Lataa julkaisu, kun saatavilla.In this study, we introduce an improved semisupervised deep learning approach, and demonstrate its suitability for modeling the relationship between forest structural parameters and satellite remote sensing imagery and producing forest maps. The improved approach is based on a popular UNet model, modified and fine-tuned to improve the forest parameter prediction performance. Within the improved model, squeeze-and-excitation blocks are embedded to recalibrate the multisource features via retrieved channel-wise self-attention and a novel cross-pseudo regression strategy is implemented to train the model in a semisupervised way. The improvement imposes consistency learning on two perturbed network branches: 1) ge...
Temperate forests are under climatic and economic pressures. Public bodies, NGOs and the wood indust...
Accurate mapping of forests is critical for forest management and carbon stocks monitoring. Deep lea...
Knowing vegetation type in an area is crucial for several applications, including ecology, land-use ...
Lataa julkaisu, kun saatavilla.In this study, we introduce an improved semisupervised deep learning ...
In this study, we evaluate the potential of deep learning models in predicting forest tree height in...
Funding Information: This study was supported by the National Natural Science Foundation of China (G...
Estimation of forest structural variables is essential to provide relevant insights for public and p...
Estimation of forest structural variables is essential to provide relevant insights for public and p...
Monitoring and managing Earth's forests in an informed manner is an important requirement for addres...
Deep Learning algorithms have achieved great progress in different applications due to their trainin...
Timely and accurate information on forest above-ground biomass (AGB) is required for understanding c...
Accurate mapping of forests is critical for forest management and carbon stocks monitoring. Deep lea...
International audienceForests are one of the key elements in ecological transition policies in Europ...
International audienceTemperate forests are under climatic and economic pressures. Public bodies, NG...
Temperate forests are under climatic and economic pressures. Public bodies, NGOs and the wood indust...
Accurate mapping of forests is critical for forest management and carbon stocks monitoring. Deep lea...
Knowing vegetation type in an area is crucial for several applications, including ecology, land-use ...
Lataa julkaisu, kun saatavilla.In this study, we introduce an improved semisupervised deep learning ...
In this study, we evaluate the potential of deep learning models in predicting forest tree height in...
Funding Information: This study was supported by the National Natural Science Foundation of China (G...
Estimation of forest structural variables is essential to provide relevant insights for public and p...
Estimation of forest structural variables is essential to provide relevant insights for public and p...
Monitoring and managing Earth's forests in an informed manner is an important requirement for addres...
Deep Learning algorithms have achieved great progress in different applications due to their trainin...
Timely and accurate information on forest above-ground biomass (AGB) is required for understanding c...
Accurate mapping of forests is critical for forest management and carbon stocks monitoring. Deep lea...
International audienceForests are one of the key elements in ecological transition policies in Europ...
International audienceTemperate forests are under climatic and economic pressures. Public bodies, NG...
Temperate forests are under climatic and economic pressures. Public bodies, NGOs and the wood indust...
Accurate mapping of forests is critical for forest management and carbon stocks monitoring. Deep lea...
Knowing vegetation type in an area is crucial for several applications, including ecology, land-use ...