Kokil Priyanka, Sudharson S
Department of Electronics and Communication Engineering, Indian Institute of Information Technology, Design and Manufacturing, Kancheepuram, Chennai, 600127, India.
Department of Electronics and Communication Engineering, Indian Institute of Information Technology, Design and Manufacturing, Kancheepuram, Chennai, 600127, India.
Comput Methods Programs Biomed. 2020 Oct;194:105477. doi: 10.1016/j.cmpb.2020.105477. Epub 2020 May 15.
Background and objective Ultrasound is the non-radioactive imaging modality used in the diagnosis of various diseases related to the internal organs of the body. The presence of speckle noise in ultrasound image (UI) is inevitable and may affect resolution and contrast of the image. Existence of the speckle noise degrades the visual evaluation of the image. The despeckling of UI is a desirable pre-processing step in computer-aided UI based diagnosis systems. Methods This paper proposes a novel method for despeckling UIs using pre-trained residual learning network (RLN). Initially, RLN is trained with pristine and its corresponding noisy images in order to achieve a better performance. The developed method chooses a pre-trained RLN for despeckling UIs with less computational resources. But the training procedure of RLN from scratch is computationally demanding. The pre-trained RLN is a blind despeckling approach and does not require any fine tuning and noise level estimation. The presented approach shows superiority in the removal of speckle noise as compared to the existing state-of-art methods. Results To highlight the effectiveness of the proposed method the pristine images from the Waterloo dataset has been considered. The proposed pre-trained RLN based UI despeckling method resulted in a better peak signal to noise ratio (PSNR) and structural similarity index measure (SSIM) at different speckle noise levels. The no-reference image quality approach is adopted to ensure robustness of the established method for real time UI. From results it is obvious that, the performance of the proposed method is superior than the existing methods in terms of naturalness image quality evaluator (NIQE). Conclusions From the experimental results, it is clear that the proposed method outperforms the existing despeckling methods in terms of both artificially added and naturally occurring speckle images.
超声是一种用于诊断与人体内部器官相关的各种疾病的非放射性成像方式。超声图像(UI)中散斑噪声的存在是不可避免的,并且可能会影响图像的分辨率和对比度。散斑噪声的存在会降低图像的视觉评估效果。在基于计算机辅助超声的诊断系统中,对超声图像进行去斑是一个理想的预处理步骤。方法:本文提出了一种使用预训练残差学习网络(RLN)对超声图像进行去斑的新方法。首先,使用原始图像及其对应的噪声图像对RLN进行训练,以获得更好的性能。所开发的方法选择预训练的RLN,以较少的计算资源对超声图像进行去斑。但是从头开始训练RLN的过程在计算上要求很高。预训练的RLN是一种盲去斑方法,不需要任何微调或噪声水平估计。与现有的最先进方法相比,所提出的方法在去除散斑噪声方面表现出优越性。结果:为了突出所提出方法的有效性,考虑了来自滑铁卢数据集的原始图像。所提出的基于预训练RLN的超声图像去斑方法在不同散斑噪声水平下产生了更好的峰值信噪比(PSNR)和结构相似性指数测量值(SSIM)。采用无参考图像质量方法来确保所建立的方法对实时超声图像的鲁棒性。从结果可以明显看出,在所提出的方法在自然图像质量评估器(NIQE)方面的性能优于现有方法。结论:从实验结果可以清楚地看出,所提出的方法在人工添加和自然产生的散斑图像方面均优于现有的去斑方法。