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Deep-learning-based semantic image segmentation of graphene field-effect transistors

机译:基于深度学习的石墨烯场效应晶体管的语义图像分割

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Large-scale graphene films are available, which enables the integration of graphene field-effect transistor (G-FET) arrays on chips. However, the transfer characteristics are not identical but diverse over the array. Optical microscopy is widely used to inspect G-FETs, but quantitative evaluation of the optical images is challenging as they are not classified. Here, we implemented a deep-learning-based semantic image segmentation algorithm. Through a neural network, every pixel was assigned to graphene, electrode, substrate, or contaminants, with exceeding a success rate of 80%. We also found that the drain current and transconductance correlated with the coverage of graphene films.
机译:提供大规模的石墨烯薄膜,可以在芯片上集成石墨烯场效应晶体管(G-FET)阵列。但是,传递特性不相同但在阵列上不同。光学显微镜广泛用于检查G-FET,但光学图像的定量评估是挑战,因为它们没有被分类。在这里,我们实施了一种基于深度学习的语义图像分割算法。通过神经网络,将每个像素分配给石墨烯,电极,衬底或污染物,超过80%的成功率。我们还发现,漏极电流和跨导与石墨烯膜的覆盖率相关。

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