The spectral and spatial resolutions of modern optical Earth observation data are continuously increasing. To fully utilize the data, integrate them with other information sources, and create applications relevant to real-world problems, extensive training data are required. We present TAIGA, an open dataset including continuous and categorical forestry data, accompanied by airborne hyperspectral imagery with a pixel size of 0.7 m. The dataset contains over 70 million labeled pixels belonging to more than 600 forest stands. To establish a baseline on TAIGA dataset for multitask learning, we trained and validated a convolutional neural network to simultaneously retrieve 13 forest variables. Due to the size of the imagery, the training and te...
Timely and accurate information on forest above-ground biomass (AGB) is required for understanding c...
Estimating forest structural attributes using multispectral remote sensing is challenging because of...
Hyperspectral and multispectral imaging technologies for remote sensing have been enjoying an enormo...
The spectral and spatial resolutions of modern optical Earth observation data are continuously incre...
Publisher Copyright: AuthorThe spectral and spatial resolutions of modern optical Earth observation ...
Three-quarters of Finland’s land surface area is filled with forests, which compose a great part of ...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
With three-quarters of the land surface area is covered by forests, Finland is the most heavily-fore...
In this study, we automate tree species classification and mapping using field-based training data, ...
Very high resolution remote sensing data of forests, where individual tree crowns are separable, con...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Digital Publication of the training data polygons and hyperspectral imagery used in the manuscript "...
This is a research compendium (RC) for the publication Monitoring forest health using hyperspectra...
An efficient means to map tree plantations is needed to detect tropical land use change and evaluate...
In this study we evaluated various spectral inputs for retrieval of forest chlorophyll content (Cab)...
Timely and accurate information on forest above-ground biomass (AGB) is required for understanding c...
Estimating forest structural attributes using multispectral remote sensing is challenging because of...
Hyperspectral and multispectral imaging technologies for remote sensing have been enjoying an enormo...
The spectral and spatial resolutions of modern optical Earth observation data are continuously incre...
Publisher Copyright: AuthorThe spectral and spatial resolutions of modern optical Earth observation ...
Three-quarters of Finland’s land surface area is filled with forests, which compose a great part of ...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
With three-quarters of the land surface area is covered by forests, Finland is the most heavily-fore...
In this study, we automate tree species classification and mapping using field-based training data, ...
Very high resolution remote sensing data of forests, where individual tree crowns are separable, con...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Digital Publication of the training data polygons and hyperspectral imagery used in the manuscript "...
This is a research compendium (RC) for the publication Monitoring forest health using hyperspectra...
An efficient means to map tree plantations is needed to detect tropical land use change and evaluate...
In this study we evaluated various spectral inputs for retrieval of forest chlorophyll content (Cab)...
Timely and accurate information on forest above-ground biomass (AGB) is required for understanding c...
Estimating forest structural attributes using multispectral remote sensing is challenging because of...
Hyperspectral and multispectral imaging technologies for remote sensing have been enjoying an enormo...