A CT Image Denoising Method Based on Projection Domain Feature
- URL: http://arxiv.org/abs/2412.06135v1
- Date: Mon, 09 Dec 2024 01:37:48 GMT
- Title: A CT Image Denoising Method Based on Projection Domain Feature
- Authors: Mengyu Sun, Dimeng Xia, Shusen Zhao, Weibin Zhang, Yaobin He,
- Abstract summary: Increasing the projection sampling is a better method to address the issue, but it also leads to significant noise in the reconstructed image.
This paper proposed a projection domain denoising algorithm based on the features of the projection domain for this case.
- Score: 6.032795571097756
- License:
- Abstract: In order to improve image quality of projection in industrial applications, generally, a standard method is to increase the current or exposure time, which might cause overexposure of detector units in areas of thin objects or backgrounds. Increasing the projection sampling is a better method to address the issue, but it also leads to significant noise in the reconstructed image. This paper proposed a projection domain denoising algorithm based on the features of the projection domain for this case. This algorithm utilized the similarity of projections of neighboring veiws to reduce image noise quickly and effectively. The availability of the algorithm proposed in this work has been conducted by numerical simulation and practical data experiments.
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