Knowing vegetation type in an area is crucial for several applications, including ecology, land-use management, and infrastructure risk assessment. In combination with recent advancements in image processing, remote-sensing technology has been used to perform fast vegetation-type estimation and reduce the need for intensive and time-consuming field-based surveys. This article proposes a weakly supervised method based on deep learning to estimate tree species relying on multispectral high-resolution satellite images. We tested the approach against noisy labels, which often occur in real-world datasets. We validate our approach for a study area in Norway and Italy using images taken during different periods of the year. Our method significant...
Forest inventory forms the foundation of forest management. Remote sensing (RS) is an efficient mean...
Climate change can increase the number of uprooted trees. Although there have been an increasing num...
The work related to this paper is part of an on-going study called NewForest - Renewal of Forest Res...
Airborne and spaceborne platforms are the primary data sources for large-scale forest mapping, but v...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
Information on forest composition, specifically tree types and their distribution, aids in timber st...
peer reviewedRemote sensing can be used to collect information related to forest management. Previou...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
Anthropogenically-driven climate change, land-use changes, and related biodiversity losses are threa...
Timely and accurate information on tree species (TS) is crucial for developing strategies for sustai...
In this study, we automate tree species classification and mapping using field-based training data, ...
Background: The mapping of tree species within Norwegian forests is a time-consuming process, involv...
Accurate and efficient individual tree species (ITS) classification is the basis of fine forest reso...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Forest inventory forms the foundation of forest management. Remote sensing (RS) is an efficient mean...
Climate change can increase the number of uprooted trees. Although there have been an increasing num...
The work related to this paper is part of an on-going study called NewForest - Renewal of Forest Res...
Airborne and spaceborne platforms are the primary data sources for large-scale forest mapping, but v...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
Information on forest composition, specifically tree types and their distribution, aids in timber st...
peer reviewedRemote sensing can be used to collect information related to forest management. Previou...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
Anthropogenically-driven climate change, land-use changes, and related biodiversity losses are threa...
Timely and accurate information on tree species (TS) is crucial for developing strategies for sustai...
In this study, we automate tree species classification and mapping using field-based training data, ...
Background: The mapping of tree species within Norwegian forests is a time-consuming process, involv...
Accurate and efficient individual tree species (ITS) classification is the basis of fine forest reso...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Forest inventory forms the foundation of forest management. Remote sensing (RS) is an efficient mean...
Climate change can increase the number of uprooted trees. Although there have been an increasing num...
The work related to this paper is part of an on-going study called NewForest - Renewal of Forest Res...