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Super-resolution of the Undersampled and Subpixel Shifted Image Sequence by a Neural Network

机译:神经网络对欠采样和亚像素移位图像序列的超分辨率

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Numerous approaches to super-resolution (SR) of sequentially observed images (image sequence) of low resolution (LR) have been presented in the past two decades. However, neural network methods are almost ignored for solving SR problems. This is because the SR problem traditionally has been regarded as the optimization of an ill-posed large set of linear equations. A designed neural network based on this has a large number of neurons, thereby requiring a long learning time. Also, the deduced cost function is overly complex. These defects limit applications of a neural network to an SR problem. We think that the underlying meaning of the SR problem should refer to super-resolving an imaging system by image sequence observation, instead of merely improving the image sequence itself. SR can be regarded as a pattern mapping from LR to SR images. The parameters of the pattern mapping can be learned from the imaging process of the image sequence. This article presents a neural network for SR based on learning from the imaging process of the image sequence. In order to speed up the convergence, we employ vector mapping to train the neural network. A mapping vector is composed of some neighbor subpixels. Such a well-trained neural network has powerful generalization ability so that it can be used directly to estimate the SR image of the other image sequences without learning again. Our simulations show the effectiveness of the proposed neural network.
机译:在过去的二十年中,已经提出了许多对低分辨率(LR)顺序观察的图像(图像序列)进行超分辨率(SR)的方法。然而,解决SR问题的神经网络方法几乎被忽略了。这是因为传统上将SR问题视为对不适定的大量线性方程组的优化。基于此的设计的神经网络具有大量的神经元,因此需要较长的学习时间。而且,推导的成本函数过于复杂。这些缺陷将神经网络的应用限制为SR问题。我们认为,SR问题的基本含义应该是通过图像序列观察来超分辨成像系统,而不是仅仅改善图像序列本身。 SR可以看作是从LR到SR图像的图案映射。可以从图像序列的成像过程中学习模式映射的参数。本文基于对图像序列成像过程的学习,提出了一种用于SR的神经网络。为了加快收敛速度​​,我们采用矢量映射训练神经网络。映射向量由一些相邻的子像素组成。这种训练有素的神经网络具有强大的泛化能力,因此可以直接用于估计其他图像序列的SR图像,而无需再次学习。我们的仿真表明了所提出的神经网络的有效性。

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