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Super Resolution Reconstruction of Brain MR Image Based on Convolution Sparse Network

机译:基于卷积稀疏网络的脑MR图像超分辨率重建

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In order to recover high resolution image from their corresponding low-resolution counterparts for MR Images, this paper has proposed a super resolution reconstruction method to recover the low-resolution MR images based on convolution neural network. Based on the proposed network, the convolution operation and non-linear mapping are employed to adapt MR images naturally and leaning the end-to-end mapping from low/high-resolution images. On one hand, convolution operation is natural for image processing; on the other hand, non-linear mapping is helpful to explore the non-linear mapping relationship between low resolution and high resolution images and enhance the sparsity of feature representation. The experiments have demonstrated that the proposed convolution sparse network has the ability to restore the detail information from low resolution MR images and achieve better performance for super resolution reconstruction.
机译:为了从它们的相应低分辨率对应物中恢复高分辨率图像,为MR图像,提出了一种超分辨率重建方法,以恢复基于卷积神经网络的低分辨率MR图像。基于所提出的网络,采用卷积操作和非线性映射来适应自然的MR图像并倾斜从低/高分辨率图像的端到端映射。一方面,卷积操作是自然的图像处理;另一方面,非线性映射有助于探讨低分辨率和高分辨率图像之间的非线性映射关系,并增强特征表示的稀疏性。实验表明,所提出的卷积稀疏网络能够恢复低分辨率MR图像的详细信息,并实现更好的超分辨率重建性能。

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