of the Otingdag Sandy Land using very high spatial resolution remote sensing imagery. In this method, feature images were constructed using fused 1-m spatial resolution GF-2 images through analysis of the characteristics of the natural geographical environment and the spatial distribution of the U. pumila trees. Then, a multiscale Laplace transform was performed on the feature images to generate multiscale Laplacian feature spaces. Next, local maxima and minima were obtained by iteration over the multiscale feature spaces. Finally, repeated values were removed and vector data (point data) were generated for automatic extraction of the spatial distribution and crown contours of the U. pumila trees. Results showed that the proposed method could overcome the lack of universality common to image classification methods. Validation indicated the accuracy of information extracted from U. pumila test data reached 82.7%. Further analysis determined the parameter values of the algorithm applicable to the study area. Extraction accuracy was improved considerably with a gradual increase of the Sigma parameter; however, the probability of missing data also increased markedly after the parameter reached a certain level. Therefore, we recommend the Sigma value of the algorithm be set to 90 (±5). The proposed method could provide a reference for information extraction, spatial distribution mapping, and forest protection in relation to the U. pumila woodland of the Otingdag Sandy Land, which could also support improved ecological protection across much of northern China.

Highlights

  • China is one of the countries most affected by desertification

  • In our study, based on the spectral features analysis at pixel scale, we proposed an effective method for extraction of information on Trees outside forests (TOFs) by using very high spatial resolution remote sensing images

  • The main conclusions derived from this study are as follows: (1) Based on analysis of the spatial distribution features of the sparse U. pumila trees in the Otingdag

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Summary

Introduction

China is one of the countries most affected by desertification. 1,721,200 km , respectively [1]. These figures have decreased in the past three decades, the prevention of further desertification remains a challenge. Trees outside forests (TOFs) are an important natural resource that contributes substantially to national biomass and carbon stocks and to the livelihood of people in many regions [2,3]. TOFs are generally absent from national forest inventories [4], and this lack of data precludes a proper assessment of their contribution to landscape connectivity with regard to associated species [5].

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