Daubechies复小波变换在多模态医学图像融合中的应用

Rajiv Singh, A. Khare
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引用次数: 3

摘要

由于图像采集设备的不完善,从医疗器械获取的图像对比度较差,容易受到模糊和噪声的影响,需要引起医学图像融合的重视。因此,对医学图像融合技术进行客观评价已成为噪声领域的重要课题。因此,在本工作中,我们提出了基于最大选择和能量的融合规则,用于使用dabechies复小波变换(DCxWT)对噪声多模态医学图像融合的评估。传统的实值小波变换具有位移敏感性,不提供任何相位信息,而DCxWT是位移不变性的,通过虚系数提供相位信息。DCxWT的位移不变性和相位信息的可用性对多模态医学图像的融合非常有用。实验结果表明,本文提出的融合方案适用于多噪声医学图像。此外,所提出的融合方案已在高斯噪声、椒盐噪声和斑点噪声的最大水平下进行了测试。利用融合因子、融合对称性、熵、标准差和边缘信息等指标对融合方案进行客观评价。对两组多模态医学图像进行了基于最大和能量规则的融合,并与基于提升小波变换(LWT)和基于平稳小波变换(SWT)的融合方法进行了比较。将该方法与基于LWT和SWT的不同噪声水平下的融合方法进行了对比分析,结果表明了该方法的优越性。此外,不同融合指标对高斯噪声、盐胡椒噪声和斑点噪声的最大水平的影响图表明了所提出的融合方法对噪声的鲁棒性。
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Objective evaluation of noisy multimodal medical image fusion using Daubechies complex wavelet transform
Medical image fusion needs proper attention as images obtained from medical instruments are of poor contrast and corrupted by blur and noise due to imperfection of image capturing devices. Thus, objective evaluation of medical image fusion techniques has become an important task in noisy domain. Therefore, in the present work, we have proposed maximum selection and energy based fusion rules for the evaluation of noisy multimodal medical image fusion using Daubechies complex wavelet transform (DCxWT). Unlike, traditional real valued wavelet transforms, which suffered from shift sensitivity and did not provide any phase information, DCxWT is shift invariant and provides phase information through its imaginary coefficients. Shift invariance and availability of phase information properties of DCxWT have been found useful for fusion of multimodal medical images. The experiments have been performed over several set of noisy medical images at multiple levels of noise for the proposed fusion scheme. Further, the proposed fusion scheme has been tested up to the maximum level of Gaussian, salt & pepper and speckle noise. Objective evaluation of the proposed fusion scheme is performed with fusion factor, fusion symmetry, entropy, standard deviation and edge information metrics. Results have been shown for two sets of multimodal medical images for the proposed method with maximum and energy based fusion rules, and comparison has been done with Lifting wavelet transform (LWT) and Stationary wavelet transform (SWT) based fusion methods. Comparative analysis of the proposed method with LWT and SWT based fusion methods at different noise levels shows the superiority of the proposed scheme. Moreover, the plots of different fusion metrics against the maximum level of Gaussian, salt & pepper and speckle noise show the robustness of the proposed fusion method against noise.
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