Department of Physics, Kyung Hee University, Seoul, 02447, South Korea.
Department of Battery-Smart Factory, Korea University, Seoul, 02841, South Korea.
Sci Rep. 2023 Jul 17;13(1):11526. doi: 10.1038/s41598-023-38335-y.
We construct a deep neural network to enhance the resolution of spin structure images formed by spontaneous symmetry breaking in the magnetic systems. Through the deep neural network, an image is expanded to a super-resolution image and reduced to the original image size to be fitted with the input feed image. The network does not require ground truth images in the training process. Therefore, it can be applied when low-resolution images are provided as training datasets, while high-resolution images are not obtainable due to the intrinsic limitation of microscope techniques. To show the usefulness of the network, we train the network with two types of simulated magnetic structure images; one is from self-organized maze patterns made of chiral magnetic structures, and the other is from magnetic domains separated by walls that are topological defects of the system. The network successfully generates high-resolution images highly correlated with the exact solutions in both cases. To investigate the effectiveness and the differences between datasets, we study the network's noise tolerance and compare the networks' reliabilities. The network is applied with experimental data obtained by magneto-optical Kerr effect microscopy and spin-polarized low-energy electron microscopy.
我们构建了一个深度神经网络,以增强由磁系统中自发对称破缺形成的自旋结构图像的分辨率。通过深度神经网络,将图像扩展到超分辨率图像,并将其缩小到原始图像大小,以与输入馈送图像匹配。该网络在训练过程中不需要真实图像。因此,当提供低分辨率图像作为训练数据集时,它可以应用,而由于显微镜技术的固有限制,无法获得高分辨率图像。为了展示该网络的有用性,我们使用两种类型的模拟磁结构图像对网络进行训练;一种是由手性磁结构组成的自组织迷宫图案,另一种是由系统拓扑缺陷壁隔开的磁畴。在这两种情况下,网络都成功地生成了与精确解高度相关的高分辨率图像。为了研究数据集的有效性和差异,我们研究了网络的噪声容忍度并比较了网络的可靠性。该网络应用于通过磁光克尔效应显微镜和自旋极化低能电子显微镜获得的实验数据。