计算机科学
工作流程
特征(语言学)
人工智能
传感器融合
高光谱成像
可扩展性
数据采集
异步通信
计算机视觉
模式识别(心理学)
传输(电信)
融合
能量(信号处理)
宽带
限制
特征提取
图像传感器
图像融合
数据处理
空间分析
活动识别
帧(网络)
信号处理
外部数据表示
无线传感器网络
作者
Na Zhang,Decai Ouyang,Haoran Ge,Wei Liu,Xinfeng Tang,Yuan Li,Tianyou Zhai
标识
DOI:10.1002/adma.202520191
摘要
The perception of multidimensional information (e.g., spatial, temporal, and spectral domains) plays a vital role in fields like remote sensing that require high optical resolution and precision. The current approach typically relies on hyperspectral imaging, a band-by-band image acquisition mode with subsequent feature learning and fusion through post-processing algorithms. Such an asynchronous workflow introduces substantial data redundancy, transmission latency, and high energy consumption, limiting its practical deployment. Here, we propose a novel spectral-spatial associated vision sensor that enables the synchronous acquisition and feature fusion of spectral and spatial information at the hardware level. Specifically, scalable highly oriented 2D Bi2Te3 thin films with broadband response are employed for the fabrication of highly uniform device arrays, thus achieving simultaneous capture of spectral-spatial information. The arrays perform enhanced synaptic behavior under multi-wavelength stimuli, with a maximum enhanced ratio of more than 20, facilitating feature discriminability and recognition efficiency. By leveraging such a synergistic enhancement characteristic, an increased recognition accuracy of 91.12% is achieved for topography recognition on the Indian Pines dataset. These findings demonstrate that the proposed vision sensor streamlines hardware-level data acquisition while improving processing efficiency, thereby establishing a new paradigm for multidimensional information fusion, particularly in scenarios with massive data streams.
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