International audienceTomographic reconstruction from noisy projections do not yield adequate results. Mathematically, this tomographic reconstruction represents an ill-posed problem due to information missing caused by the presence of noise. Maximum a posteriori (MAP) or Bayesian reconstruction methods offer possibilities to improve the image quality as compared with analytical methods in particular by introducing a prior to guide the reconstruction and regularize the noise. With an aim to achieve robust utilization of continuity/connectivity information and overcome the heuristic weight update for other nonlocal prior methods, this paper proposes a novel patch similarity based mixture (PSM) prior model for tomographic reconstruction. This...
Statistical image reconstruction methods based on maximum a posteriori (MAP) principle have been dev...
International audienceGauss-Markov-Potts models for images and its use in manyimage restoration, sup...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...
International audienceTomographic reconstruction from noisy projections do not yield adequate result...
We address the problem of Bayesian image reconstruction with a prior that captures the notion of a c...
Maximum a-posteriori (MAP) estimation has the advantage of incorporating prior knowledge in the imag...
Graduation date: 2011Medical imaging technologies play a vital role in early diagnosis of disease by...
We present a joint mixture model for integrating anatomical information in ECT reconstruction. The m...
We apply the joint entropy prior to limited view transmission tomography and demonstrate its sensiti...
International audienceIn order to improve quality of 3D X-ray tomography reconstruction for Non Dest...
International audienceComputed Tomography is a powerful tool to reconstructa volume in 3D and has a ...
Most penalized maximum likelihood methods for tomographic image reconstruction based on Bayes’ law i...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
International audienceThe piecewise constant or homogeneous image reconstruction in the context of X...
Statistical image reconstruction methods based on maximum a posteriori (MAP) principle have been dev...
International audienceGauss-Markov-Potts models for images and its use in manyimage restoration, sup...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...
International audienceTomographic reconstruction from noisy projections do not yield adequate result...
We address the problem of Bayesian image reconstruction with a prior that captures the notion of a c...
Maximum a-posteriori (MAP) estimation has the advantage of incorporating prior knowledge in the imag...
Graduation date: 2011Medical imaging technologies play a vital role in early diagnosis of disease by...
We present a joint mixture model for integrating anatomical information in ECT reconstruction. The m...
We apply the joint entropy prior to limited view transmission tomography and demonstrate its sensiti...
International audienceIn order to improve quality of 3D X-ray tomography reconstruction for Non Dest...
International audienceComputed Tomography is a powerful tool to reconstructa volume in 3D and has a ...
Most penalized maximum likelihood methods for tomographic image reconstruction based on Bayes’ law i...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
International audienceThe piecewise constant or homogeneous image reconstruction in the context of X...
Statistical image reconstruction methods based on maximum a posteriori (MAP) principle have been dev...
International audienceGauss-Markov-Potts models for images and its use in manyimage restoration, sup...
International audienceIterative reconstruction methods in Computed Tomography (CT) are known to prov...