Wei-Hsuan Chang
Papers
5
Total Citations
28
H-Index
4
About
Wei-Hsuan Chang is a robotics researcher whose work centers on autonomous humanoid robot systems, with a particular focus on computer vision, object recognition, and self-localization. Working primarily within the competitive and technically demanding domain of RoboCup humanoid soccer, Chang has made meaningful contributions to enabling robots to navigate and respond intelligently within dynamic, unpredictable environments. Chang's most significant contributions lie in developing efficient real-time vision systems that allow humanoid robots to recognize objects and determine their own position using monocular camera setups. Notable work includes neural network-based self-localization methods and an adaptive resolution approach to object recognition, both designed to balance computational efficiency with accuracy under contest conditions. These innovations address core challenges in autonomous robotics, where robots must process visual information rapidly without the benefit of external guidance. Across a publication record spanning from 2009 to 2012, Chang's papers have collectively accumulated over 28 citations, reflecting steady engagement from the robotics research community. The consistent focus on integrating perception and localization into unified, deployable systems underscores Chang's practical orientation toward making humanoid robots genuinely functional competitors and autonomous agents in real-world scenarios.
Research Focus
Key Achievements
Top Papers
- 1
- 2An efficient object recognition system for humanoid robot vision7 citations · 2009
- 3
- 4Self-Localization Based on Monocular Vision for Humanoid Robot5 citations · 2011
- 5