Zero-Shot Autonomous Microscopy for Scalable and Intelligent Characterization of 2D Materials

表征(材料科学) 瓶颈 计算机科学 可扩展性 人工智能 分割 纳米技术 基础(证据) 显微镜 纳米尺度 自动化 稳健性(进化) 图像分割 人机系统 接口 智能决策支持系统 钥匙(锁) 光子学 分布式计算 机器视觉 领域(数学)
作者
H. J. Yang,Ruoyu Yin,Chi Jiang,Yuepeng Hu,Xiaokai Zhu,Xingjian Hu,S. Ananda Kumar,Samantha K. Holmes,Xinghuan Wang,Xiaohua Zhai,Keran Rong,Yaguang Zhu,Tianyi Zhang,Zongyou Yin,Yuan Cao,Haoning Tang,Aaron D. Franklin,Jing Kong,Neil Zhenqiang Gong,Zhichu Ren
出处
期刊:ACS Nano [American Chemical Society]
卷期号:19 (40): 35493-35502 被引量:1
标识
DOI:10.1021/acsnano.5c09057
摘要

Characterization of atomic-scale materials traditionally requires human experts with months to years of specialized training. Even for trained human operators, accurate and reliable characterization remains challenging when examining newly discovered materials such as two-dimensional (2D) structures. This bottleneck drives demand for fully autonomous experimentation systems capable of comprehending research objectives without requiring large training data sets. In this work, we present ATOMIC (Autonomous Technology for Optical Microscopy & Intelligent Characterization), an end-to-end framework that integrates foundation models to enable fully autonomous, zero-shot characterization of 2D materials. Our system integrates the vision foundation model (i.e., Segment Anything Model), large language models (i.e., ChatGPT), unsupervised clustering, and topological analysis to automate microscope control, sample scanning, image segmentation, and intelligent analysis through prompt engineering, eliminating the need for additional training. When analyzing typical MoS2 samples, our approach achieves 99.7% segmentation accuracy for single layer identification, which is equivalent to that of human experts. In addition, the integrated model is able to detect grain boundary slits that are challenging to identify with human eyes. Furthermore, the system retains robust accuracy despite variable conditions, including defocus, color-temperature fluctuations, and exposure variations. It is applicable to a broad spectrum of common 2D materials─including graphene, MoS2, WSe2, SnSe─regardless of whether they were fabricated via top-down or bottom-up methods. This work represents the implementation of foundation models to achieve autonomous analysis, providing a scalable and data-efficient characterization paradigm that transforms the approach to nanoscale materials research.
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