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James (Drew) Bagnell
Assistant Research Professor Associated center: NREC Email address: bagnell2@andrew.cmu.edu
Office: NSH 3111
Phone: (412) 681-8669
Mailing address: National Robotics Engineering Center
10 40th Street
Pittsburgh, PA 15201
For more information, see my personal homepage.
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Research interests |
Keywords |
Labs & groups |
Projects |
Publications
I am interested in "closing the loop" on complex systems; that is, I am interested in designing algorithms that allow systems to observe their own operation and improve performance. My belief is that the border land between planning, control and computational learning is particularly rich with research challenges and potential to make real, immediate impact on applications. I'm particularly interested in systems for which we can obtain at best a partial model. To this end, I'm excited about extending research tools that come from information theory, statistics, control theory, statistical physics and optimization.
At the moment, I am particularly focused on two areas in machine learning. First I am working on applications of learning and decision making applied to mobile robotics. Second, I am interested in developing rich, structured probabilistic models that are appropriate for both making and learning decisions.
This section last updated - January 1999.
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artificial intelligence, control, machine learning, mobile robots, and planning
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Auton Lab - We build practical large-scale deployments of very highly autonomous self-improving systems.
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Learning Locomotion - Robust planning and control of the quadruped robot
"Little Dog" to traverse rough terrain (DARPA sponsored).
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PeepPredict - We are applying machine learning techniques to model and
compute long-term and short-term trajectories of people in a variety
of settings.
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Quality of Life Technology Center - QoLT is a unique partnership between Carnegie Mellon and the University of Pittsburgh that brings together a cross-disciplinary team of technologists, clinicians, industry partners, end users, and other stakeholders to create revolutionary technologies that will improve and sustain the quality of life for all people.
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UGCV PerceptOR Integrated - The UPI (UGCV PerceptOR Integrated) program integrates and enhances the results from UGCV and PerceptOR to increase the speed and autonomy of unmanned ground vehicles operating in complex terrain.
By combining the inherent mobility of Spinner with advanced perception techniques including the use of learning and prior terrain data, the UPI program stresses system design across vehicle, sensors and software so that the strengths of one component compensate for the weaknesses of another.
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- Differentiable Sparse Coding
D. Bradley and J. Bagnell
Proceedings of Neural Information Processing Systems 22, December, 2008.
[Abstract]
Download: pdf [553 KB] copyrighted
- Fast Planning for Dynamic Preferences
B. Ziebart, A. Dey, and J. Bagnell
ICAPS: International Conference on Automated Planning and Scheduling, September, 2008.
[Abstract]
Download: pdf [831 KB] copyrighted
- Maximum Entropy Inverse Reinforcement Learning
B.D. Ziebart, A. Maas, J. Bagnell, and A.K. Dey
Proceeding of AAAI 2008, July, 2008.
[Abstract]
Download: pdf [293 KB] copyrighted
- Autonomous driving in urban environments: Boss and the Urban Challenge
C. Urmson, J. Anhalt, H. Bae, J. Bagnell, C. Baker, R.E. Bittner, T. Brown, M.N. Clark, M. Darms, D. Demitrish, J. Dolan, D. Duggins, D. Ferguson, T. Galatali, C.M. Geyer, M. Gittleman, S. Harbaugh, M. Hebert, T. Howard, S. Kolski, M. Likhachev, B. Litkouhi, A. Kelly, M. McNaughton, N. Miller, J. Nickolaou, K. Peterson, B. Pilnick, R. Rajkumar, P. Rybski, V. Sadekar, B. Salesky, Y. Seo, S. Singh, J.M. Snider, J.C. Struble, A. Stentz, M. Taylor, W.L. Whittaker, Z. Wolkowicki, W. Zhang, and J. Ziglar
Journal of Field Robotics Special Issue on the 2007 DARPA Urban Challenge, Part I, Vol. 25, No. 8, June, 2008, pp. 425-466.
[Abstract]
Download: pdf [1176 KB] copyrighted
- High Performance Outdoor Navigation from
Overhead Data using Imitation Learning
D. Silver, J. Bagnell, and A. Stentz
Robotics Science and Systems, June, 2008.
[Abstract]
Download: pdf [4209 KB] copyrighted
- Adaptive Workspace Biasing for Sampling Based Planners
M. Zucker, J. Kuffner, and J. Bagnell
Proc. IEEE Int'l Conf. on Robotics and Automation, May, 2008.
[Abstract]
Download: pdf [976 KB] copyrighted
- Navigate Like a Cabbie: Probabilistic Reasoning from Observed Context-Aware Behavior
B. Ziebart, A. Maas, A. Dey, and J. Bagnell
UBICOMP: Ubiquitious Computation, 2008.
[Abstract]
Download: pdf [691 KB] copyrighted
- Imitation Learning for Locomotion and Manipulation
N. Ratliff, J. Bagnell, and S. Srinivasa
tech. report CMU-RI-TR-07-45, Robotics Institute, Carnegie Mellon University, December, 2007.
[Abstract]
Download: pdf [2236 KB] copyrighted
- Imitation Learning for Locomotion and Manipulation
N. Ratliff, J. Bagnell, and S. Srinivasa
IEEE-RAS International Conference on Humanoid Robots, November, 2007.
[Abstract]
- Learning Selectively Conditioned Forest Structures with Applications to DBNs and Classification
B.D. Ziebart, A.K. Dey, and J. Bagnell
Proceedings of Uncertainty in Artificial Intelligence (UAI 2007), July, 2007.
[Abstract]
Download: pdf [339 KB] copyrighted
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