咨询与建议

限定检索结果

文献类型

  • 942 篇 期刊文献
  • 691 篇 会议
  • 1 册 图书

馆藏范围

  • 1,634 篇 电子文献
  • 0 种 纸本馆藏

日期分布

学科分类号

  • 1,127 篇 工学
    • 812 篇 计算机科学与技术...
    • 665 篇 软件工程
    • 301 篇 信息与通信工程
    • 199 篇 电气工程
    • 156 篇 生物工程
    • 143 篇 控制科学与工程
    • 110 篇 生物医学工程(可授...
    • 102 篇 光学工程
    • 101 篇 电子科学与技术(可...
    • 61 篇 机械工程
    • 50 篇 化学工程与技术
    • 46 篇 交通运输工程
    • 45 篇 仪器科学与技术
    • 37 篇 网络空间安全
    • 33 篇 建筑学
    • 31 篇 土木工程
    • 31 篇 航空宇航科学与技...
  • 594 篇 理学
    • 323 篇 数学
    • 174 篇 生物学
    • 122 篇 物理学
    • 111 篇 统计学(可授理学、...
    • 56 篇 化学
    • 46 篇 系统科学
  • 312 篇 管理学
    • 180 篇 管理科学与工程(可...
    • 144 篇 图书情报与档案管...
    • 74 篇 工商管理
  • 101 篇 医学
    • 92 篇 临床医学
    • 79 篇 基础医学(可授医学...
    • 56 篇 药学(可授医学、理...
  • 42 篇 法学
    • 34 篇 社会学
  • 24 篇 经济学
  • 19 篇 农学
  • 13 篇 教育学
  • 2 篇 艺术学
  • 1 篇 军事学

主题

  • 80 篇 semantics
  • 63 篇 feature extracti...
  • 48 篇 deep learning
  • 45 篇 training
  • 32 篇 computational mo...
  • 32 篇 data models
  • 30 篇 accuracy
  • 29 篇 federated learni...
  • 28 篇 convolution
  • 25 篇 predictive model...
  • 25 篇 machine learning
  • 23 篇 data mining
  • 23 篇 contrastive lear...
  • 22 篇 deep neural netw...
  • 21 篇 image segmentati...
  • 20 篇 neural networks
  • 19 篇 graph neural net...
  • 19 篇 visualization
  • 18 篇 robustness
  • 17 篇 codes

机构

  • 54 篇 shandong provinc...
  • 51 篇 college of compu...
  • 51 篇 national enginee...
  • 46 篇 shandong enginee...
  • 44 篇 key laboratory o...
  • 40 篇 school of cyber ...
  • 39 篇 beijing advanced...
  • 37 篇 school of comput...
  • 37 篇 college of compu...
  • 35 篇 nanyang technolo...
  • 35 篇 university of ch...
  • 29 篇 school of big da...
  • 29 篇 national enginee...
  • 28 篇 college of compu...
  • 28 篇 hubei key labora...
  • 27 篇 peng cheng labor...
  • 27 篇 hubei engineerin...
  • 26 篇 services computi...
  • 25 篇 cluster and grid...
  • 25 篇 school of comput...

作者

  • 73 篇 niyato dusit
  • 32 篇 jin hai
  • 24 篇 sun geng
  • 23 篇 shen linlin
  • 21 篇 hai jin
  • 20 篇 hu shengshan
  • 19 篇 wang jiacheng
  • 17 篇 huang qingming
  • 16 篇 liu ya-feng
  • 16 篇 xu qianqian
  • 15 篇 zhang leo yu
  • 15 篇 li jiahui
  • 15 篇 liu bin
  • 14 篇 huang sheng
  • 14 篇 zhou ziqi
  • 13 篇 cao xiaochun
  • 13 篇 li minghui
  • 12 篇 wang jinbao
  • 12 篇 yang yang
  • 12 篇 li tianrui

语言

  • 1,409 篇 英文
  • 203 篇 其他
  • 35 篇 中文
检索条件"机构=The Key Laboratory of Data Engineering and Visual Computing"
1634 条 记 录,以下是711-720 订阅
排序:
Generative AI for data Augmentation in Wireless Networks: Analysis, Applications, and Case Study
arXiv
收藏 引用
arXiv 2024年
作者: Wen, Jinbo Kang, Jiawen Niyato, Dusit Zhang, Yang Wang, Jiacheng Sikdar, Biplab Zhang, Ping College of Computer Science and Technology Nanjing University of Aeronautics and Astronautics China School of Automation Guangdong University of Technology China College of Computing and Data Science Nanyang Technological University Singapore Department of Electrical and Computer Engineering College of Design and Engineering National University of Singapore Singapore State Key Laboratory of Networking and Switching Technology Beijing University of Posts and Telecommunications China
data augmentation is a powerful technique to mitigate data scarcity. However, owing to fundamental differences in wireless data structures, traditional data augmentation techniques may not be suitable for wireless dat... 详细信息
来源: 评论
Robust Graph Structure Learning with the Alignment of Features and Adjacency Matrix
arXiv
收藏 引用
arXiv 2023年
作者: Lv, Shaogao Wen, Gang Liu, Shiyu Wei, Linsen Li, Ming Department of Statistics and Data Science Nanjing Audit University China University of Electronic Science and Technology of China China School of Astronautics Northwestern Polytechnical University China Key Laboratory of Intelligent Education Technology and Application of Zhejiang Province Zhejiang Normal University Jinhua China Key Laboratory of Scientific and Engineering Computing Ministry of Education Shanghai Jiao Tong University China
To improve the robustness of graph neural networks (GNN), graph structure learning (GSL) has attracted great interest due to the pervasiveness of noise in graph data. Many approaches have been proposed for GSL to join... 详细信息
来源: 评论
ReconBoost: Boosting Can Achieve Modality Reconcilement
arXiv
收藏 引用
arXiv 2024年
作者: Hua, Cong Xu, Qianqian Bao, Shilong Yang, Zhiyong Huang, Qingming Key Laboratory of Intelligent Information Processing Institute of Computing Technology Chinese Academy of Sciences Beijing China School of Computer Science and Technology University of Chinese Academy of Sciences Beijing China Institute of Information Engineering Chinese Academy of Sciences Beijing China School of Cyber Security University of Chinese Academy of Sciences Beijing China Key Laboratory of Big Data Mining and Knowledge Management Chinese Academy of Sciences Beijing China
This paper explores a novel multi-modal alternating learning paradigm pursuing a reconciliation between the exploitation of uni-modal features and the exploration of cross-modal interactions. This is motivated by the ... 详细信息
来源: 评论
Voice Conversion Augmentation for Speaker Recognition on Defective datasets
arXiv
收藏 引用
arXiv 2024年
作者: Tao, Ruijie Shi, Zhan Jiang, Yidi Liu, Tianchi Li, Haizhou Department of Electrical and Computer Engineering National University of Singapore Singapore119077 Singapore School of Data Science The Chinese University of Hong Kong Shenzhen518172 China Singapore Institute of Technology Institute for Infocomm Research A∗STAR Singapore138632 Singapore Guangdong Provincial Key Laboratory of Big Data Computing The Chinese University of Hong Kong Shenzhen518172 China Shenzhen Research Institute of Big data Shenzhen518172 China University of Bremen Bremen28359 Germany
Modern speaker recognition system relies on abundant and balanced datasets for classification training. However, diverse defective datasets, such as partially-labelled, small-scale, and imbalanced datasets, are common... 详细信息
来源: 评论
Task-Aware Dynamic Transformer for Efficient Arbitrary-Scale Image Super-Resolution
arXiv
收藏 引用
arXiv 2024年
作者: Xu, Tianyi Zhou, Yijie Hu, Xiaotao Zhang, Kai Zhang, Anran Qiu, Xingye Xu, Jun School of Statistics and Data Science Nankai University Tianjin China College of Computer Science Nankai University Tianjin China School of Intelligence Science and Technology Nanjing University Suzhou China Tencent Data Platform Beijing China Zhejiang University Hangzhou China Systems Engineering Research Institute China State Shipbuilding Corporation Limited Beijing China Guangdong Provincial Key Laboratory of Big Data Computing The Chinese University of Hong Kong Shenzhen China
Arbitrary-scale super-resolution (ASSR) aims to learn a single model for image super-resolution at arbitrary magnifying scales. Existing ASSR networks typically comprise an off-the-shelf scale-agnostic feature extract...
来源: 评论
Adaptive Multi-Channel Contrastive Graph Convolutional Network with Graph and Feature Fusion
SSRN
收藏 引用
SSRN 2023年
作者: Zhong, Luying Lu, Jielong Chen, Zhaoliang Song, Na Wang, Shiping College of Computer and Data Science Fuzhou University Fuzhou350108 China Fujian Provincial Key Laboratory of Network Computing and Intelligent Information Processing Fuzhou University Fuzhou350116 China School of Mechanical Electrical and Information Engineering Putian University Putian351100 China
Multi-view semi-supervised classification is an attractive topic in real-world applications. Due to the powerful capability of gathering information from neighbors, Graph Convolutional Network (GCN) has become a hotsp... 详细信息
来源: 评论
Research on Hardware-in-the-Loop Test System for the Main Control Unit of Unmanned Vehicles
Research on Hardware-in-the-Loop Test System for the Main Co...
收藏 引用
Chinese Intelligent Systems Conference, CISC 2020
作者: Ni, Haoyuan Yu, Guizhen Zhou, Bin Liu, Guoqiang School of Transportation Science and Engineering Beijing Advanced Innovation Center for Big Data and Brain Computing Beijing Key Laboratory for Cooperative Vehicle Infrastructure Systems and Safety Control Beihang University Beijing100191 China School of Electronic Information Engineering Beihang University Beijing100191 China
At present, there are more researches on the automatic driving technology of unmanned vehicles. It needs a main control unit, which enables the vehicle to automatically drive. The main control unit supports the access... 详细信息
来源: 评论
Target-Oriented WiFi Sensing for Respiratory Healthcare: from Indiscriminate Perception to In-Area Sensing
收藏 引用
IEEE Network 2024年
作者: Wang, Meng Huang, Jinyang Zhang, Xiang Liu, Zhi Li, Meng Zhao, Peng Yan, Huan Sun, Xiao Dong, Mianxiong Hefei University of Technology Anhui Province Key Laboratory of Affective Computing and Advanced Intelligence Machine School of Computer and Information Hefei230601 China University of Science and Technology of China CAS Key Laboratory of Electromagnetic Space Information Hefei230026 China The University of Electro-Communications Department of Computer and Network Engineering Tokyo1828585 Japan Guizhou Normal University School of Big Data and Computer Science Guiyang550025 China Muroran Institute of Technology Department of Sciences and Informatics 0508585 Japan
Driven by the vision of integrated sensing and communication (ISAC) toward 6G technology, the WiFi-based respiration sensing approach has emerged as a highly competitive candidate for advanced healthcare services. Nev... 详细信息
来源: 评论
Online Public Transit Ridership Flow Estimation through Passive WiFi Sensing
Online Public Transit Ridership Flow Estimation through Pass...
收藏 引用
第34届中国控制与决策会议
作者: Wenbo Chang Baoqi Huang Bing Jia Wuyungerile Li Gang Xu Engineering Research Center of Ecological Big Data Ministry of Education Inner Mongolia A.R.Key Laboratory of Wireless Networking and Mobile Computing College of Computer Science Inner Mongolia University
Online public transit ridership flow information is helpful to improve the service quality of urban public transportation and travel experience of *** WiFi sensing collects WiFi probe requests sent by mobile devices i... 详细信息
来源: 评论
Why Does Little Robustness Help? A Further Step Towards Understanding Adversarial Transferability
arXiv
收藏 引用
arXiv 2023年
作者: Zhang, Yechao Hu, Shengshan Zhang, Leo Yu Shi, Junyu Li, Minghui Liu, Xiaogeng Wan, Wei Jin, Hai School of Cyber Science and Engineering Huazhong University of Science and Technology China School of Software Engineering Huazhong University of Science and Technology China School of Information and Communication Technology Griffith University Australia School of Computer Science and Technology Huazhong University of Science and Technology China National Engineering Research Center for Big Data Technology and System Services Computing Technology and System Lab Hubei Key Laboratory of Distributed System Security China Hubei Engineering Research Center on Big Data Security China Cluster and Grid Computing Lab
Adversarial examples for deep neural networks (DNNs) have been shown to be transferable: examples that successfully fool one white-box surrogate model can also deceive other black-box models with different architectur... 详细信息
来源: 评论