Invention Application
- Patent Title: DEEP NEURAL NETWORK FOR CT METAL ARTIFACT REDUCTION
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Application No.: US16978258Application Date: 2019-03-06
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Publication No.: US20210000438A1Publication Date: 2021-01-07
- Inventor: Ge Wang , Lars Arne Gjesteby , Qingsong Yang , Hongming Shan
- Applicant: RENSSELAER POLYTECHNIC INSTITUTE
- Applicant Address: US NY Troy
- Assignee: RENSSELAER POLYTECHNIC INSTITUTE
- Current Assignee: RENSSELAER POLYTECHNIC INSTITUTE
- Current Assignee Address: US NY Troy
- International Application: PCT/US2019/020916 WO 20190306
- Main IPC: A61B6/00
- IPC: A61B6/00 ; G06N5/04 ; A61B6/03 ; G06T11/00 ; G06N3/08

Abstract:
A deep neural network for metal artifact reduction is described. A method for computed tomography (CT) metal artifact reduction (MAR) includes generating, by a projection completion circuitry, an intermediate CT image data based, at least in part, on input CT projection data. The intermediate CT image data is configured to include relatively fewer artifacts than an uncorrected CT image reconstructed from the input CT projection data. The method further includes generating, by an artificial neural network (ANN), CT output image data based, at least in part, on the intermediate CT image data. The CT output image data is configured to include relatively fewer artifacts compared to the intermediate CT image data. The method may further include generating, by detail image circuitry, detail CT image data based, at least in part, on input CT image data. The CT output image data is generated based, at least in part, on the detail CT image data.
Public/Granted literature
- US11589834B2 Deep neural network for CT metal artifact reduction Public/Granted day:2023-02-28
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