Abstract

Forest is a very important ecosystem and natural resource for living things. Based on forest inventories, government is able to make decisions to converse, improve and manage forests in a sustainable way. Field work for forestry investigation is difficult and time consuming, because it needs intensive physical labor and the costs are high, especially surveying in remote mountainous regions. A reliable forest inventory can give us a more accurate and timely information to develop new and efficient approaches of forest management. The remote sensing technology has been recently used for forest investigation at a large scale. To produce an informative forest inventory, forest attributes, including tree species are unavoidably required to be considered. <br><br> In this study the aim is to classify forest tree species in Erdenebulgan County, Huwsgul province in Mongolia, using Maximum Entropy method. The study area is covered by a dense forest which is almost 70% of total territorial extension of Erdenebulgan County and is located in a high mountain region in northern Mongolia. For this study, Landsat satellite imagery and a Digital Elevation Model (DEM) were acquired to perform tree species mapping. The forest tree species inventory map was collected from the Forest Division of the Mongolian Ministry of Nature and Environment as training data and also used as ground truth to perform the accuracy assessment of the tree species classification. Landsat images and DEM were processed for maximum entropy modeling, and this study applied the model with two experiments. The first one is to use Landsat surface reflectance for tree species classification; and the second experiment incorporates terrain variables in addition to the Landsat surface reflectance to perform the tree species classification. All experimental results were compared with the tree species inventory to assess the classification accuracy. Results show that the second one which uses Landsat surface reflectance coupled with terrain variables produced better result, with the higher overall accuracy and kappa coefficient than first experiment. The results indicate that the Maximum Entropy method is an applicable, and to classify tree species using satellite imagery data coupled with terrain information can improve the classification of tree species in the study area.

Highlights

  • Forests are one of the most valuable natural resources on Earth and play a vital role in achieving ecological balance (Torahi, Rai, and Al 2011)

  • The forest tree species classification scheme proposed in this study aims to improve efficiency of forest classification in extensive mountainous regions with complex structures to aid sustainable forest management efforts

  • This research demonstrates the ability of remote sensing technology to classify forest tree species

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Summary

Introduction

Forests are one of the most valuable natural resources on Earth and play a vital role in achieving ecological balance (Torahi, Rai, and Al 2011). Acquiring relevant inventory information, such as tree species composition in forests, is an important tool to support sustainable forest management practices. Forest inventories are defined by Scott & Gove (2002) as “an accounting of trees and their related characteristics of interest over a well-defined land area,” and they have the overall purpose to compute the population of trees inside a forest and determine other relevant information to reach knowledgeable conclusions about the stand treatment required (Scott and Gove 2002). All forests in Mongolia are state-owned, and the Ministry of Nature and Environment (MNE) has the overall responsibility to carry out a forest survey and inventory; to determine forest distribution, composition, and quality; and from that information determine conservation and restoration practices (Tsogtbaatar 2000)

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