Image restoration algorithms for atmospheric turbulence are known to be much more challenging to design than traditional ones such as blur or noise because the distortion caused by the turbulence is an entanglement of spatially varying blur, geometric distortion, and sensor noise. Existing CNN-based restoration methods built upon convolutional kernels with static weights are insufficient to handle the spatially dynamical atmospheric turbulence effect. To address this problem, in this paper, we propose a physics-inspired transformer model for imaging through atmospheric turbulence. The proposed network utilizes the power of transformer blocks to jointly extract a dynamical turbulence distortion map and restore a turbulence-free image. In add...
We study the applicability of tools developed by the computer vision community for feature learning ...
A new blind image deconvolution technique is developed for atmospheric turbulence deblurring. The or...
Remote sensing applications are generally concerned with observing objects over long distances. When...
We present a deep learning approach for restoring images degraded by atmospheric optical turbulence....
Atmospheric turbulence distorts visual imagery and is always problematic for information interpretat...
Atmospheric turbulence-degraded images in typical practical application scenarios are always disturb...
Although many long-range imaging systems are designed to support extended vision applications, a nat...
In this paper, we compare the performance of multiple turbulence mitigation algorithms to restore im...
M.Phil.With the emergence of deep learning algorithms, there are recent successful achievements in m...
We present a block-matching and Wiener filtering approach to atmospheric turbulence mitigation for l...
In long-range imaging regimes, atmospheric turbulence degrades image quality. In addition to blurrin...
Atmospheric turbulence distorts visual imagery and is always problematic for information interpretat...
Atmospheric turbulence is a well-known phenomenon that diminishes the recognition range in visual an...
Measurements on dynamical systems, experimental or otherwise, are often subjected to inaccuracies ca...
A well-known phenomena that diminishes the recognition range in infrared imagery is atmospheric turb...
We study the applicability of tools developed by the computer vision community for feature learning ...
A new blind image deconvolution technique is developed for atmospheric turbulence deblurring. The or...
Remote sensing applications are generally concerned with observing objects over long distances. When...
We present a deep learning approach for restoring images degraded by atmospheric optical turbulence....
Atmospheric turbulence distorts visual imagery and is always problematic for information interpretat...
Atmospheric turbulence-degraded images in typical practical application scenarios are always disturb...
Although many long-range imaging systems are designed to support extended vision applications, a nat...
In this paper, we compare the performance of multiple turbulence mitigation algorithms to restore im...
M.Phil.With the emergence of deep learning algorithms, there are recent successful achievements in m...
We present a block-matching and Wiener filtering approach to atmospheric turbulence mitigation for l...
In long-range imaging regimes, atmospheric turbulence degrades image quality. In addition to blurrin...
Atmospheric turbulence distorts visual imagery and is always problematic for information interpretat...
Atmospheric turbulence is a well-known phenomenon that diminishes the recognition range in visual an...
Measurements on dynamical systems, experimental or otherwise, are often subjected to inaccuracies ca...
A well-known phenomena that diminishes the recognition range in infrared imagery is atmospheric turb...
We study the applicability of tools developed by the computer vision community for feature learning ...
A new blind image deconvolution technique is developed for atmospheric turbulence deblurring. The or...
Remote sensing applications are generally concerned with observing objects over long distances. When...