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Deep BCD-Net Using Identical Encoding-Decoding CNN Structures for Iterative Image Recovery

机译:使用相同的编码-解码CNN结构进行深度BCD-Net迭代图像恢复

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In “extreme” computational imaging that collects extremely undersampled or noisy measurements, obtaining an accurate image within a reasonable computing time is challenging. Incorporating image mapping convolutional neural networks (CNN) into iterative image recovery has great potential to resolve this issue. This paper 1) incorporates image mapping CNN using identical convolutional kernels in both encoders and decoders into a block coordinate descent (BCD) signal recovery method and 2) applies alternating direction method of multipliers to train the aforementioned image mapping CNN. We refer to the proposed recurrent network as BCD-Net using identical encoding-decoding CNN structures. Numerical experiments show that, for a) denoising low signal-to-noise-ratio images and b) extremely undersampled magnetic resonance imaging, the proposed BCD-Net achieves significantly more accurate image recovery, compared to BCD-Net using distinct encoding-decoding structures and/or the conventional image recovery model using both wavelets and total variation.
机译:在“极端”计算成像中收集极度欠采样或嘈杂的测量结果,在合理的计算时间内获得准确的图像非常具有挑战性。将图像映射卷积神经网络(CNN)合并到迭代图像恢复中具有解决此问题的巨大潜力。本文1)将在编码器和解码器中使用相同卷积核的图像映射CNN合并到块坐标下降(BCD)信号恢复方法中,并且2)应用乘法器的交替方向方法来训练上述图像映射CNN。我们使用相同的编解码CNN结构将提出的循环网络称为BCD-Net。数值实验表明,与使用不同的编码-解码结构的BCD-Net相比,对于a)去噪低信噪比图像和b)极度欠采样的磁共振成像,与使用BCD-Net相比,所提出的BCD-Net可以显着更准确地恢复图像。和/或同时使用小波和总变化的常规图像恢复模型。

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