利用多尺度卷积神经网络的图像超分辨率算法

Image Super-Resolution Algorithm Based on Multi-Scale Convolution Neural Network

  • 摘要: 单幅图像超分辨率问题是典型的图像反问题。近年来深度学习广泛应用于图像超分辨率重建。为提高超分辨率算法的性能,本文利用多尺度和残差训练的思想,提出一种利用多尺度卷积神经网络的图像超分辨率算法。该算法采用多尺度的卷积核及收缩--扩展的网络结构来提取图像多尺度的信息,并在网络结构中使用跳跃连接,以便更好的传递信息并弥补由于使用下采样和上采样而造成的图像细节信息的损失,来提高图像的重建质量。通过与其它算法的对比实验表明了本文算法不仅可以取得更好的性能,并且训练的收敛速度较快。

     

    Abstract: The single image super-resolution problem is a typical image inverse problem. In recent years, deep learning is widely used in image super-resolution. In order to improve the performance of super-resolution algorithms, in this paper, the ideas of multi-scale and residual training are utilized. An image super-resolution algorithm that exploits the multi-scale convolution neural network is proposed. This algorithm exploits the multi-scale convolution kernels and the shrinkage-extension structure to extract image multi-scale information. Skip connection is used in the network structure to improve the quality of image reconstruction,which can transmit information effectively. Moreover, it can compensate for the loss of image details resulting from the use of down-sampling and up-sampling. Compared with other algorithms, the experiments shows that our algorithm can not only achieve better performance, but also has the faster convergence speed.

     

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