Abstract

Abstract. Forest stand delineation is a fundamental task for forest management purposes, that is still mainly manually performed through visual inspection of geospatial (very) high spatial resolution images. Stand detection has been barely addressed in the literature which has mainly focused, in forested environments, on individual tree extraction and tree species classification. From a methodological point of view, stand detection can be considered as a semantic segmentation problem. It offers two advantages. First, one can retrieve the dominant tree species per segment. Secondly, one can benefit from existing low-level tree species label maps from the literature as a basis for high-level object extraction. Thus, the semantic segmentation issue becomes a regularization issue in a weakly structured environment and can be formulated in an energetical framework. This papers aims at investigating which regularization strategies of the literature are the most adapted to delineate and classify forest stands of pure species. Both airborne lidar point clouds and multispectral very high spatial resolution images are integrated for that purpose. The local methods (such as filtering and probabilistic relaxation) are not adapted for such problem since the increase of the classification accuracy is below 5%. The global methods, based on an energy model, tend to be more efficient with an accuracy gain up to 15%. The segmentation results using such models have an accuracy ranging from 96% to 99%.

Highlights

  • The analysis of forested areas from a remote sensing point of view can be performed at three different levels: pixel, object or stand

  • Hyperspectral and multispectral images are relevant for tree species classification: spectral and textural information from very high resolution (VHR) images can allow a fine discrimination of many species, respectively

  • We focus on semantic segmentation of forest stands through the regularization/smoothing process of an existing label map of pure species, following the strategy proposed in (Dechesne et al, 2017)

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Summary

Introduction

The analysis of forested areas from a remote sensing point of view can be performed at three different levels: pixel, object (mainly trees) or stand. Among the large body of available remote sensing data today, airborne laser scanning (ALS) and Very High spatial Resolution (VHR) hyper/multispectral images are both well adapted and complementary inputs for stand segmentation (Dalponte et al, 2012, Dalponte et al, 2015, Lee et al, 2016). No operational framework embedding the automatic analysis of remote sensing data has been yet proposed in the literature for forest stand segmentation (Dechesne et al, 2017). More authors have focused on forest delineation (Eysn et al, 2012), that do not convey information about the tree species and their spatial distribution

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