Author:
Cheng 程 Xiaoyu 晓昱,Xie 解 Chenxue 晨雪,Liu 刘 Yulun 宇伦,Bai 白 Ruixue 瑞雪,Xiao 肖 Nanhai 南海,Ren 任 Yanbo 琰博,Zhang 张 Xilin 喜林,Ma 马 Hui 惠,Jiang 蒋 Chongyun 崇云
Abstract
Mechanically cleaved two-dimensional materials are random in size and thickness. Recognizing atomically thin flakes by human experts is inefficient and unsuitable for scalable production. Deep learning algorithms have been adopted as an alternative, nevertheless a major challenge is a lack of sufficient actual training images. Here we report the generation of synthetic two-dimensional materials images using StyleGAN3 to complement the dataset. DeepLabv3Plus network is trained with the synthetic images which reduces overfitting and improves recognition accuracy to over 90%. A semi-supervisory technique for labeling images is introduced to reduce manual efforts. The sharper edges recognized by this method facilitate material stacking with precise edge alignment, which benefits exploring novel properties of layered-material devices that crucially depend on the interlayer twist-angle. This feasible and efficient method allows for the rapid and high-quality manufacturing of atomically thin materials and devices.
Cited by
1 articles.
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