| Literature DB >> 32095490 |
Brian E Moore1, Saiprasad Ravishankar1, Raj Rao Nadakuditi1, Jeffrey A Fessler1.
Abstract
Sparsity and low-rank models have been popular for reconstructing images and videos from limited or corrupted measurements. Dictionary or transform learning methods are useful in applications such as denoising, inpainting, and medical image reconstruction. This paper proposes a framework for online (or time-sequential) adaptive reconstruction of dynamic image sequences from linear (typically undersampled) measurements. We model the spatiotemporal patches of the underlying dynamic image sequence as sparse in a dictionary, and we simultaneously estimate the dictionary and the images sequentially from streaming measurements. Multiple constraints on the adapted dictionary are also considered such as a unitary matrix, or low-rank dictionary atoms that provide additional efficiency or robustness. The proposed online algorithms are memory efficient and involve simple updates of the dictionary atoms, sparse coefficients, and images. Numerical experiments demonstrate the usefulness of the proposed methods in inverse problems such as video reconstruction or inpainting from noisy, subsampled pixels, and dynamic magnetic resonance image reconstruction from very limited measurements.Entities:
Keywords: Online methods; dictionary learning; dynamic magnetic resonance imaging; inverse problems; machine learning; sparse representations; video processing
Year: 2020 PMID: 32095490 PMCID: PMC7039536 DOI: 10.1109/tci.2019.2931092
Source DB: PubMed Journal: IEEE Trans Comput Imaging