CNN-based Ultrasound Speckle Reduction Using Computed Tomography Dataset
- 주제(키워드) 딥러닝 , 컨볼루셔널 뉴럴 네트워크 , 의료초음파 , 영상처리 , 스페클 , 잡음제거 , Deep-learning , Convolutional neural network , Medical ultrasound , Image processing , Speckle , Noise reduction
- 발행기관 서강대학교 일반대학원
- 지도교수 유양모
- 발행년도 2020
- 학위수여년월 2020. 2
- 학위명 석사
- 학과 및 전공 일반대학원 전자공학과
- UCI I804:11029-000000064710
- 본문언어 영어
- 저작권 서강대학교 논문은 저작권보호를 받습니다.
초록/요약
Effective speckle reduction in ultrasound B-mode imaging is important to enhance the image quality and improve the accuracy in image analysis. Various speckle reduction methods based on a speckle modeling have been extensively proposed for a couple of decades. However, a common limitation of the model-based methods is the requirement of an input-dependent parameter tuning. Thus, most of the methods suffer from over-smoothing, blurring and even generate images with artificial appearance owing to inappropriate selection of the model parameters. Convolutional neural network (CNN) is very promising approach in image processing since a complex and an inaccurate modeling are not required to achieve an objective. However, in ultrasound speckle reduction, in vivo ground-truth data is virtually unavailable as a real ultrasound image always contains a speckle pattern. In this paper, to overcome the limitations of accurate speckle modeling and in vivo data sample, speckle reduction and image enhancement network (SRIE-Net) based on CNN has been proposed using a set of computed tomography (CT) ground-truth and corresponding pseudo B-mode. The performance of SRIE-Net has been compared with oriented speckle reducing anisotropic diffusion (OSRAD), optimized Bayesian non-local mean (OBNLM) and anisotropic diffusion with memory based on speckle statistics (ADMSS) in simulation, phantom and in vivo studies. The results shown that the proposed SRIE-Net enhance the image quality by reducing ultrasound speckle and preserving details, while the classical methods suffer from blurring, over-smoothing and low-performance.
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