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Consequently, the high-frequency sub-bands of both PET and MRI images are fused by using the optimal weighted average fusion, in which the weight factor is obtained optimally by the MWSA algorithm. Similarly, the low-frequency sub-bands of both medical images are combined by sparse fusion technique. Finally, both the resultant fused images are subjected to Inverse Non-Subsampled Contourlet Transform (INSCT) to get desired fused images. 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引用次数: 0
摘要
摘要多模态医学图像融合(MMIF)受到图像质量差的影响,导致提取的特征效率低下。本工作的主要目的是利用MMIF方法有效地融合PET和MRI医学图像中的各种平面。首先,从标准数据集聚合包含PET和MRI图像轴向面的样本图像。然后,将采集到的图像进行分解,并通过最优非下采样Contourlet变换(ONSCT)完成分解。NSCT中的参数使用改进的水黾算法(Modified Water Strider Algorithm, MWSA)进行优化。对图像进行分解后,将其分割为高频子带和低频子带两个子带。因此,采用最优加权平均融合方法对PET和MRI图像的高频子带进行融合,其中权重因子通过MWSA算法得到最优。同样,采用稀疏融合技术对两幅医学图像的低频子带进行合并。最后,对得到的融合图像进行反非下采样Contourlet变换(INSCT),得到所需的融合图像。实验结果表明,该模型有效地融合了图像,提高了图像与轴向平面的相似度。关键词:医学图像融合改进水黾算法磁共振成像最优非下采样轮廓波变换最优加权平均融合披露声明作者未报告潜在利益冲突。
Multimodality medical image fusion analysis with multi-plane features of PET and MRI images using ONSCT
ABSTRACTThe Multimodal Medical Image Fusion (MMIF) is affected by poor image quality, which leads to the extraction of inefficient features. The main intent of this work is to fuse various planes in the PET and MRI medical images efficiently using the MMIF approach. Initially, the sample images containing the axial plane of PET and MRI images are aggregated from standard datasets. Then, the collected images are employed for the decomposition process, which is accomplished via Optimal Non-Subsampled Contourlet Transform (ONSCT). The parameters in the NSCT are optimized using the Modified Water Strider Algorithm (MWSA. Once the images are decomposed, it is segmented into two sub-bands as high frequency and low-frequency sub-bands. Consequently, the high-frequency sub-bands of both PET and MRI images are fused by using the optimal weighted average fusion, in which the weight factor is obtained optimally by the MWSA algorithm. Similarly, the low-frequency sub-bands of both medical images are combined by sparse fusion technique. Finally, both the resultant fused images are subjected to Inverse Non-Subsampled Contourlet Transform (INSCT) to get desired fused images. The experimental findings suggest that the proposed model has effectively fused the images, and it also enhances the similarity score with axial planes.KEYWORDS: Medical image fusionmodified water strider algorithmmagnetic resonance imagingoptimal non-subsampled contourlet transforoptimal weighted average fusion Disclosure statementNo potential conflict of interest was reported by the author(s).
期刊介绍:
Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization is an international journal whose main goals are to promote solutions of excellence for both imaging and visualization of biomedical data, and establish links among researchers, clinicians, the medical technology sector and end-users. The journal provides a comprehensive forum for discussion of the current state-of-the-art in the scientific fields related to imaging and visualization, including, but not limited to: Applications of Imaging and Visualization Computational Bio- imaging and Visualization Computer Aided Diagnosis, Surgery, Therapy and Treatment Data Processing and Analysis Devices for Imaging and Visualization Grid and High Performance Computing for Imaging and Visualization Human Perception in Imaging and Visualization Image Processing and Analysis Image-based Geometric Modelling Imaging and Visualization in Biomechanics Imaging and Visualization in Biomedical Engineering Medical Clinics Medical Imaging and Visualization Multi-modal Imaging and Visualization Multiscale Imaging and Visualization Scientific Visualization Software Development for Imaging and Visualization Telemedicine Systems and Applications Virtual Reality Visual Data Mining and Knowledge Discovery.