高光谱成像
遥感
分光计
材料科学
光电探测器
小型化
计算机科学
光电子学
和大门
异质结
光学
逻辑门
纳米技术
物理
算法
地质学
作者
Yali Yu,Mianzeng Zhong,Tao Xiong,Jian Yang,Pengwei Hu,Haoran Long,Jinzhou Chen,Kaiyao Xin,Yue‐Yang Liu,Juehan Yang,Jianzhong Qiao,Duanyang Liu,Zhongming Wei
标识
DOI:10.1002/advs.202309781
摘要
Abstract Remote sensing technology, which conventionally employs spectrometers to capture hyperspectral images, allowing for the classification and unmixing based on the reflectance spectrum, has been extensively applied in diverse fields, including environmental monitoring, land resource management, and agriculture. However, miniaturization of remote sensing systems remains a challenge due to the complicated and dispersive optical components of spectrometers. Here, m‐phase GaTe 0.5 Se 0.5 with wide‐spectral photoresponses (250–1064 nm) and stack it with WSe 2 are utilizes to construct a two‐dimensional van der Waals heterojunction (2D‐vdWH), enabling the design of a gate‐tunable wide‐spectral photodetector. By utilizing the multi‐photoresponses under varying gate voltages, high accuracy recognition can be achieved aided by deep learning algorithms without the original hyperspectral reflectance data. The proof‐of‐concept device, featuring dozens of tunable gate voltages, achieves an average classification accuracy of 87.00% on 6 prevalent hyperspectral datasets, which is competitive with the accuracy of 250–1000 nm hyperspectral data (88.72%) and far superior to the accuracy of non‐tunable photoresponse (71.17%). Artificially designed gate‐tunable wide‐spectral 2D‐vdWHs GaTe 0.5 Se 0.5 /WSe 2 ‐based photodetector present a promising pathway for the development of miniaturized and cost‐effective remote sensing classification technology.
科研通智能强力驱动
Strongly Powered by AbleSci AI