Limited Parameter Denoising for Low-dose X-ray Computed Tomography Using Deep Reinforcement Learning
Mayank Patwari, Ralf Gutjahr, Rainer Raupach, Andreas Maier

TL;DR
This paper introduces a novel low-dose CT denoising method using bilateral filtering combined with deep reinforcement learning to tune parameters, achieving high-quality results with limited data and fewer parameters.
Contribution
The study proposes a new interpretable CT denoising framework employing reinforcement learning for parameter tuning, outperforming larger deep CNNs with fewer parameters and no artifacts.
Findings
Increased PSNR from 28.53 to 28.93
Increased SSIM from 0.8952 to 0.9204
Outperforms state-of-the-art deep CNNs
Abstract
The use of deep learning has successfully solved several problems in the field of medical imaging. Deep learning has been applied to the CT denoising problem successfully. However, the use of deep learning requires large amounts of data to train deep convolutional networks (CNNs). Moreover, due to large parameter count, such deep CNNs may cause unexpected results. In this study, we introduce a novel CT denoising framework, which has interpretable behaviour, and provides useful results with limited data. We employ bilateral filtering in both the projection and volume domains to remove noise. To account for non-stationary noise, we tune the parameters of the volume for every projection view, and for every volume pixel. The tuning is carried out by two deep CNNs. Due to impracticality of labelling, the two deep CNNs are trained via a Deep-Q reinforcement learning task. The reward…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Image and Signal Denoising Methods
MethodsConvolution · Wasserstein GAN
