Artificial intelligence has recently been widely used in computational imaging. The deep neural network (DNN) improves the signal-to-noise ratio of the retrieved images, whose quality is otherwise corrupted due to the low sampling ratio or noisy environments. This work proposes a new computational imaging scheme based on the sequence transduction mechanism with the transformer network. The simulation database assists the network in achieving signal translation ability. The experimental single-pixel detector's signal will be `translated' into a 2D image in an end-to-end manner. High-quality images with no background noise can be retrieved at a sampling ratio as low as 2%. The illumination patterns can be either well-designed speckle patterns...
We present an experimental comparison between different iterative ghost imaging algorithms. Our expe...
Iterative neural networks (INN) are rapidly gaining attention for solving inverse problems in imagin...
Differentiable simulations of optical systems can be combined with deep learning-based reconstructio...
Since their inception in the 1930–1960s, the research disciplines of computational imaging and machi...
We propose a deep learning computational ghost imaging (CGI) scheme to achieve sub-Nyquist and high-...
Classical ghost imaging is a new paradigm in imaging where the image of an object is not measured di...
Computational ghost imaging generally requires a large number of pattern illumination to obtain a hi...
Benefit from the promising features of second-order correlation, ghost imaging (GI) has received ext...
The ability to discover new transients via image differencing without direct human intervention is a...
Computational ghost imaging (CGI) enables an image to be recorded using a single-pixel detector. The...
Imaging through diffusive media is a challenging problem, where the existing solutions heavily rely ...
X-ray tomography is capable of imaging the interior of objects in three dimensions non-invasively, w...
Computational imaging system design involves the joint optimization of hardware and software to deli...
Searches for counterparts to multimessenger events with optical imagers use difference imaging to de...
Funding Australian Research Council (DE200100074, DP190101058); China Scholarship Council (201607950...
We present an experimental comparison between different iterative ghost imaging algorithms. Our expe...
Iterative neural networks (INN) are rapidly gaining attention for solving inverse problems in imagin...
Differentiable simulations of optical systems can be combined with deep learning-based reconstructio...
Since their inception in the 1930–1960s, the research disciplines of computational imaging and machi...
We propose a deep learning computational ghost imaging (CGI) scheme to achieve sub-Nyquist and high-...
Classical ghost imaging is a new paradigm in imaging where the image of an object is not measured di...
Computational ghost imaging generally requires a large number of pattern illumination to obtain a hi...
Benefit from the promising features of second-order correlation, ghost imaging (GI) has received ext...
The ability to discover new transients via image differencing without direct human intervention is a...
Computational ghost imaging (CGI) enables an image to be recorded using a single-pixel detector. The...
Imaging through diffusive media is a challenging problem, where the existing solutions heavily rely ...
X-ray tomography is capable of imaging the interior of objects in three dimensions non-invasively, w...
Computational imaging system design involves the joint optimization of hardware and software to deli...
Searches for counterparts to multimessenger events with optical imagers use difference imaging to de...
Funding Australian Research Council (DE200100074, DP190101058); China Scholarship Council (201607950...
We present an experimental comparison between different iterative ghost imaging algorithms. Our expe...
Iterative neural networks (INN) are rapidly gaining attention for solving inverse problems in imagin...
Differentiable simulations of optical systems can be combined with deep learning-based reconstructio...