Litcius/Paper detail

J-MoDL: Joint Model-Based Deep Learning for Optimized Sampling and Reconstruction

Hemant Kumar Aggarwal, Mathews Jacob

2020IEEE Journal of Selected Topics in Signal Processing109 citationsDOIOpen Access PDF

Abstract

Modern MRI schemes, which rely on compressed sensing or deep learning algorithms to recover MRI data from undersampled multichannel Fourier measurements, are widely used to reduce the scan time. The image quality of these approaches is heavily dependent on the sampling pattern. We introduce a continuous strategy to optimize the sampling pattern and the network parameters jointly. We use a multichannel forward model, consisting of a non-uniform Fourier transform with continuously defined sampling locations, to realize the data consistency block within a model-based deep learning image reconstruction scheme. This approach facilitates the joint and continuous optimization of the sampling pattern and the CNN parameters to improve image quality. We observe that the joint optimization of the sampling patterns and the reconstruction module significantly improves the performance of most deep learning reconstruction algorithms. The source code is available at https://github.com/hkaggarwal/J-MoDL.

Topics & Concepts

Computer scienceIterative reconstructionSampling (signal processing)Joint (building)Artificial intelligenceData consistencyDeep learningCompressed sensingBlock (permutation group theory)Fourier transformAlgorithmImage qualityConsistency (knowledge bases)Pattern recognition (psychology)Computer visionImage (mathematics)MathematicsOperating systemFilter (signal processing)GeometryEngineeringMathematical analysisArchitectural engineeringAdvanced MRI Techniques and ApplicationsMedical Imaging Techniques and ApplicationsSparse and Compressive Sensing Techniques