Singh Karamjeet, Ranade Sukhjeet Kaur, Singh Chandan
Department of Computer Science, Punjabi University, Patiala-147002, India..
Department of Computer Science, Punjabi University, Patiala-147002, India.
Comput Methods Programs Biomed. 2017 Sep;148:55-69. doi: 10.1016/j.cmpb.2017.06.009. Epub 2017 Jun 23.
Medical images are contaminated by multiplicative speckle noise which significantly reduce the contrast of ultrasound images and creates a negative effect on various image interpretation tasks. In this paper, we proposed a hybrid denoising approach which collaborate the both local and nonlocal information in an efficient manner. The proposed hybrid algorithm consist of three stages in which at first stage the use of local statistics in the form of guided filter is used to reduce the effect of speckle noise initially. Then, an improved speckle reducing bilateral filter (SRBF) is developed to further reduce the speckle noise from the medical images. Finally, to reconstruct the diffused edges we have used the efficient post-processing technique which jointly considered the advantages of both bilateral and nonlocal mean (NLM) filter for the attenuation of speckle noise efficiently.
The performance of proposed hybrid algorithm is evaluated on synthetic, simulated and real ultrasound images. The experiments conducted on various test images demonstrate that our proposed hybrid approach outperforms the various traditional speckle reduction approaches included recently proposed NLM and optimized Bayesian-based NLM.
The results of various quantitative, qualitative measures and by visual inspection of denoise synthetic and real ultrasound images demonstrate that the proposed hybrid algorithm have strong denoising capability and able to preserve the fine image details such as edge of a lesion better than previously developed methods for speckle noise reduction.
The denoising and edge preserving capability of hybrid algorithm is far better than existing traditional and recently proposed speckle reduction (SR) filters. The success of proposed algorithm would help in building the lay foundation for inventing the hybrid algorithms for denoising of ultrasound images.
医学图像受到乘性散斑噪声的污染,这显著降低了超声图像的对比度,并对各种图像解读任务产生负面影响。在本文中,我们提出了一种混合去噪方法,该方法能有效地结合局部和非局部信息。所提出的混合算法包括三个阶段,在第一阶段,使用引导滤波器形式的局部统计信息来初步降低散斑噪声的影响。然后,开发一种改进的去斑双边滤波器(SRBF)以进一步降低医学图像中的散斑噪声。最后,为了重建扩散的边缘,我们使用了高效的后处理技术,该技术综合考虑了双边滤波器和非局部均值(NLM)滤波器的优点,以有效地衰减散斑噪声。
在所提出的混合算法的性能在合成、模拟和真实超声图像上进行评估。在各种测试图像上进行的实验表明,我们提出的混合方法优于各种传统的散斑减少方法,包括最近提出的NLM和基于优化贝叶斯的NLM。
通过对去噪后的合成和真实超声图像进行各种定量、定性测量以及目视检查的结果表明,所提出的混合算法具有很强的去噪能力,并且能够比以前开发的散斑噪声减少方法更好地保留病变边缘等精细图像细节。
混合算法的去噪和边缘保留能力远优于现有的传统和最近提出的散斑减少(SR)滤波器。所提出算法的成功将有助于为发明超声图像去噪的混合算法奠定基础。