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  • > 연구실 소개 > 연구분야
  • Reinforcement Learning for Commerical Sports Game
  • Reinforcement Learning for Commerical Sports Game researches with JoyCity Corporation (Online Game Company)
  • Neural Rendering-Based 3D Scene Style Transfer
  • Neural Rendering-Based 3D Scene Style Transfer Method via Semantic Understanding Using a Single Style Image
  • 3D Semantic Estimation from Monocular Videos
  • Depth Prior-Guided 3D Voxel Feature Fusion for 3D Semantic Estimation from Monocular Videos
  • Realistic Marine Image Generation Using a Multimodal Style Transfer Network
  • Realistic Marine Image Generation Using a Multimodal Style Transfer Network for Training Autonomous Vessels
  • Virtual Learning Simulator for Autonomous Vehicles
  • Virtual Scenario Simulation and Modeling Framework in Autonomous Driving Simulators
  • 3D Scene Reconstruction from Single 2D Images
  • 3D Scene Reconstruction from Single 2D Images of Indoor Scenes
  • Metaverse 3D Space Creation and Automatic Scenario Creation
  • Large Language Model Driven Scenario Generation
  • Reproduction of Accident Video-based Virtual Reality 3D Environment
  • Reproduction of Accident Video-based Virtual Reality 3D Environment by 3D data estimation from 2D videos
  • Game and Robot Intelligence / Machine Learning Research
  • - Virtual Learning Simulator for Robots
    - Automatic generation of 3D virtual environment
    - Autonomous mobile Robot Intelligence
  • Game, robot intelligence, NUI / NUX engine development
  • - Real-time 3D terrain rendering engine
    - Interactive learning robot engine
    - Interactive sensibility intelligent character engine
    - NUI / NUX engine
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