Recurrent generative adversarial neural networks for compressive imaging

M. Mardani, E. Gong, Joseph Y. Cheng, J. Pauly, L. Xing
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引用次数: 11

Abstract

Recovering images from highly undersampled measurements has a wide range of applications across imaging sciences. State-of-the-art analytics however are not aware of the image perceptual quality, and demand iterative algorithms that incur significant computational overhead. To sidestep these hurdles, this paper brings forth a novel compressive imaging framework using deep neural networks that approximates a low-dimensional manifold of images using generative adversarial networks. To ensure the images are consistent with the measurements a recurrent GAN (RGAN) architecture is deployed that consists of multiple alternative blocks of generator networks and affine projection, which is then followed by a discriminator network to score the perceptual quality of the generated images. A deep residual network with skip connections is used for the generator, while the discriminator is a multilayer perceptron. Experiments performed with real-world contrast enhanced MRI data corroborate the diagnostic quality of the retrieved images relative to state-of-the-art CS schemes. In addition, it achieves about two-orders of magnitude faster reconstruction.
用于压缩成像的循环生成对抗神经网络
从高度欠采样测量中恢复图像在成像科学中具有广泛的应用。然而,最先进的分析并没有意识到图像的感知质量,并且需要迭代算法,这导致了大量的计算开销。为了避开这些障碍,本文提出了一种新的压缩成像框架,该框架使用深度神经网络近似使用生成对抗网络的低维图像流形。为了确保图像与测量结果一致,部署了一个循环GAN (RGAN)架构,该架构由多个可选的生成器网络和仿射投影块组成,然后由鉴别器网络对生成图像的感知质量进行评分。发生器采用带跳跃连接的深度残差网络,鉴别器采用多层感知器。用真实世界对比增强MRI数据进行的实验证实了相对于最先进的CS方案检索图像的诊断质量。此外,它实现了大约两个数量级的重建速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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