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检索条件"机构=Beijing Key Laboratory of Computational Intelligence and Intelligence System"
3411 条 记 录,以下是1-10 订阅
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A hybrid attention model based on first-order statistical features for smoke recognition
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Science China(Technological Sciences) 2024年 第3期67卷 809-822页
作者: GUO Nan LIU JiaHui DI KeXin GU Ke QIAO JunFei beijing laboratory of Smart Environmental Protection Beijing Key Laboratory of Computational Intelligence and Intelligent SystemBeijing Artificial Intelligence InstituteBeijing 100124China Faculty of Information Technology Beijing University of TechnologyBeijing 100124China
Smoke and fire recognition are of great importance on foreseeing fire disasters and preventing environmental pollution by monitoring the burning process of objects(e.g., straw, fuels). However, since fire images suffe... 详细信息
来源: 维普期刊数据库 维普期刊数据库 同方期刊数据库 同方期刊数据库 评论
Sparse convolutional model with semantic expression for waste electrical appliances recognition
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Science China(Technological Sciences) 2024年 第9期67卷 2881-2893页
作者: HAN HongGui LIU YiMing LI FangYu DU YongPing Faculty of Information Technology Beijing University of TechnologyBeijing 100124China beijing key laboratory of computational intelligence and Intelligent system Beijing 100124China Engineering Research Center of Digital Community Ministry of EducationBeijing 100124China beijing Artificial intelligence Institute and beijing laboratory for Intelligent Environmental Protection Beijing 100124China
Deep neural networks play an important role in the recognition of waste electrical appliances. However, deep neural network components still lack reliability in decision-making features. To address this problem, a spa... 详细信息
来源: 维普期刊数据库 维普期刊数据库 同方期刊数据库 同方期刊数据库 评论
Transfer Learning in Motor Imagery Brain Computer Interface: A Review
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Journal of Shanghai Jiaotong university(Science) 2024年 第1期29卷 37-59页
作者: 李明爱 许冬芹 Faculty of Information Technology Beijing University of TechnologyBeijing 100124China beijing key laboratory of computational intelligence and Intelligent system Beijing 100124China Engineering Research Center of Digital Community Ministry of EducationBeijing 100124China
Transfer learning,as a new machine learning methodology,may solve problems in related but different domains by using existing knowledge,and it is often applied to transfer training data from another domain for model t... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论
Recent Progress in Reinforcement Learning and Adaptive Dynamic Programming for Advanced Control Applications
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IEEE/CAA Journal of Automatica Sinica 2024年 第1期11卷 18-36页
作者: Ding Wang Ning Gao Derong Liu Jinna Li Frank L.Lewis IEEE the Faculty of Information Technology Beijing Key Laboratory of Computational Intelligence and Intelligent SystemBeijing Laboratory of Smart Environmental Protectionand Beijing Institute of Artificial IntelligenceBeijing University of TechnologyBeijing 100124China the School of system Design and Intelligent Manufacturing Southern University of Science and TechnologyShenzhen 518055China the Department of Electrical and Computer Engineering University of Illinois at ChicagoChicago IL 60607 USA the School of Information and Control Engineering Liaoning Petrochemical UniversityFushun 113001China the UTA Research Institute the University of Texas at ArlingtonArlington TX 76118 USA
Reinforcement learning(RL) has roots in dynamic programming and it is called adaptive/approximate dynamic programming(ADP) within the control community. This paper reviews recent developments in ADP along with RL and ... 详细信息
来源: 维普期刊数据库 维普期刊数据库 同方期刊数据库 同方期刊数据库 评论
Identity-Preserving Adversarial Training for Robust Network Embedding
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Journal of Computer Science & Technology 2024年 第1期39卷 177-191页
作者: 岑科廷 沈华伟 曹婍 徐冰冰 程学旗 Data intelligence system Research Center Institute of Computing TechnologyChinese Academy of SciencesBeijing 100190China University of Chinese Academy of Sciences Beijing 101480China beijing Academy of Artificial intelligence Beijing 100000China Chinese Academy of Sciences key laboratory of Network Data Science and Technology Institute of Computing Technology Chinese Academy of SciencesBeijing 100190China
Network embedding,as an approach to learning low-dimensional representations of nodes,has been proved extremely useful in many applications,e.g.,node classification and link ***,existing network embed-ding models are ... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论
A Comprehensive Overview of CFN From a Commonsense Perspective
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Machine intelligence Research 2024年 第2期21卷 239-256页
作者: Ru Li Yunxiao Zhao Zhiqiang Wang Xuefeng Su Shaoru Guo Yong Guan Xiaoqi Han Hongyan Zhao key laboratory of computational intelligence and Chinese Information Processing of Ministry of Education School of Computer and Information TechnologyShanxi UniversityTaiyuan 030006China
Chinese FrameNet(CFN)is a scenario commonsense knowledge base(CKB)that plays an important role in research on Chinese language *** is based on the theory of frame semantics and English FrameNet(FN).The CFN knowledge b... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论
Position-aware pushing and grasping synergy with deep reinforcement learning in clutter
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CAAI Transactions on intelligence Technology 2024年 第3期9卷 738-755页
作者: Min Zhao Guoyu Zuo Shuangyue Yu Daoxiong Gong Zihao Wang Ouattara Sie Intelligent Robotics laboratory Faculty of Information TechnologyBeijing University of TechnologyBeijingChina beijing key laboratory of computational intelligence and Intelligent systems BeijingChina laboratory of Biomechatronics and Intelligent Robotics(BIRO) Department of Mechanical and Aerospace EngineeringNorth Carolina State UniversityRaleighNorth CarolinaUSA
The positional information of objects is crucial to enable robots to perform grasping and pushing manipulations in *** effectively perform grasping and pushing manipu-lations,robots need to perceive the position infor... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论
Prescribed Performance Tracking Control of Time-Delay Nonlinear systems With Output Constraints
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IEEE/CAA Journal of Automatica Sinica 2024年 第7期11卷 1557-1565页
作者: Jin-Xi Zhang Kai-Di Xu Qing-Guo Wang IEEE the State key laboratory of Synthetical Automation for Process Industries Northeastern UniversityShenyang 110819China Institute of Artificial intelligence and Future Networks Beijing Normal UniversityZhuhai 519087 Guangdong key laboratory of Artificial intelligence and Multi-Modal Data Processing Beijing Normal University-Hong Kong Baptist University United International CollegeZhuhai 519087
The problem of prescribed performance tracking control for unknown time-delay nonlinear systems subject to output constraints is dealt with in this paper. In contrast with related works, only the most fundamental requ... 详细信息
来源: 维普期刊数据库 维普期刊数据库 同方期刊数据库 同方期刊数据库 评论
SinGRAV: Learning a Generative Radiance Volume from a Single Natural Scene
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Journal of Computer Science & Technology 2024年 第2期39卷 305-319页
作者: 王玉洁 陈学霖 陈宝权 School of Computer Science and Technology Shandong UniversityQingdao 266237China State key laboratory of General Artificial intelligence Beijing 100871China School of intelligence Science and Technology Peking UniversityBeijing 100871China Tencent AI Lab Tencent Holdings LimitedShenzhen 518057China
We present SinGRAV, an attempt to learn a generative radiance volume from multi-view observations of a single natural scene, in stark contrast to existing category-level 3D generative models that learn from images of ... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论
RepBoTNet-CESA:An Alzheimer’s Disease Computer Aided Diagnosis Method Using Structural Reparameterization BoTNet and Cubic Embedding Self Attention
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Computers, Materials & Continua 2024年 第5期79卷 2879-2905页
作者: Xiabin Zhang Zhongyi Hu Lei Xiao Hui Huang College of Computer Science and Artificial intelligence Wenzhou UniversityWenzhou325035China key laboratory of intelligence Image Processing and Analysis Wenzhou UniversityWenzhou325035China
Various deep learning models have been proposed for the accurate assisted diagnosis of early-stage Alzheimer’s disease(AD).Most studies predominantly employ Convolutional Neural Networks(CNNs),which focus solely on l... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论