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Taehong Kim

Showing results (11-20 of 40) with videos related to

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Sensors (Basel, Switzerland)|January 20, 2021
Fast and Robust Time Synchronization with Median Kalman Filtering for Mobile Ad-Hoc NetworksYoung Jeon, Taehong Kim, Taejoon Kim
Sensors (Basel, Switzerland)|September 10, 2020
Distributed Node Scheduling with Adjustable Weight Factor for Ad-hoc NetworksWonseok Lee, Taehong Kim, Taejoon Kim
Health Physics|August 8, 2006
Evaluation of mixing downstream of tees in duct systems with respect to single point representative air samplingTaehong Kim, Dennis L O'Neal, Carlos Ortiz
Sensors (Basel, Switzerland)|April 30, 2021
Edge/Fog Computing Technologies for IoT InfrastructureTaehong Kim, Seong-Eun Yoo, Youngsoo Kim
Sensors (Basel, Switzerland)|April 28, 2023
Edge/Fog Computing Technologies for IoT Infrastructure IITaehong Kim, Seong-Eun Yoo, Youngsoo Kim
Sensors (Basel, Switzerland)|April 23, 2022
Load-Balancing of Kubernetes-Based Edge Computing Infrastructure Using Resource Adaptive ProxyQuang-Minh Nguyen, Linh-An Phan, Taehong Kim
Applied Neuropsychology. Adult|March 25, 2025
Development and user experience evaluation of a virtual reality-based cognitive-assessment tool for older adults: Preliminary studyKyoung-Mi Jang, Taehong Kim, Youngjae Jeong, et al.
Scientific Reports|August 27, 2024
COVID-19 severity detection using chest X-ray segmentation and deep learningTinku Singh, Suryanshi Mishra, Riya Kalra, et al.
Sensors (Basel, Switzerland)|July 21, 2019
Performance Analysis of Time Synchronization Protocols in Wireless Sensor NetworksLinh-An Phan, Taejoon Kim, Taehong Kim, et al.
Sensors (Basel, Switzerland)|February 13, 2025
FLDQN: Cooperative Multi-Agent Federated Reinforcement Learning for Solving Travel Time Minimization Problems in Dynamic Environments Using SUMO SimulationAbdul Wahab Mamond, Majid Kundroo, Seong-Eun Yoo, et al.
Pageof 4

Showing results (11-20 of 40) with videos related to

Sort By:
Pageof 4
Sensors (Basel, Switzerland)|January 20, 2021
Fast and Robust Time Synchronization with Median Kalman Filtering for Mobile Ad-Hoc NetworksYoung Jeon, Taehong Kim, Taejoon Kim
Sensors (Basel, Switzerland)|September 10, 2020
Distributed Node Scheduling with Adjustable Weight Factor for Ad-hoc NetworksWonseok Lee, Taehong Kim, Taejoon Kim
Health Physics|August 8, 2006
Evaluation of mixing downstream of tees in duct systems with respect to single point representative air samplingTaehong Kim, Dennis L O'Neal, Carlos Ortiz
Sensors (Basel, Switzerland)|April 30, 2021
Edge/Fog Computing Technologies for IoT InfrastructureTaehong Kim, Seong-Eun Yoo, Youngsoo Kim
Sensors (Basel, Switzerland)|April 28, 2023
Edge/Fog Computing Technologies for IoT Infrastructure IITaehong Kim, Seong-Eun Yoo, Youngsoo Kim
Sensors (Basel, Switzerland)|April 23, 2022
Load-Balancing of Kubernetes-Based Edge Computing Infrastructure Using Resource Adaptive ProxyQuang-Minh Nguyen, Linh-An Phan, Taehong Kim
Applied Neuropsychology. Adult|March 25, 2025
Development and user experience evaluation of a virtual reality-based cognitive-assessment tool for older adults: Preliminary studyKyoung-Mi Jang, Taehong Kim, Youngjae Jeong, et al.
Scientific Reports|August 27, 2024
COVID-19 severity detection using chest X-ray segmentation and deep learningTinku Singh, Suryanshi Mishra, Riya Kalra, et al.
Sensors (Basel, Switzerland)|July 21, 2019
Performance Analysis of Time Synchronization Protocols in Wireless Sensor NetworksLinh-An Phan, Taejoon Kim, Taehong Kim, et al.
Sensors (Basel, Switzerland)|February 13, 2025
FLDQN: Cooperative Multi-Agent Federated Reinforcement Learning for Solving Travel Time Minimization Problems in Dynamic Environments Using SUMO SimulationAbdul Wahab Mamond, Majid Kundroo, Seong-Eun Yoo, et al.
Pageof 4