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MRI/CT fusion based on latent low rank representation and gradient transfer

机译:基于潜在低秩表示和梯度转移的MRI / CT融合

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Medical image fusion mainly focuses on finding better method on combining multi-modal medical images with different characteristics, and which has been playing a significant role on clinical diagnosis and disease treatment. For the fusion of MRI (Magnetic Resonance Imaging) and CT (Computed Tomography), a novel algorithm is proposed in this paper based on LatentLRR (Latent Low Rank Representation) and gradient transfer. LatentLRR is a meaningful tool for separating out detailed information and saliency information. In order to produce saliency information fused result, image statics is used through the corresponding detailed information. For detailed information, it is separated into high frequency parts and low frequency parts by NSCT (Non-Subsampled Contourlet Transform), the former are fused by the method of scale based, and the latter are merged by local energy maxima. To obtain the reconstructed image, it needs to integrate high frequency fused parts and low frequency fused parts into one image by inverse NSCT. Finally, the final image can be given by combining the reconstructed images and saliency information fused result into one image, and for a better visual effect, optimize the final result by gradient transfer. Compared with the state-of-the-art methods on the experiments of ten pair clinical medical images MRI/CT, the proposed algorithm receives a comprehensive advantage in preserving the detailed and gradient information, not only in visual effects but also in objective evaluation. (C) 2019 Elsevier Ltd. All rights reserved.
机译:医学图像融合主要着眼于寻找更好的方法来组合具有不同特征的多模式医学图像,并且在临床诊断和疾病治疗中起着重要的作用。为了融合MRI(磁共振成像)和CT(计算机断层扫描)技术,本文提出了一种基于LatentLRR(潜在低秩表示)和梯度传递的新算法。 LatentLRR是用于分离详细信息和显着性信息的有意义的工具。为了产生显着性信息融合结果,通过相应的详细信息使用图像静态信息。有关详细信息,通过NSCT(非下采样Contourlet变换)将其分为高频部分和低频部分,前者通过基于比例的方法进行融合,后者通过局部能量最大值进行合并。为了获得重建图像,需要通过逆NSCT将高频融合部分和低频融合部分整合到一张图像中。最后,可以通过将重构图像和显着性信息融合的结果组合到一个图像中来给出最终图像,并且为了获得更好的视觉效果,可以通过梯度转移优化最终结果。与十对临床医学图像MRI / CT实验的最新方法相比,该算法在保留详细的梯度信息方面不仅在视觉效果上而且在客观评估方面都具有综合优势。 (C)2019 Elsevier Ltd.保留所有权利。

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