Abstract

During the last two decades, forest monitoring and inventory systems have moved from field surveys to remote sensing-based methods. These methods tend to focus on economically significant components of forests, thus leaving out many factors vital for forest biodiversity, such as the occurrence of species with low economical but high ecological values. Airborne hyperspectral imagery has shown significant potential for tree species classification, but the most common analysis methods, such as random forest and support vector machines, require manual feature engineering in order to utilize both spatial and spectral features, whereas deep learning methods are able to extract these features from the raw data.Our research focused on the classification of the major tree species Scots pine, Norway spruce and birch, together with an ecologically valuable keystone species, European aspen, which has a sparse and scattered occurrence in boreal forests. We compared the performance of three-dimensional convolutional neural networks (3D-CNNs) with the support vector machine, random forest, gradient boosting machine and artificial neural network in individual tree species classification from hyperspectral data with high spatial and spectral resolution. We collected hyperspectral and LiDAR data along with extensive ground reference data measurements of tree species from the 83 km2 study area located in the southern boreal zone in Finland. A LiDAR-derived canopy height model was used to match ground reference data to aerial imagery. The best performing 3D-CNN, utilizing 4 m image patches, was able to achieve an F1-score of 0.91 for aspen, an overall F1-score of 0.86 and an overall accuracy of 87%, while the lowest performing 3D-CNN utilizing 10 m image patches achieved an F1-score of 0.83 and an accuracy of 85%. In comparison, the support-vector machine achieved an F1-score of 0.82 and an accuracy of 82.4% and the artificial neural network achieved an F1-score of 0.82 and an accuracy of 81.7%. Compared to the reference models, 3D-CNNs were more efficient in distinguishing coniferous species from each other, with a concurrent high accuracy for aspen classification.Deep neural networks, being black box models, hide the information about how they reach their decision. We used both occlusion and saliency maps to interpret our models. Finally, we used the best performing 3D-CNN to produce a wall-to-wall tree species map for the full study area that can later be used as a reference prediction in, for instance, tree species mapping from multispectral satellite images. The improved tree species classification demonstrated by our study can benefit both sustainable forestry and biodiversity conservation.

Highlights

  • Recent advances in remote sensing technology hold much promise for the detailed mapping of the spatiotemporal distribution and char­ acteristics of tree species over wide areas (Fassnacht et al, 2016)

  • We performed the first two steps with commonly used methods, and for tree species classification we focused on comparing the efficiency of several different techniques ranging from traditional machine learning to state-of-the-art deep learning methods

  • 2D-convolutional neural networks (CNNs) approaches typi­ cally perform some kind of dimensionality reduction, such as principal component analysis (PCA) or minimum noise fraction (MNF), on the input data (Audebert et al, 2019; Paoletti et al, 2019)

Read more

Summary

Introduction

Recent advances in remote sensing technology hold much promise for the detailed mapping of the spatiotemporal distribution and char­ acteristics of tree species over wide areas (Fassnacht et al, 2016). In addition to typical challenges with aerial imagery, such as atmo­ spheric effects and varying illumination conditions, having numerous spectral bands leads to a complex structure and large size of the data and requires efficient analysis methods. Machine learning methods, such as support-vector machines (SVMs), random forests (RF), gradient boosting machines (GBMs) and artificial neural networks (ANN) have been used in various remote sensing tasks. Kandare et al (2017) and Dalponte et al (2019) achieved promising results with SVM with overall classification accuracies of 80% for three different species and 88% for nine different species respectively. RF and ANN were used by Nevalainen et al (2017) for classifying unmanned aerial vehicle imagery into four different tree species, achieving an overall accuracy of around 95%, an F1-score (the harmonic mean of the user’s and the producer’s accuracies) of 0.93 and a Kappa score of 0.9 with both methods

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call