Self-Distillation for Low-Dose CT Image Denoising
ID:276
Submission ID:243 View Protection:ATTENDEE
Updated Time:2021-12-03 10:56:06 Hits:552
Oral Presentation
Start Time:2021-12-15 16:30 (Asia/Shanghai)
Duration:15min
Session:[F] AI-driven technology » [F2] Session 12
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Abstract
As a medical imaging technique, computed tomography (CT) has been widely used in clinical internal visualization, lesion detection and disease tracking. But excessive radiation will cause adverse effects on patients. Lowering the radiation dose can alleviate this problem, but it will lead to the degradation of CT images. In this paper, we propose a knowledge distillation-based denoising method for low-dose CT images. The teacher network trained with higher dose data can generate soft labels for the student network to avoid information loss. The experiments prove that the model trained with our proposed method outperforms the original model in terms of detail preservation.
Keywords
deep learning,denoising,knowledge distillation,low-dose CT,neural network
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