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Structure tensor and nonsubsampled shearlet transform based algorithm for CT and MRI image fusion

机译:基于结构张量和非下采样的小波变换的CT和MRI图像融合算法

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Multimodal medical image fusion technique contributes to the reduction of information uncertainty and improves the clinical diagnosis accuracy, the aim of which is to preserve salient image features and detail information of multiple source images to produce a visual enhanced single fused image. In this paper, by taking full advantages of structure tensor and nonsubsampled shearlet transform (NSST) to effectively extract geometric features, a novel unified optimization model is proposed for fusing computed tomography and magnetic resonance imaging images. The proposed model includes two terms, which constrain the gradient and NSST coefficients of the final fused image close to the pre-fused gradient and NSST coefficients. The pre-fused gradient is obtained from weighted structure tensor and the pre-fused NSST coefficients are generated by fusing NSST coefficients of source images with proposed fusion rules. The final fused image can be obtained by solving the constructed optimization problem via conjugate gradient method. Experimental results demonstrate that the proposed approach outperforms the compared multi-resolution and gradient based methods in both visual effects and quantitative assessments.
机译:多峰医学图像融合技术有助于减少信息不确定性并提高临床诊断准确性,其目的是保留多个源图像的显着图像特征和细节信息,以产生视觉增强的单融合图像。本文充分利用结构张量和非下采样的小波变换(NSST)的优势,有效地提取几何特征,提出了一种融合计算机断层扫描和磁共振成像图像的新型统一优化模型。所提出的模型包括两个项,这两个约束将最终融合图像的梯度和NSST系数约束为接近预融合梯度和NSST系数。从加权结构张量获得预融合梯度,并通过将源图像的NSST系数与建议的融合规则融合来生成预融合NSST系数。通过共轭梯度法解决构造的优化问题,可以获得最终的融合图像。实验结果表明,该方法在视觉效果和定量评估方面均优于基于多分辨率和梯度的方法。

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