Abstract

Mapping plant communities is a difficult and time consuming endeavor. Methods relying on field surveys deliver high quality data but are usually limited to relatively small areas. In this paper we apply airborne hyperspectral data to vegetation mapping in remote and hard to reach areas. We classified 22 vegetation communities in the Giant Mountains on 3.12-m Airborne Prism Experiment (APEX) hyperspectral images, registered in 288 spectral bands (10 September 2012). As the classification algorithm, Support Vector Machines (SVM) was used. APEX data were corrected geometrically and atmospherically, and three dimensionality reduction methods were performed to select the best dataset. As reference we used a non-forest vegetation map containing vegetation communities of Polish Karkonosze National Park from 2002, orthophotomap and field surveys data from 2013 to 2014. We obtained the post-classification maps of 22 vegetation communities, lakes and areas without any vegetation. Iterative accuracy assessment repeated 100 times was used to obtain the most objective results for individual communities. The median value of overall accuracy (OA) was 84%. Fourteen out of twenty-four classes were classified of more than 80% of producer accuracy (PA) and sixteen out of twenty-four of user accuracy (UA). APEX data and SVM with the use of iterative accuracy assessment are useful for the mountain communities classification. This can support both Polish and Czech national parks management by giving the information about diversity of communities in the whole transboundary area, helping with identification especially in changing environment caused by humans.

Highlights

  • Mountain ecosystems are an important indicator of climate change [1] because, within a small altitude gradient, mountain vegetation goes from deciduous forests, through pine forests, dwarf pine thickets and grassland communities to tussock grassland communities including bryophytes and lichens [2]

  • The aim of the research is to present a methodology for mapping mountain plant communities in the Polish and Czech Giant Mountains and the study was designed to answer the following questions: 1. Can Airborne Prism Experiment (APEX) hyperspectral image data and Support Vector Machines (SVM) method be used for classification of high-mountain vegetation communities in both the Polish and Czech parts of Giant Mountains?

  • Comparison results reported by the team of Marcinkowska-Ochtyra [26] present the overall accuracy (OA) as well as producer accuracy (PA) and user accuracy (UA) for the same 22 vegetation communities of the whole Giant Mountains area above 1200 m a.s.l. classified using SVM and Random Forest (RF) classifier

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Summary

Introduction

Mountain ecosystems are an important indicator of climate change [1] because, within a small altitude gradient, mountain vegetation goes from deciduous forests, through pine forests, dwarf pine thickets and grassland communities to tussock grassland communities including bryophytes and lichens [2]. Traditional vegetation mapping is most often done in the field by methods according to the Braun–Blanquet floristic approach and by interpreting aerial photographs [4]. These methods are time consuming and require an investment of resources and labour. There is still a lack of typical mountain vegetation mapping works using hyperspectral data [6,9,10], some studies have covered upland areas [13,14], and the vast majority describe lowland [7,11,12,15,16]

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