Abstract

Forest damage due to storms causes economic loss and requires a fast response to prevent further damage such as bark beetle infestations. By using Convolutional Neural Networks (CNNs) in conjunction with a GIS, we aim at completely streamlining the detection and mapping process for forest agencies. We developed and tested different CNNs for rapid windthrow detection based on PlanetScope satellite data and high-resolution aerial image data. Depending on the meteorological situation after the storm, PlanetScope data might be rapidly available due to its high temporal resolution, while the acquisition of high-resolution airborne data often takes weeks to a month and is, therefore, used in a second step for more detailed mapping. The study area is located in Bavaria, Germany (ca. 165 km2), and labels for damaged areas were provided by the Bavarian State Institute of Forestry (LWF). Modifications of a U-Net architecture were compared to other approaches using transfer learning (e.g., VGG19) to find the most efficient architecture for the task on both datasets while keeping the computational time low. A custom implementation of U-Net proved to be more accurate than transfer learning, especially on medium (3 m) resolution PlanetScope imagery (intersection over union score (IoU) 0.55) where transfer learning completely failed. Results for transfer learning based on VGG19 on high-resolution aerial image data are comparable to results from the custom U-Net architecture (IoU 0.76 vs. 0.73). When using both architectures on a dataset from a different area (located in Hesse, Germany), however, we find that the custom implementations have problems generalizing on aerial image data while VGG19 still detects most damage in these images. For PlanetScope data, VGG19 again fails while U-Net achieves reasonable mappings. Results highlight the potential of Deep Learning algorithms to detect damaged areas with an IoU of 0.73 on airborne data and 0.55 on Planet Dove data. The proposed workflow with complete integration into ArcGIS is well-suited for rapid first assessments after a storm event that allows for better planning of the flight campaign followed by detailed mapping in a second stage.

Highlights

  • IntroductionThe number of storms that caused damage to forests has been increasing due to climate change [1]

  • Over the past years, the number of storms that caused damage to forests has been increasing due to climate change [1]

  • We developed and tested different Convolutional Neural Networks (CNNs) for rapid windthrow detection based on PlanetScope satellite data and high-resolution aerial image data

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Summary

Introduction

The number of storms that caused damage to forests has been increasing due to climate change [1]. A method for autonomous, object-based change detection of storm damages as described by [3] uses high-resolution multispectral images. The study highlights that change detection can lead to good results in areas with rugged terrain and low sun angles (and related shadows) using satellite image data. A method proposed by [7] utilizes C-band Synthetic Aperture Radar (SAR) data and change detection to determine the differences in back scatter images from before and after the storm event with a minimal operating area of 0.5 ha. With an accuracy of 88% for various test areas, the method is very promising, especially since SAR technology is independent of atmospheric conditions, and data can be generated very quickly after a storm event. MMeetthhooddss FFiigguurree 33shshowows sthtehoeveorvaelrl awllorwkflorokwfloowf thoefsttuhdey.stIundtyh.e Ifnolltohweinfogl,lwowe iwngil,l dweescrwibilel thdeesrcersipbeecttihvee rseescptieocntsiviensdeecttaioiln. s in detail

Data Preprocessing
Evaluation Metrics
Hyperparameters and Experiments
Fine-tuning Results
Prediction Results for PlanetScope and Airborne Data
Comparison to Other Remote-Sensing Approaches
Limitations of the Proposed Approach
Conclusions and Outlook

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