Affiliation:
1. Department of Electronics and Communication Engineering, Istanbul Technical University, Istanbul, Turkey
2. Department of Electrical and Electronics Engineering, Istanbul University-Cerrahpasa, Istanbul, Turkey
Abstract
In Computed Tomography (CT) imaging, one of the most serious concerns has always been ionizing radiation. Several approaches have been proposed to reduce the dose level without compromising the image quality. With the emergence of deep learning, thanks to the increasing availability of computational power and huge datasets, data-driven methods have recently received a lot of attention. Deep learning based methods have also been applied in various ways to address the low-dose CT reconstruction problem. However, the success of these methods largely depends on the availability of labeled data. On the other hand, recent studies showed that training can be done successfully without the need for labeled datasets. In this study, a training scheme was defined to use low-dose projections as their own training targets. The self-supervision principle was applied in the projection domain. The parameters of a denoiser neural network were optimized through self-supervised training. It was shown that our method outperformed both traditional and compressed sensing-based iterative methods, and deep learning based unsupervised methods, in the reconstruction of analytic CT phantoms and human CT images in low-dose CT imaging. Our method’s reconstruction quality is also comparable to a well-known supervised method.
Reference40 articles.
1. Learned primal-dual reconstruction;Adler;IEEE Transactions on Medical Imaging,2018
2. Simultaneous algebraic reconstruction technique (sart): a superior implementation of the art algorithm;Andersen;Ultrasonic Imaging,1984
3. Lose the views: limited angle ct reconstruction via implicit sinogram completion;Anirudh,2018
4. Computed tomography reconstruction using deep image prior and learned reconstruction methods;Baguer;Inverse Problems,2020
5. Noise2Self: blind denoising by self-supervision;Batson,2019
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献