Daniel Honc
Papers
7
Total Citations
56
H-Index
5
About
Daniel Honc is a researcher whose work sits at the intersection of robotics, control systems, and machine learning, with a particular focus on mobile robot navigation, sensor fusion, and predictive control. His most influential contributions address the challenge of enabling autonomous robots to perceive, localize, and move intelligently through complex environments. In his early work, Honc developed sensor fusion frameworks leveraging Kalman filters to fuse data from multiple infrared sensors, enabling robots to accurately estimate orientation and proximity to obstacles — research that has garnered consistent citation attention since 2014. His subsequent investigations into Model Predictive Control (MPC) for differential-drive and non-holonomic mobile robots explored both kinematic and dynamic models, advancing trajectory tracking performance across multiple control formulations. Notably, his 2017 comparative study of predictive controllers provided valuable benchmarks for researchers selecting control strategies for wheeled robots. Honc also contributed to multi-robot systems, proposing priority-based frontier exploration strategies for collaborative area coverage. More recently, he extended his expertise into deep learning, applying convolutional neural networks to rapid 2D object positioning for industrial pick-and-place applications. With citations spanning foundational robotics problems to cutting-edge vision-based automation, Honc's body of work reflects a broad and practically grounded research vision.
Research Focus
Key Achievements
Top Papers
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- 4Frontier Based Multi Robot Area Exploration Using Prioritized Routing8 citations · 2016
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