Abstract

Storms can cause significant damage to forest areas, affecting biodiversity and infrastructure and leading to economic loss. Thus, rapid detection and mapping of windthrows are crucially important for forest management. Recent advances in computer vision have led to highly-accurate image classification algorithms such as Convolutional Neural Network (CNN) architectures. In this study, we tested and implemented an algorithm based on CNNs in an ArcGIS environment for automatic detection and mapping of damaged areas. The algorithm was trained and tested on a forest area in Bavaria, Germany. . It is a based on a modified U-Net architecture that was optimized for the pixelwise classification of multispectral aerial remote sensing data. The neural network was trained on labeled damaged areas from after-storm aerial orthophotos of a ca. 109 k m 2 forest area with RGB and NIR bands and 0.2-m spatial resolution. Around 10 7 pixels of labeled data were used in the process. Once the network is trained, predictions on further datasets can be computed within seconds, depending on the size of the input raster and the computational power used. The overall accuracy on our test dataset was 92 % . During visual validation, labeling errors were found in the reference data that somewhat biased the results because the algorithm in some instance performed better than the human labeling procedure, while missing areas affected by shadows. Our results are very good in terms of precision, and the methods introduced in this paper have several additional advantages compared to traditional methods: CNNs automatically detect high- and low-level features in the data, leading to high classification accuracies, while only one after-storm image is needed in comparison to two images for approaches based on change detection. Furthermore, flight parameters do not affect the results in the same way as for approaches that require DSMs and DTMs as the classification is only based on the image data themselves, and errors occurring in the computation of DSMs and DTMs do not affect the results with respect to the z component. The integration into the ArcGIS Platform allows a streamlined workflow for forest management, as the results can be accessed by mobile devices in the field to allow for high-accuracy ground-truthing and additional mapping that can be synchronized back into the database. Our results and the provided automatic workflow highlight the potential of deep learning on high-resolution imagery and GIS for fast and efficient post-disaster damage assessment as a first step of disaster management.

Highlights

  • One consequence of climate change is an increase in natural disasters such as storms, which can cause significant damage in forest areas

  • Our results are very good in terms of precision, and the methods introduced in this paper have several additional advantages compared to traditional methods: Convolutional Neural Network (CNN) automatically detect high- and low-level features in the data, leading to high classification accuracies, while only one after-storm image is needed in comparison to two images for approaches based on change detection

  • We introduce a novel approach that is only based on one after-storm image and uses algorithms from computer vision: deep convolutional neural networks (CNNs)

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Summary

Introduction

One consequence of climate change is an increase in natural disasters such as storms, which can cause significant damage in forest areas. Landsat was widely used in forestry, but only has a low temporal resolution, while Sentinel-2 has a five-day revisit time in ideal cases and was, for example, successfully used for forest type and tree species mapping (e.g., [9,10]) In addition to these passive sensing methods, airborne laser scanning (ALS) and radar images are widely used in forestry because they provide accurate information about canopy height and structure and the underlying terrain ([11]). Honkavaara [16] compared an after-storm digital surface model derived from aerial photographs with a surface model obtained from ALS, and the work in [17] developed a workflow that is purely based on photogrammetric canopy height models All these methods require two datasets: a pre- and a post-storm image, which is either costly (flight campaigns) or sometimes not available depending on atmospheric conditions and revisit times (Landsat, Sentinel-2). The approach in this paper further evaluates the potential of CNNs in applied forestry and has the potential of completely automatizing the task of forest damage assessment

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