CVOCJan 30, 2014

Video Compressive Sensing for Dynamic MRI

arXiv:1401.7715v2
Originality Incremental advance
AI Analysis

This work addresses faster image acquisition for dynamic MRI, which is incremental as it builds on prior video compressive sensing models.

The paper tackles accelerating dynamic MRI acquisition by proposing a video compressive sensing framework called kt-CSLDS, which achieves the best reconstruction accuracy with the least computational time compared to existing algorithms.

We present a video compressive sensing framework, termed kt-CSLDS, to accelerate the image acquisition process of dynamic magnetic resonance imaging (MRI). We are inspired by a state-of-the-art model for video compressive sensing that utilizes a linear dynamical system (LDS) to model the motion manifold. Given compressive measurements, the state sequence of an LDS can be first estimated using system identification techniques. We then reconstruct the observation matrix using a joint structured sparsity assumption. In particular, we minimize an objective function with a mixture of wavelet sparsity and joint sparsity within the observation matrix. We derive an efficient convex optimization algorithm through alternating direction method of multipliers (ADMM), and provide a theoretical guarantee for global convergence. We demonstrate the performance of our approach for video compressive sensing, in terms of reconstruction accuracy. We also investigate the impact of various sampling strategies. We apply this framework to accelerate the acquisition process of dynamic MRI and show it achieves the best reconstruction accuracy with the least computational time compared with existing algorithms in the literature.

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