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High-resolution reconstruction of human brain MRI image based on local polynomial regression

机译:基于局部多项式回归的高分辨率人脑MRI图像重建

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This paper introduces a new local polynomial regression (LPR)-based high-resolution image reconstruction method for human brain magnetic resonance images. In LPR, the image pixels are modeled locally by a polynomial using least-squares (LS) criterion with a kernel having a certain bandwidth matrix. Steering kernels with local orientation are used in LPR to adapt better to local characteristics of images. Furthermore, a refined intersection of confidence intervals (RICI) adaptive scale selector is adopted to select the scale of the steering kernels. The resulting steering-kernel-based LPR with RICI (SK-LPR-RICI) method is applied to reconstruct a high-resolution brain MRI image from a set of low-resolution MRI images. Simulation results show that the proposed SK-LPR-RICI method can effectively improve the image resolution and peak signal-to-noise ratio.
机译:本文介绍了一种基于局部多项式回归(LPR)的高分辨率图像重建方法,用于人脑磁共振图像。在LPR中,使用具有最小带宽矩阵的核,使用最小二乘(LS)准则通过多项式对图像像素进行局部建模。 LPR中使用具有局部方向的转向内核,以更好地适应图像的局部特征。此外,采用改进的置信区间相交(RICI)自适应比例选择器来选择操纵核的比例。所得基于RICI的基于转向核的LPR(SK-LPR-RICI)方法应用于从一组低分辨率MRI图像中重建高分辨率脑MRI图像。仿真结果表明,所提出的SK-LPR-RICI方法可以有效提高图像分辨率和峰值信噪比。

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