Fast stochastic hierarchical Bayesian map for tomographic imaging

Type: Article

Publication Date: 2017-10-01

Citations: 5

DOI: https://doi.org/10.1109/acssc.2017.8335171

Download PDF

Abstract

Any image recovery algorithm attempts to achieve the highest quality reconstruction in a timely manner. The former can be achieved in several ways, among which are by incorporating Bayesian priors that exploit natural image tendencies to cue in on relevant phenomena. The Hierarchical Bayesian MAP (HB-MAP) is one such approach [1] which is known to produce compelling results albeit at a substantial computational cost. We look to provide further analysis and insights into what makes the HB-MAP work. While retaining the proficient nature of HB-MAP's Type-I estimation, we propose a stochastic approximation-based approach to Type-II estimation. The resulting algorithm, fast stochastic HB-MAP (fsHBMAP), takes dramatically fewer operations while retaining high reconstruction quality. We employ our fsHBMAP scheme towards the problem of tomographic imaging and demonstrate that fsHBMAP furnishes promising results when compared to many competing methods.

Locations

  • arXiv (Cornell University) - View - PDF

Similar Works

Action Title Year Authors
+ Fast Stochastic Hierarchical Bayesian MAP for Tomographic Imaging 2017 John McKay
Raghu G. Raj
Vishal Monga
+ Fast Stochastic Hierarchical Bayesian MAP for Tomographic Imaging 2017 John McKay
Raghu G. Raj
Vishal Monga
+ PDF Chat Hierarchical Bayesian Sparse Image Reconstruction With Application to MRFM 2009 Nicolas Dobigeon
Alfred O. Hero
Jean–Yves Tourneret
+ Bayesian image reconstruction using image‐modeling Gibbs priors 1998 Michael Chan
Gábor T. Herman
Emanuel Levitan
+ Provable Probabilistic Imaging using Score-Based Generative Priors 2023 Yu Sun
Zihui Wu
Yifan Chen
Berthy T. Feng
Katherine L. Bouman
+ SIMBA: Scalable Inversion in Optical Tomography Using Deep Denoising Priors 2020 Zihui Wu
Yu Sun
Alex Matlock
Jiaming Liu
Lei Tian
Ulugbek S. Kamilov
+ PDF Chat A Gaussian Mixture MRF for Model-Based Iterative Reconstruction With Applications to Low-Dose X-Ray CT 2016 Ruoqiao Zhang
Dong Hye Ye
Debashish Pal
Jean‐Baptiste Thibault
K. Sauer
Charles A. Bouman
+ Hypermodels in the Bayesian imaging framework 2008 Daniela Calvetti
Erkki Somersalo
+ Maximum Entropy and Bayesian Approach in Tomographic Image Reconstruction and Restoration 1989 Ali Mohammad‐Djafari
Guy Demoment
+ PDF Chat A probabilistic Bayesian approach to recover R2*$$ {R}_{2\ast } $$ map and phase images for quantitative susceptibility mapping 2022 Shuai Huang
James J. Lah
Jason W. Allen
Deqiang Qiu
+ Bayesian imaging inverse problem with SA-Roundtrip prior via HMC-pCN sampler 2023 Jiayu Qian
Yuanyuan Liu
Jingya Yang
Qingping Zhou
+ High-dimensional Bayesian model selection by proximal nested sampling 2021 Xiaohao Cai
Jason D. McEwen
Marcelo Pereyra
+ PDF Chat Efficient Bayesian Computation for Low-Photon Imaging Problems 2023 Savvas Melidonis
Paul Dobson
Yoann Altmann
Marcelo Pereyra
Konstantinos C. Zygalakis
+ Hierarchical posterior sampling for images and random fields 2004 Paul Fieguth
+ PDF Chat Principled Probabilistic Imaging using Diffusion Models as Plug-and-Play Priors 2024 Zihui Wu
Yu Sun
Yifan Chen
Bingliang Zhang
Yisong Yue
Katherine L. Bouman
+ PDF Chat Bayesian MRI reconstruction with joint uncertainty estimation using diffusion models 2023 Guanxiong Luo
Moritz Blumenthal
Martin Heide
Martin Uecker
+ PDF Chat NPB-REC: A non-parametric Bayesian deep-learning approach for undersampled MRI reconstruction with uncertainty estimation 2024 Samah Khawaled
Moti Freiman
+ PDF Chat Bi-level Guided Diffusion Models for Zero-Shot Medical Imaging Inverse Problems 2024 Hossein Askari
Fred Roosta
Hongfu Sun
+ PDF Chat Bayesian reconstruction of magnetic resonance images using Gaussian processes 2023 Yihong Xu
Chad W. Farris
Stephan W. Anderson
Xin Zhang
Keith A. Brown
+ PDF Chat The Split Gibbs Sampler Revisited: Improvements to Its Algorithmic Structure and Augmented Target Distribution 2023 Marcelo Pereyra
Luis A. Vargas-Mieles
Konstantinos C. Zygalakis