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Dual Channel Pulse Coupled Neural Network Algorithm for Fusion of Multimodality Brain Images with Quality Analysis

机译:双通道脉冲耦合神经网络融合多模态脑图像并进行质量分析

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Background : In the review of medical imaging techniques, an important fact that emerged is that radiologists and physicians still are in a need of high-resolution medical images with complementary information from different modalities to ensure efficient analysis. This requirement should have been sorted out using fusion techniques with the fused image being used in image-guided surgery, image-guided radiotherapy and non-invasive diagnosis. Aim : This paper focuses on Dual Channel Pulse Coupled Neural Network (PCNN) Algorithm for fusion of multimodality brain images and the fused image is further analyzed using subjective (human perception) and objective (statistical) measures for the quality analysis. Material and Methods : The modalities used in fusion are CT, MRI with subtypes T1/T2/PD/GAD, PET and SPECT, since the information from each modality is complementary to one another. The objective measures selected for evaluation of fused image were: Information Entropy (IE) - image quality, Mutual Information (MI) – deviation in fused to the source images and Signal to Noise Ratio (SNR) – noise level, for analysis. Eight sets of brain images with different modalities (T2 with T1, T2 with CT, PD with T2, PD with GAD, T2 with GAD, T2 with SPECT-Tc, T2 with SPECT-Ti, T2 with PET) are chosen for experimental purpose and the proposed technique is compared with existing fusion methods such as the Average method, the Contrast pyramid, the Shift Invariant Discrete Wavelet Transform (SIDWT) with Harr and the Morphological pyramid, using the selected measures to ascertain relative performance. Results : The IE value and SNR value of the fused image derived from dual channel PCNN is higher than other fusion methods, shows that the quality is better with less noise. Conclusion : The fused image resulting from the proposed method retains the contrast, shape and texture as in source images without false information or information loss.
机译:背景:在医学成像技术的回顾中,出现的一个重要事实是放射科医生和医生仍然需要高分辨率的医学图像以及来自不同方式的补充信息以确保有效的分析。应该使用融合技术来解决此要求,并且融合图像已用于图像引导手术,图像引导放射治疗和非侵入性诊断中。目的:本文重点研究用于多模态大脑图像融合的双通道脉冲耦合神经网络(PCNN)算法,并使用主观(人类感知)和客观(统计)措施对融合后的图像进行进一步分析,以进行质量分析。材料和方法:融合中使用的方式为CT,MRI,T1 / T2 / PD / GAD,PET和SPECT亚型,因为来自每种方式的信息是相互补充的。为评估融合图像而选择的客观指标为:信息熵(IE)-图像质量,互信息(MI)-融合到源图像的偏差以及信噪比(SNR)-噪声水平,以进行分析。实验目的选择八组不同模式的脑图像(T2与T1,T2与CT,PD与T2,PD与GAD,T2与GAD,T2与SPECT-Tc,T2与SPECT-Ti,T2与PET)用于实验目的并将所提出的技术与现有的融合方法(例如“平均”方法,“对比度金字塔”,带有Harr的位移不变离散小波变换(SIDWT)和“形态金字塔”)进行比较,并使用选定的措施来确定相对性能。结果:双通道PCNN融合图像的IE值和SNR值均高于其他融合方法,表明图像质量较好,噪声较小。结论:所提出的方法产生的融合图像保留了源图像中的对比度,形状和纹理,而没有虚假信息或信息丢失。

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