The objective of this thesis is to predict the structural parameters of forests on a large scale using remote sensing images. The approach is to extend the accuracy of LIDAR full waveforms, on a larger area covered by polarimetric and interferometric (PolInSAR) synthetic aperture radar images using machine learning methods. From the analysis of the geometric properties of the PolInSAR coherence shape, we proposed a set of parameters that are likely to have a strong correlation with the LIDAR density profiles on forest lands. These features were used as input data for SVM techniques, neural networks, and random forests, in order to learn a set of forest descriptors deduced from LIDAR: the canopy height, the vertical profile type, and the can...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
In forestry, natural forests are forest areas with high biodiversity, in need of preservation. The c...
Numerous studies have shown the potential of airborne laser scanningfor the mapping of forest resour...
Ce travail de thèse a pour objectif la prédiction des paramètres structurels des forêts à grande éch...
This paper presents a machine learning based method to predict the forest structure parameters from ...
International audienceThis paper presents a machine learning based method to predict the forest stru...
This thesis studies the development of new statistical models for forest structure assessment using ...
This paper describes a deep-learning-based unsupervised forest height estimation method based on the...
This paper investigates the benefits of integrating multi-baseline polarimetric interferometric SAR ...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-ATTOS [Encadrant_IRSTEA]Durri...
Forest ecosystems are a significant faction of the Earth’s landscape, and accurate estimates of fore...
Abstract: Light detection and ranging (lidar) is becoming an increasingly popular technology among s...
International audienceThis paper investigates the benefits of integrating polarimetric radar variabl...
This article introduces a novel methodology for automated classification of forest areas from airbor...
This article introduces a novel methodology for automated classification of forest areas from airbor...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
In forestry, natural forests are forest areas with high biodiversity, in need of preservation. The c...
Numerous studies have shown the potential of airborne laser scanningfor the mapping of forest resour...
Ce travail de thèse a pour objectif la prédiction des paramètres structurels des forêts à grande éch...
This paper presents a machine learning based method to predict the forest structure parameters from ...
International audienceThis paper presents a machine learning based method to predict the forest stru...
This thesis studies the development of new statistical models for forest structure assessment using ...
This paper describes a deep-learning-based unsupervised forest height estimation method based on the...
This paper investigates the benefits of integrating multi-baseline polarimetric interferometric SAR ...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-ATTOS [Encadrant_IRSTEA]Durri...
Forest ecosystems are a significant faction of the Earth’s landscape, and accurate estimates of fore...
Abstract: Light detection and ranging (lidar) is becoming an increasingly popular technology among s...
International audienceThis paper investigates the benefits of integrating polarimetric radar variabl...
This article introduces a novel methodology for automated classification of forest areas from airbor...
This article introduces a novel methodology for automated classification of forest areas from airbor...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
In forestry, natural forests are forest areas with high biodiversity, in need of preservation. The c...
Numerous studies have shown the potential of airborne laser scanningfor the mapping of forest resour...