Transformer-based multistage enhancement for remote sensing image super-resolution
Convolutional neural networks have made a great breakthrough in recent remote sensing
image super-resolution (SR) tasks. Most of these methods adopt upsampling layers at the …
image super-resolution (SR) tasks. Most of these methods adopt upsampling layers at the …
A new deep convolutional network for effective hyperspectral unmixing
Hyperspectral unmixing extracts pure spectral constituents (endmembers) and their
corresponding abundance fractions from remotely sensed scenes. Most traditional …
corresponding abundance fractions from remotely sensed scenes. Most traditional …
SANet: A sea–land segmentation network via adaptive multiscale feature learning
B Cui, W **g, L Huang, Z Li… - IEEE Journal of Selected …, 2020 - ieeexplore.ieee.org
Sea–land segmentation of remote sensing images is of great significance to the dynamic
monitoring of coastlines. However, the types of objects in the coastal zone are complex, and …
monitoring of coastlines. However, the types of objects in the coastal zone are complex, and …
Spectral variability augmented sparse unmixing of hyperspectral images
G Zhang, S Mei, B **e, M Ma, Y Zhang… - … on Geoscience and …, 2022 - ieeexplore.ieee.org
Spectral unmixing expresses the mixed pixels existing in hyperspectral images as the
product of endmembers and their corresponding fractional abundances, which has been …
product of endmembers and their corresponding fractional abundances, which has been …
Robust dual spatial weighted sparse unmixing for remotely sensed hyperspectral imagery
Sparse unmixing plays a crucial role in the field of hyperspectral image unmixing
technology, leveraging the availability of pre-existing endmember spectral libraries. In recent …
technology, leveraging the availability of pre-existing endmember spectral libraries. In recent …
Transductive prototypical attention reasoning network for few-shot SAR target recognition
H Ren, S Liu, X Yu, L Zou, Y Zhou… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Deep-learning-based synthetic aperture radar (SAR) automatic target recognition (ATR)
algorithms have achieved outstanding performance under the condition of hundreds or …
algorithms have achieved outstanding performance under the condition of hundreds or …
Evolutionary multitasking cooperative transfer for multiobjective hyperspectral sparse unmixing
Evolutionary multiobjective optimization is vigorous but not efficient in solving the
hyperspectral sparse unmixing problem, while most related algorithms suffer from high …
hyperspectral sparse unmixing problem, while most related algorithms suffer from high …
DAAN: A deep autoencoder-based augmented network for blind multilinear hyperspectral unmixing
In recent years, deep learning (DL) has accelerated the development of hyperspectral image
(HSI) processing, expanding the range of applications further. As a typical model of …
(HSI) processing, expanding the range of applications further. As a typical model of …
Toward convergence: A gradient-based multiobjective method with greedy hash for hyperspectral unmixing
Multiobjective optimization aims at addressing the conflicting objectives, which has been
introduced to improve the performance of sparse hyperspectral unmixing. Recently …
introduced to improve the performance of sparse hyperspectral unmixing. Recently …
Robust double spatial regularization sparse hyperspectral unmixing
With the help of endmember spectral library, sparse unmixing techniques have been
successfully applied to hyperspectral image interpretation. The inclusion of spatial …
successfully applied to hyperspectral image interpretation. The inclusion of spatial …