Curvempirical Transform for Multimodal fusion of Brain Images

IF 0.6 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Recent Advances in Electrical & Electronic Engineering Pub Date : 2023-04-20 DOI:10.2174/2352096516666230420090225
Shruti Jain, Anupama Jamwal
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Abstract

Medical imaging requires special operating procedures and can cause mis-images that occur when someone is getting imaged, which can lead to inaccurate results Adaptive illustration of the signal is imperative in signal processing. Empirical Wavelet Transform (EWT) is a new-fangled adaptive signal decomposition technique. Brain image fusion understands a dynamic job in medical imaging applications by assisting radiologists in detecting the variation in CT and MR images. This paper presents a fusion of filter banks of CT-MR image modalities of the Brain using the Empirical Curvelet Transform and Hybrid technique. In the hybrid technique filter banks of CT curvelet-MR little wood and CT little wood -MR curvelet were fused. The images were preprocessed using the Top Hat transform technique. The evaluation was performed based on the performance evaluation parameter. PSNR and SSIM are considered performance evaluation parameters It has been observed that the results of fused filter banks using the curvelet technique show remarkable results in terms of PSNR and SSIM. The fused results show 29.10 dB PSNR and 0.819 SSIM. It has been observed that the fusion using only curvelet results in a 47.25% improvement in comparison with CT curvelet-MR little wood and a 42.68% improvement in comparison with CT little wood -MR curvelet. -
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脑图像多模态融合的曲率变换
医学成像需要特殊的操作程序,并且在对某人进行成像时可能导致错误的图像,这可能导致不准确的结果。在信号处理中,信号的自适应说明是必不可少的。经验小波变换(EmpiricalWavelet Transform, EWT)是一种新兴的自适应信号分解技术。通过协助放射科医生检测CT和MR图像的变化,脑图像融合理解了医学成像应用中的动态工作。本文提出了一种基于经验曲线变换和混合技术的脑CT-MR图像模态滤波器组融合方法。在混合滤波技术中,将CT曲线-MR小木滤波组和CT小木-MR曲线滤波组进行融合。采用Top Hat变换技术对图像进行预处理。根据性能评价参数进行评价。PSNR和SSIM被认为是性能评估参数,已经观察到使用曲线技术的融合滤波器组在PSNR和SSIM方面取得了显着的结果。融合后的PSNR为29.10 dB, SSIM为0.819。研究发现,仅使用曲波融合比CT曲波- mr小木融合提高了47.25%,比CT小木- mr曲波融合提高了42.68%
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来源期刊
Recent Advances in Electrical & Electronic Engineering
Recent Advances in Electrical & Electronic Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.70
自引率
16.70%
发文量
101
期刊介绍: Recent Advances in Electrical & Electronic Engineering publishes full-length/mini reviews and research articles, guest edited thematic issues on electrical and electronic engineering and applications. The journal also covers research in fast emerging applications of electrical power supply, electrical systems, power transmission, electromagnetism, motor control process and technologies involved and related to electrical and electronic engineering. The journal is essential reading for all researchers in electrical and electronic engineering science.
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