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Denoising is an indispensable step in processing low-dose X-ray fluoroscopic images that requires development of specialized high-quality algorithms able to operate in near real-time. We address this problem with an efficient deep learning approach based on the process-centric view of traditional iterative thresholding methods. We develop a novel trainable patch-based multiscale framework for sparse image representation. In a computationally efficient way, it allows us to accurately reconstruct important image features on multiple levels of decomposition with patch dictionaries of reduced size and complexity. The flexibility of the chosen machine learning approach allows us to tailor the learned basis for preserving important structural information in the image and noticeably minimize the amount of artifacts. Our denoising results obtained with real clinical data demonstrate significant quality improvement and are computed much faster in comparison with the BM3D algorithm.
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Matviychuk et al. (Wed,) studied this question.
synapsesocial.com/papers/6a16f94183b2be9fec6b9fd5 — DOI: https://doi.org/10.1109/icip.2016.7532775
Yevgen Matviychuk
University of Canterbury
Boris Mailhé
Siemens (United States)
Xiao Chen
Shandong Management University
Siemens Healthcare (Germany)
Siemens Healthcare (United States)
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