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Medical image fusion based on laws of texture energy measures in stationary wavelet transform domain

机译:基于固定小波变换域的纹理能量测量定律的医学图像融合

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Medical image fusion is widely used in various clinical procedures for the precise diagnosis of a disease. Image fusion procedures are used to assist real-time image-guided surgery. These procedures demand more accuracy and less computational complexity in modern diagnostics. Through the present work, we proposed a novel image fusion method based on stationary wavelet transform (SWT) and texture energy measures (TEMs) to address poor contrast and high-computational complexity issues of fusion outcomes. SWT extracts approximate and detail information of source images. TEMs have the capability to capture various features of the image. These are considered for fusion of approximate information. In addition, the morphological operations are used to refine the fusion process. Datasets consisting of images of seven patients suffering from neurological disorders are used in this study. Quantitative comparison of fusion results with visual information fidelity-based image fusion quality metric, ratio of spatial frequency error, edge information-based image fusion quality metric, and structural similarity index-based image fusion quality metrics proved the superiority. Also, the proposed method is superior in terms of average execution time to state-of-the-art image fusion methods. The proposed work can be extended for fusion of other imaging modalities like fusion of functional image with an anatomical image. Suitability of the fused images by the proposed method for image analysis tasks needs to be studied.
机译:医学图像融合广泛用于各种临床程序,以确保疾病的精确诊断。图像融合程序用于帮助实时图像引导的手术。这些程序在现代诊断中需要更多的准确性和更少的计算复杂性。通过本作本作,我们提出了一种基于固定小波变换(SWT)和纹理能量测量(TEMS)的新型图像融合方法,以解决融合结果的差的对比度和高计算复杂性问题。 SWT提取源图像的​​近似和详细信息。 TEM具有捕获图像的各种特征的功能。这些被认为是融合近似信息。此外,形态学操作用于改进融合过程。本研究使用了由患有神经系统疾病的7名患者的图像组成的数据集。融合结果与基于视觉信息的融合结果的定量比较,空间频率误差,边缘信息的图像融合质量度量的比率,以及基于结构相似性指数的图像融合质量指标证明了优势。此外,所提出的方法在平均执行时间至最先进的图像融合方法方面是优越的。可以扩展所提出的工作,以便融合其他成像模式,如具有解剖图像的功能图像的融合。通过所提出的图像分析任务的方法适用于融合图像的适用性。

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