MNIST数据库
计算机科学
傅里叶变换
相位恢复
震级(天文学)
人工神经网络
人工智能
算法
级联
相(物质)
转化(遗传学)
迭代重建
图像(数学)
迭代法
模式识别(心理学)
计算机视觉
数学
物理
数学分析
生物化学
化学
色谱法
天文
量子力学
基因
作者
Tobias Uelwer,T. Hoffmann,Stefan Harmeling
标识
DOI:10.1007/978-3-030-86340-1_24
摘要
Fourier phase retrieval is the problem of recovering an image given only the magnitude of its Fourier transformation. Optimization-based approaches, like the well-established Gerchberg-Saxton or the hybrid input output algorithm, struggle at reconstructing images from magnitudes that are not oversampled. This motivates the application of learned methods, which allow reconstruction from non-oversampled magnitude measurements after a learning phase. In this paper, we want to push the limits of these learned methods by means of a deep neural network cascade that reconstructs the image successively on different resolutions from its non-oversampled Fourier magnitude. We evaluate our method on four different datasets (MNIST, EMNIST, Fashion-MNIST, and KMNIST) and demonstrate that it yields improved performance over other non-iterative methods and optimization-based methods.
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