Domain adaptation in remote sensing image classification: A survey
Traditional remote sensing (RS) image classification methods heavily rely on labeled
samples for model training. When labeled samples are unavailable or labeled samples have …
samples for model training. When labeled samples are unavailable or labeled samples have …
Advancements in satellite image classification: methodologies, techniques, approaches and applications
Segmentation and classification are two imperative, yet challenging tasks in image analysis
for remote-sensing applications. In the former, an image is divided into spatially continuous …
for remote-sensing applications. In the former, an image is divided into spatially continuous …
A multi-feature fusion transfer learning method for displacement prediction of rainfall reservoir-induced landslide with step-like deformation characteristics
J Long, C Li, Y Liu, P Feng, Q Zuo - Engineering Geology, 2022 - Elsevier
Rainfall reservoir-induced landslides in the Zigui Basin, China Three Gorges Reservoir
(CTGR) area, exhibit typical step-like deformation characteristics with mutation and creep …
(CTGR) area, exhibit typical step-like deformation characteristics with mutation and creep …
A balanced and weighted alignment network for partial transfer fault diagnosis
Abstract Domain adaptation techniques have attracted great attention in mechanical fault
diagnosis. However, most existing methods work under the assumption that the source and …
diagnosis. However, most existing methods work under the assumption that the source and …
Discriminative transfer joint matching for domain adaptation in hyperspectral image classification
Domain adaptation, which aims at learning an accurate classifier for a new domain (target
domain) using labeled information from an old domain (source domain), has shown …
domain) using labeled information from an old domain (source domain), has shown …
Class-wise distribution adaptation for unsupervised classification of hyperspectral remote sensing images
Class-wise adversarial adaptation networks are investigated for the classification of
hyperspectral remote sensing images in this article. By adversarial learning between the …
hyperspectral remote sensing images in this article. By adversarial learning between the …
Centroid and covariance alignment-based domain adaptation for unsupervised classification of remote sensing images
L Ma, MM Crawford, L Zhu, Y Liu - IEEE Transactions on …, 2018 - ieeexplore.ieee.org
A new domain adaptation algorithm based on the class centroid and covariance alignment
(CCCA) is proposed for classification of remote sensing images. This approach exploits both …
(CCCA) is proposed for classification of remote sensing images. This approach exploits both …
Joint correlation alignment-based graph neural network for domain adaptation of multitemporal hyperspectral remote sensing images
In this article, we propose a novel deep domain adaptation method based on graph neural
network (GNN) for multitemporal hyperspectral remote sensing images. In GNN, graphs are …
network (GNN) for multitemporal hyperspectral remote sensing images. In GNN, graphs are …
Map** key indicators of forest restoration in the amazon using a low-cost drone and artificial intelligence
Monitoring the vegetation structure and species composition of forest restoration (FR) in the
Brazilian Amazon is critical to ensuring its long-term benefits. Since remotely piloted aircrafts …
Brazilian Amazon is critical to ensuring its long-term benefits. Since remotely piloted aircrafts …
Adaptive local discriminant analysis and distribution matching for domain adaptation in hyperspectral image classification
Multimodally distributed data is very common in remote sensing images, such as
hyperspectral images (HSIs). It is important to capture the local manifold structure while …
hyperspectral images (HSIs). It is important to capture the local manifold structure while …