光子学
材料科学
自旋(空气动力学)
光电子学
自旋霍尔效应
纳米技术
物理
自旋极化
量子力学
热力学
电子
作者
Kang Zeng,Linzhou Zeng,Peng Yang,Yougang Ke,Zhiwei Huang
标识
DOI:10.1021/acsphotonics.4c01913
摘要
Photonic spin Hall effect (PSHE) has been widely used for sensing tasks; however, its potential appears to be unexplored for the development of a compact yet effective sensor for the classification of liquid chemicals. In this study, a liquid identification scheme is demonstrated based on the recently proposed rotational PSHE, where the weak measurement techniques are no longer required for sensing. A liquid crystal device is fabricated to experimentally validate the rotational PSHE, which provides unique beam patterns for liquid analytes. The collected beam pattern images are used to train an EfficientNet-V2─a fast and efficient deep learning architecture─for classifying the liquid chemicals. Two groups of liquids are identified with accuracy over 99% in the proposed scheme. Moreover, the performances of several deep learning models are compared, demonstrating the fast training speed and high parameter efficiency of the EfficientNet-V2. The proposed approach provides an efficient, accurate, and convenient method for refractive index sensing.
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