Spectral kernel machines with electrically tunable photodetectors
作者
De-Hui Zhang,Yuhang Li,Jamie Geng,Hyong Min Kim,Marco Ma,Shifan Wang,Inha Kim,Theodorus Jonathan Wijaya,Naoki Higashitarumizu,I. K. M. Reaz Rahman,Dorottya Urmossy,James Bullock,Aydogan Ozcan,Ali Javey
出处
期刊:Science [American Association for the Advancement of Science (AAAS)] 日期:2025-11-27卷期号:390 (6776)
标识
DOI:10.1126/science.ady6571
摘要
Spectral machine vision collects spectral and spatial information as three-dimensional hypercubes and digitally processes them, which causes a data bottleneck, limiting power efficiency, frame rate, and spectral-spatial resolution. This work introduces spectral kernel machines (SKMs) to overcome these bottlenecks. SKM directly compresses spectral analysis through the output photocurrent and learns from example objects to identify and classify new samples in a “sniff-and-seek” mode. We experimentally demonstrated SKMs with electrically tunable bipolar black phosphorus–molybdenum disulfide (bP-MoS 2 ) photodiodes in the near- and mid-infrared band and silicon photoconductors in the visible band, performing versatile intelligent tasks from chemometrics to semiconductor metrology. This architecture consumed substantially less power and was more than an order of magnitude faster than existing solutions for hyperspectral image analysis, defining an intelligent imaging and sensing paradigm with intriguing possibilities.