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DPW-SDNet: Dual Pixel-Wavelet Domain Deep CNNs for Soft Decoding of JPEG-Compressed Images

机译:DPW-SDNet:双像素 - 小波域深CNN,用于JPEG压缩图像的软解码

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JPEG is one of the widely used lossy compression methods. JPEG-compressed images usually suffer from compression artifacts including blocking and blurring, especially at low bit-rates. Soft decoding is an effective solution to improve the quality of compressed images without changing codec or introducing extra coding bits. Inspired by the excellent performance of the deep convolutional neural networks (CNNs) on both low-level and high-level computer vision problems, we develop a dual pixel-wavelet domain deep CNNs-based soft decoding network for JPEGcompressed images, namely DPW-SDNet. The pixel domain deep network takes the four downsampled versions of the compressed image to form a 4-channel input and outputs a pixel domain prediction, while the wavelet domain deep network uses the 1-level discrete wavelet transformation (DWT) coefficients to form a 4-channel input to produce a DWT domain prediction. The pixel domain and wavelet domain estimates are combined to generate the final soft decoded result. Experimental results demonstrate the superiority of the proposed DPW-SDNet over several state-of-the-art compression artifacts reduction algorithms.
机译:JPEG是广泛使用的有损压缩方法之一。 JPEG压缩图像通常遭受压缩伪像,包括阻塞和模糊,特别是在低比特率。软解码是提高压缩图像的质量而不改变编解码器或引入额外的编码比特的有效解决方案。通过在这两个低层次和高层次的计算机视觉问题的深卷积神经网络(细胞神经网络)的出色表现的鼓舞下,我们开发了JPEGcompressed图像基于细胞神经网络的双像素小波域深软解码网络,即DPW,SDNet 。像素域深网络进行压缩图像的四个下采样版本,以形成4通道的输入和输出像素域预测,而小波域深网络使用的1级离散小波变换(DWT)系数以形成4声道输入以产生一个DWT域预测。像素域和小波域估计进行组合,以产生最终的软解码结果。实验结果表明,所提出的DPW-SDNet的优于状态的最先进的几个压缩伪像减少的算法。

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