Papers
269
Total Citations
29,900
H-Index
74
About
Dieter Fox is a pioneering roboticist and computer scientist whose research has profoundly shaped the fields of probabilistic robotics, mobile robot localization, and robot perception. Working at the intersection of machine learning, computer vision, and autonomous systems, Fox has made foundational contributions that continue to define how robots understand and navigate their environments. Fox is perhaps best known for his seminal work on Monte Carlo Localization (MCL), introduced in 1999 and refined through subsequent publications, which gave mobile robots an efficient probabilistic framework for self-positioning—work that has accumulated over 1,000 citations. His co-authored textbook *Probabilistic Robotics* (2005, 1,451 citations) became an essential reference for an entire generation of roboticists. His contributions to RGB-D sensing helped establish dense 3D indoor mapping as a practical capability (1,170+ citations), while his large-scale RGB-D object dataset (1,322 citations) accelerated progress in visual recognition research. More recently, PoseCNN (2018, 2,088 citations) demonstrated his ability to bridge deep learning and robotics, advancing 6D object pose estimation for robotic manipulation in cluttered environments. With early real-world deployments like an interactive museum tour-guide robot, Fox has consistently translated theory into practice, cementing his legacy as one of robotics' most influential researchers.
Research Focus
Key Achievements
Top Papers
- 1
- 2Robust Monte Carlo localization for mobile robots1,803 citations · 2001
- 3Probabilistic Robotics (Intelligent Robotics and Autonomous Agents)1,451 citations · 2005
- 4A large-scale hierarchical multi-view RGB-D object dataset1,322 citations · 2011
- 5
- 6Monte Carlo localization: efficient position estimation for mobile robots1,073 citations · 1999
- 7Experiences with an interactive museum tour-guide robot817 citations · 1999
- 8RGB-D Mapping: Using Depth Cameras for Dense 3D Modeling of Indoor Environments811 citations · 2013
- 9
- 10Adapting the Sample Size in Particle Filters Through KLD-Sampling717 citations · 2003