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典型文献
In-sensor convolution processing with a bipolar p-n heterojunction
文献摘要:
Image sensing is a critical component of modern machine vision technology development.The traditional silicon-based photodi-odes possess inflexible responsivity and energy band structures that are hard to manipulate by an external field,limiting the sys-tem's ability to process picture data[1].Additionally,existing memristor arrays can do some computation in hardware but can-not directly respond to optical signals,so it is necessary to use additional image sensors to convert optical signals into electrical signals before implementing further signal processing.As a result of their separate data processing units and image sensors,conven-tional image sensing systems face problems such as slow operation and excessive power consumption that can result in transmitting and processing huge amounts of duplicate information[2,3].
文献关键词:
作者姓名:
Mingqiang Liu;Gui-Gen Wang;Zheng Liu
作者机构:
Shenzhen Key Laboratory for Advanced Materials,Harbin Institute of Technology(Shenzhen),Shenzhen 518055,China;School of Materials Science and Engineering,Nanyang Technological University,Singapore 639798,Singapore
引用格式:
[1]Mingqiang Liu;Gui-Gen Wang;Zheng Liu-.In-sensor convolution processing with a bipolar p-n heterojunction)[J].科学通报(英文版),2022(15):1519-1521
A类:
photodi
B类:
In,convolution,processing,bipolar,heterojunction,Image,sensing,critical,component,modern,machine,vision,technology,development,traditional,silicon,odes,possess,inflexible,responsivity,energy,band,structures,that,manipulate,by,external,field,limiting,ability,picture,data,Additionally,existing,memristor,arrays,can,do,some,computation,hardware,but,not,directly,respond,optical,signals,necessary,use,additional,image,sensors,convert,into,electrical,before,implementing,further,result,their,separate,units,conven,systems,face,problems,such,slow,operation,excessive,power,consumption,transmitting,huge,amounts,duplicate,information
AB值:
0.683253
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