Abstract

The multitemporal acquisition of images from the Sentinel-1 satellites allows continuous monitoring of a forest. This study focuses on the use of multitemporal C-band synthetic aperture radar (SAR) data to assess the results for forest type (FTY), between coniferous and deciduous forest, and tree species (SPP) classification. We also investigated the temporal stability through the use of backscatter from multiple seasons and years of acquisition. SAR acquisitions were pre-processed, histogram-matched, smoothed, and temperature-corrected. The normalized average backscatter was extracted for interpreted plots and used to train Random Forest models. The classification results were then validated with field plots. A principal component analysis was tested to reduce the dimensionality of the explanatory variables, which generally improved the results. Overall, the FTY classifications were promising, with higher accuracies (OA of 0.94 and K = 0.86) than the SPP classification (OA of 0.66 and K = 0.54). The use of merely winter images (OA = 0.89) reached, on average, results that were almost as good as those using of images from the entire year. The use of images from a single winter season reached a similar result (OA = 0.87). We conclude that multiple Sentinel-1 images acquired in winter conditions are feasible to classify forest types in a hemi-boreal Swedish forest.

Highlights

  • Accurate and complete information about forests is required to fully understand the carbon balance and forest cover changes over time

  • The objective of this paper is to evaluate the accuracy of area-based forest type and tree species classification using C-band synthetic aperture radar (SAR) backscatter

  • The coniferous and deciduous forests had an opposite seasonal trend resulting in a separation of the two temporal signatures during winter

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Summary

Introduction

Accurate and complete information about forests is required to fully understand the carbon balance and forest cover changes over time. Satellites are suitable for supporting this by acquiring images frequently and globally [1]. The main characteristics to know about forests are their status and extent [2]. In order to keep this kind of information updated, the role of satellite images is beneficial for monitoring land use and its changes [3]. At a local level (regional or property) more detailed information is necessary to assess the status of a forest. Some information is provided by National Forest

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