Terahertz Deep Learning Super Resolution Imaging Training on Sinogram

Author(s):  
Zhao-Hong Tu ◽  
Yi-Chun Hung ◽  
Shang-Hua Yang
Author(s):  
Anand Deshpande ◽  
Prashant P. Patavardhan ◽  
Vania V. Estrela ◽  
Navid Razmjooy ◽  
Jude Hemanth

2021 ◽  
Vol 7 (1) ◽  
Author(s):  
Jaimyun Jung ◽  
Juwon Na ◽  
Hyung Keun Park ◽  
Jeong Min Park ◽  
Gyuwon Kim ◽  
...  

AbstractThe digitized format of microstructures, or digital microstructures, plays a crucial role in modern-day materials research. Unfortunately, the acquisition of digital microstructures through experimental means can be unsuccessful in delivering sufficient resolution that is necessary to capture all relevant geometric features of the microstructures. The resolution-sensitive microstructural features overlooked due to insufficient resolution may limit one’s ability to conduct a thorough microstructure characterization and material behavior analysis such as mechanical analysis based on numerical modeling. Here, a highly efficient super-resolution imaging based on deep learning is developed using a deep super-resolution residual network to super-resolved low-resolution (LR) microstructure data for microstructure characterization and finite element (FE) mechanical analysis. Microstructure characterization and FE model based mechanical analysis using the super-resolved microstructure data not only proved to be as accurate as those based on high-resolution (HR) data but also provided insights on local microstructural features such as grain boundary normal and local stress distribution, which can be only partially considered or entirely disregarded in LR data-based analysis.


2021 ◽  
Author(s):  
Yun-Qing Tang ◽  
Cai-Wei Zhou ◽  
Hui-Wen Hao ◽  
Yu-Jie Sun

Author(s):  
Conor C. Horgan ◽  
Magnus Jensen ◽  
Anika Nagelkerke ◽  
Jean-Philippe St-Pierre ◽  
Tom Vercauteren ◽  
...  

2021 ◽  
Author(s):  
Linjing Fang ◽  
Fred Monroe ◽  
Sammy Weiser Novak ◽  
Lyndsey Kirk ◽  
Cara R. Schiavon ◽  
...  

2019 ◽  
Author(s):  
Wen Jun Xie ◽  
Yifeng Qi ◽  
Bin Zhang

Genome organization is critical for setting up the spatial environment of gene transcription, and substantial progress has been made towards its high-resolution characterization. The underlying molecular mechanism for its establishment is much less understood. We applied a deep-learning approach, variational autoencoder (VAE), to analyze the fluctuation and heterogeneity of chromatin structures revealed by single-cell super-resolution imaging and to identify a reaction coordinate for chromatin folding. This coordinate monitors the progression of topologically associating domain (TAD) formation and connects the seemingly random structures observed in individual cohesin-depleted cells as intermediate states along the folding pathway. Analysis of the folding landscape derived from VAE suggests that well-folded structures similar to those found in wild-type cells remain energetically favorable in cohesin-depleted cells. The interaction energies, however, are not strong enough to overcome the entropic penalty, leading to the formation of only partially folded structures and the disappearance of TADs from contact maps upon averaging. Implications of these results for the molecular driving forces of chromatin folding are discussed.


2019 ◽  
Author(s):  
Luhong Jin ◽  
Bei Liu ◽  
Fenqiang Zhao ◽  
Stephen Hahn ◽  
Bowei Dong ◽  
...  

AbstractUsing deep learning to augment structured illumination microscopy (SIM), we obtained a fivefold reduction in the number of raw images required for super-resolution SIM, and generated images under extreme low light conditions (100X fewer photons). We validated the performance of deep neural networks on different cellular structures and achieved multi-color, live-cell super-resolution imaging with greatly reduced photobleaching.


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