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Deep Wavelet Prediction for Image Super-resolution

机译:深度小波预测图像超分辨率

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Recent advances have seen a surge of deep learning approaches for image super-resolution. Invariably, a network, e.g. a deep convolutional neural network (CNN) or auto-encoder is trained to learn the relationship between low and high-resolution image patches. Recognizing that a wavelet transform provides a "coarse" as well as "detail" separation of image content, we design a deep CNN to predict the "missing details" of wavelet coefficients of the low-resolution images to obtain the Super-Resolution (SR) results, which we name Deep Wavelet Super-Resolution (DWSR). Out network is trained in the wavelet domain with four input and output channels respectively. The input comprises of 4 sub-bands of the low-resolution wavelet coefficients and outputs are residuals (missing details) of 4 sub-bands of high-resolution wavelet coefficients. Wavelet coefficients and wavelet residuals are used as input and outputs of our network to further enhance the sparsity of activation maps. A key benefit of such a design is that it greatly reduces the training burden of learning the network that reconstructs low frequency details. The output prediction is added to the input to form the final SR wavelet coefficients. Then the inverse 2d discrete wavelet transformation is applied to transform the predicted details and generate the SR results. We show that DWSR is computationally simpler and yet produces competitive and often better results than state-of-the-art alternatives.
机译:最近的进展已经看到图像超分辨率的深度学习方法。总的来说,网络,例如,培训深度卷积神经网络(CNN)或自动编码器,以学习低分辨率和高分辨率图像斑块之间的关系。识别出小波变换提供“粗略”以及图像内容的“细节”分离,我们设计了一个深的CNN,以预测低分辨率图像的小波系数的“缺失细节”以获得超分辨率(SR )结果,我们命名深小波超分辨率(DWSR)。 OUT网络在小波域中培训,分别具有四个输入和输出通道。输入包括4个低分辨率小波系数的4个子带是高分辨率小波系数的4个子带的残差(缺失细节)。小波系数和小波残差用作我们网络的输入和输出,以进一步增强激活图的稀疏性。这种设计的一个主要好处是它大大降低了学习重建低频率细节的网络的培训负担。将输出预测添加到输入中以形成最终的SR小波系数。然后应用逆2D离散小波变换来改造预测的细节并生成SR结果。我们表明DWSR是更简单的,但竞争且通常更好的结果,而不是最先进的替代品。

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