Invention Grant
- Patent Title: Denoising medical images by learning sparse image representations with a deep unfolding approach
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Application No.: US15893891Application Date: 2018-02-12
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Publication No.: US10685429B2Publication Date: 2020-06-16
- Inventor: Katrin Mentl , Boris Mailhe , Mariappan S. Nadar
- Applicant: Siemens Healthcare GmbH
- Applicant Address: DE Erlangen
- Assignee: Siemens Healthcare GmbH
- Current Assignee: Siemens Healthcare GmbH
- Current Assignee Address: DE Erlangen
- Main IPC: G06K9/00
- IPC: G06K9/00 ; G06T5/00 ; G06N3/08 ; G06T11/00

Abstract:
The present embodiments relate to denoising medical images. By way of introduction, the present embodiments described below include apparatuses and methods for machine learning sparse image representations with deep unfolding and deploying the machine learnt network to denoise medical images. Iterative thresholding is performed using a deep neural network by training each layer of the network as an iteration of an iterative shrinkage algorithm. The deep neural network is randomly initialized and trained independently with a patch-based approach to learn sparse image representations for denoising image data. The different layers of the deep neural network are unfolded into a feed-forward network trained end-to-end.
Public/Granted literature
- US20180240219A1 DENOISING MEDICAL IMAGES BY LEARNING SPARSE IMAGE REPRESENTATIONS WITH A DEEP UNFOLDING APPROACH Public/Granted day:2018-08-23
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