KI for IT Convergence

  • home_icon HOME.
  • Research
  • Research Institutes
  • KI for IT Convergence
  • Achievements

Total 43, list per page:

  1. Context-aware risk management for architectural heritage using historic building information modeling and virtual reality

    cultural heritage / / 2019 / Woo, Woontack / KIITC > IoT/WoT

  2. Chaotic time series prediction using a novel Echo State Network model with Inputs Reconstruction, Bayesian Ridge Regression, and Independent Component Analysis

    International Journal of Pattern Recognition and Artificial Intelligence / / 2019 / Kim, Daeyoung / KIITC > IoT/WoT

  3. Host load prediction in cloud computing using Long Short-Term Memory Encoder–Decoder

    The Journal of Supercomputing / / 2019 / Kim, Daeyoung / KIITC > IoT/WoT

  4. ESNemble: an Echo State Network based ensemble for workload prediction and resource allocation of Web applications in the cloud

    The Journal of Supercomputing, Springer / / 2019 / Kim, Daeyoung / KIITC > IoT/WoT

  5. ChronoGraph: Enabling temporal graph traversals for efficient information diffusion analysis over time

    IEEE Transactions on Knowledge and Data Engineering / / 2019 / Kim, Daeyoung / KIITC > IoT/WoT

  6. Distributed topology construction in ZigBee wireless networks

    Wireless Personal Communications Journal / / 2018 / Kim, Daeyoung / KIITC > IoT/WoT

  7. A Multi-hop Pointer Forwarding Scheme for Efficient Location Update in Low-rate Wireless Mesh Networks

    Journal of Parallel and Distributed Computing / / 2018 / Kim, Daeyoung / KIITC > IoT/WoT

  8. Automated detection of vulnerable plaque in intravascular ultrasound images

    Medical & Biological Engineering & Computing / / 2018 / Kim, Daeyoung / KIITC > IoT/WoT

  9. Scalable and Efficient Metadata Framework Towards Internet of Things

    Wireless Personal Communications Journal / / 2018 / Kim, Daeyoung / KIITC > IoT/WoT

  10. Electricity Power Load Profile Extraction by Mean-Shift Clustering with Sample Pearson Correlation Coefficient Distance

    MDPI Energies / / 2018 / Choi, JunKyun / KIITC > IoT/WoT

  11. Deep Learning based Pilot Allocation Scheme(DL-PAS) for 5G Massive MIMO System

    IEEE Communications Letters / / 2018 / Choi, JunKyun / KIITC > IoT/WoT

  12. Towards improving throughput and reducing latency: A simplified protocol conversion mechanism in distributed energy resources network

    Elsevier Applied Energy / / 2018 / Choi, JunKyun / KIITC > IoT/WoT

  13. Ontology-based mobile augmented reality in cultural heritage sites: information modeling and user study

    Multimedia Tools and Applications / Vol. 76(24), 26001-26029 / 2017 / Woo, Woontack / KIITC > IoT/WoT

  14. TunnelSlice: Freehand Subspace Acquisition Using an Egocentric Tunnel for Wearable Augmented Reality

    IEEE Transactions on Human-Machine Systems / Vol. 47(1) / 2017 / Woo, Woontack / KIITC > IoT/WoT

  15. Divide-conquer method for improving possibilistic c-means

    IET Electronics Letters / Vol. 53(3) / 2017 / Woo, Woontack / KIITC > IoT/WoT

  16. Metaphoric Hand Gestures for Orientation-Aware VR Object Manipulation With an Egocentric Viewpoint

    IEEE Transactions on Human-Machine Systems / Vol. 47(1) / 2017 / Woo, Woontack / KIITC > IoT/WoT

  17. Oliot EPCIS: Engineering a Web information system complying with EPC Information Services standard towards the Internet of Things

    Computers in Industry / Vol. 94, 82-97 / 2017 / Kim, Daeyoung / KIITC > IoT/WoT

  18. Efficient and privacy-enhanced object traceability based on unified and linked EPCIS events

    Computers in Industry / Vol. 89, 35-49 / 2017 / Kim, Daeyoung / KIITC > IoT/WoT

  19. Non-Uniform Fusion Tree Generation in a Dynamic Multi-Sensor System

    Sensors / Vol. 17(5) / 2017 / Kim, Daeyoung / KIITC > IoT/WoT

  20. Study on Building Smart Home Testbed for Collecting Daily Health Condition based on Internet of Things

    KIISE Transactions on Computing Practices (KTCP) / Vol. 23(5), 284-292 / 2017 / Jung, Sungkwan / KIITC > IoT/WoT

KAIST 291 Daehak-ro, Yuseong-gu, Daejeon (34141)
T : +82-42-350-2381~2384
F : +82-42-350-2080
Copyright (C) 2015. KAIST Institute