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An Efficient Max-Min Rule Selection for Lung Image Fusion using Wavelet Energy Based Fuzzy Logic

机译:基于小波能量模糊逻辑的肺图像融合有效的MAX-MIN规则选择

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In this paper, the fusion of lung images using Positron Emission Tomography (PET) and Computed Tomography to identify the cancer part in (CT) images based on Discrete Wavelet Transform (DWT) is presented. The fused lung image is more informative than their individual counterpart and consists of the necessary information to diagnose diseases at the earliest. At first, the PET and CT images are decomposed by DWT, and it produces low and high-frequency subbands. Then Wavelet Energy based Fuzzy Logic (WEFL) is employed to select the MAX-MIN rule for the fusion of low and high-frequency subband coefficients of PET and CT image features to identify cancer parts in lungs. Finally, the fused lung image in low frequency and high-frequency components are combined to reconstruct the image. Results show that the performance of lung image fusion for the identification of the cancer part in CT and PET images.
机译:本文介绍了使用正电子发射断层扫描(PET)和计算断层扫描的肺图像融合,以识别基于离散小波变换(DWT)的(CT)图像中的癌症部分。 融合的肺图像比他们的个人对应物更丰富,并且由最早诊断疾病的必要信息。 首先,PET和CT图像由DWT分解,并产生低频和高频子带。 然后,采用小波能量的模糊逻辑(WEFL)来选择PET和CT图像特征的低频和高频子带系数融合的MAX-MIN规则,以识别肺部的癌症份。 最后,将低频和高频分量中的熔融肺图像组合以重建图像。 结果表明,肺部图像融合对CT和PET图像鉴定癌症部分的性能。

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