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An adaptive super-resolution reconstruction for Terahertz image based on MRF Model

机译:基于MRF模型的太赫兹图像的自适应超分辨率重构

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A method that the adaptive super-resolution reconstruction for Terahertz (THz) image based on the Markov random field (MRF) is proposed. The adaptive Gaussian weighting factor based on the Markov prior distribution is applied to the smoothness of the image edge. The gradient-based optimization converges to the optimal solution fast. It simulates the fact Terahertz image to verify the feasibility of the method comparing with the traditional maximum a posteriori (MAP) super-resolution algorithm. The experimental results show that the adaptive Gaussian weighting super-resolution algorithm not only has high super-resolution performance, but also can better maintain the image edge information and reduce the noise of restored images, and get an ideal THz image. An adaptive super-resolution reconstruction method can be used for Terahertz image reconstruction.
机译:提出了一种基于Markov随机场(MRF)的太赫兹(THz)图像的自适应超分辨率重构的方法。 基于马尔可夫的自适应高斯加权系数应用于图像边缘的平滑度。 基于梯度的优化将快速收敛到最佳解决方案。 它模拟了Terahertz图像,以验证与传统最大后验(MAP)超分辨率算法进行比较的方法的可行性。 实验结果表明,自适应高斯加权超分辨率算法不仅具有高超分辨率性能,还可以更好地维护图像边缘信息并降低恢复图像的噪声,并获得理想的THz图像。 自适应超分辨率重建方法可用于太赫兹图像重建。

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