42 results on '"Zeng, Dong"'
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2. Unpaired learning with a data-dependent noise-generative model for low-dose CT sinogram restoration
3. Noise-conscious explicit weighting network for robust low-dose CT imaging
4. Dual-domain modulation for high-performance multi-geometry low-dose CT image reconstruction
5. Robust multi-institution low-dose CT imaging with semi-supervised federated learning network
6. Self-attention network for weak-supervised learning multi-material decomposition in dual energy CT
7. Adaptive semi-supervised learning material estimation network in dual-energy CT
8. Deep learning-based “All-in-One” combined visualization strategy for disease screening in CT imaging
9. Bayesian ensemble learning with denoiser pool for low-dose CT reconstruction
10. Semi-centralized federated learning network for low-dose CT imaging
11. Full-spectrum-knowledge-aware unsupervised network for photon-counting CT imaging
12. Self-supervised nonlocal spectral similarity induced material decomposition network for dual-energy CT
13. Statistical iteration reconstruction based on Gaussian mixture model for photon-counting CT
14. Dual domain closed-loop learning for sparse-view CT reconstruction
15. High resolution cerebral perfusion deconvolution via mixture of Gaussian model based on noise properties
16. Dual-task learning for low-dose CT simulation and denoising
17. Non-local texture learning approach for CT imaging problems using convolutional neural network
18. Semi-supervised noise distribution learning for low-dose CT restoration
19. Semi-supervised learned sinogram restoration network for low-dose CT image reconstruction
20. Combined global and local information for blind CT image quality assessment via deep learning
21. Deep neural networks for low-dose CT image reconstruction via cooperative meta-learning strategy
22. Progressive transfer learning strategy for low-dose CT image reconstruction with limited annotated data
23. Leveraging deep generative model for direct energy-resolving CT imaging via existing energy-integrating CT images
24. Contrast-medium anisotropy-aware tensor total variation model for robust cerebral perfusion CT reconstruction with weak radiation: a preliminary study
25. Low-dose cerebral CT perfusion restoration via non-local convolution neural network: initial study
26. Statistical iterative material image reconstruction with patch based enhanced 3DTV regularization for photon counting CT
27. Multi-energy computed tomography reconstruction using an average image induced low-rank tensor decomposition with spatial-spectral total variation regularization
28. CPCT-LRTDTV: cerebral perfusion CT image restoration via a low rank tensor decomposition with total variation regularization
29. LdCT-Net: low-dose CT image reconstruction strategy driven by a deep dual network
30. Pseudo dual energy CT imaging using deep learning-based framework: basic material estimation
31. Blind CT image quality assessment via deep learning strategy: initial study
32. Iterative image reconstruction for multienergy computed tomography via structure tensor total variation regularization
33. Robust dynamic myocardial perfusion CT deconvolution using adaptive-weighted tensor total variation regularization
34. Assessment of environmental health risk for drinking water sources
35. Iterative image reconstruction for sparse-view CT using normal-dose image induced total variation prior
36. Design and implementation of a data disaster recovery system based on storage-virtualization
37. Research on an IP disaster recovery storage system
38. Observation of aerosol with a compact lidar over Hefei, China
39. Design and implementation of ATCA-based storage network switch prototype
40. An implementation of iSCSI HBA based on Intel IOP80321
41. Network architecture of storage extension next-generation SONET/SDH-based and GFP interface design of SONET/SDH with FPGA
42. The building strategy of iSCSI appliance
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