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© sebastian thrun, CMU, 20001 16-899C Statistical Techniques In Robotics Sebastian Thrun and Geoffrey Gordon Carnegie Mellon University www.cs.cmu.edu/~thrun www.cs.cmu.edu/~ggordon
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© sebastian thrun, CMU, 20002 notes Pointer to Larry’s material
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© sebastian thrun, CMU, 20003 Administrative Information Sebastian Thrun thrun@cs.cmu.edu Geoffrey Gordonggordon@cs.cmu.edu Web: http://www.cs.cmu.edu/~16899 Email list: 16-899@cs.cmu.edu Time:Mon/Wed, 10:30-11:50am Location:NSH 3302 TA:n/a Appointments: send Email!
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© sebastian thrun, CMU, 20004
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5 Goals Enable you to program robots and embedded systems in a robust fashion Enable you to understand the intrinsic assumptions in your robot software Enable you to pursue original research in probabilistic robotics Sway you into joining a young and fascinating research field: probabilistic robotics
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© sebastian thrun, CMU, 20006 What this course is not Intro to robotics Little work Low on math
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© sebastian thrun, CMU, 20007 Course Schedule Localization Sept 4-16 Mapping Sept 30-Oct 16 Decision Making Oct 21-30 Multi-Agent Nov 4-11 Advanced Perception Nov 13-25
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© sebastian thrun, CMU, 20008 What You Should Do Think Think differently Be critical Come up with Original Research
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© sebastian thrun, CMU, 20009 What Is A Good Project Mine Mapping Multi-Agent Control
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© sebastian thrun, CMU, 200010 Requirements In teams of three: Warm-up project (mobile robot localization) Written assignment(s) Research Project Class Presence: all but two sessions (send me email) Quizzes (all but at most two) No exams
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© sebastian thrun, CMU, 200011 Your next tasks Check out Web site Read assigned paper Download map+sensor data and program robot localization algorithm Send Sebastian mail with your name and names of team mates (for warm-up project) Come to class on Sept 9 th (10:30am-11:50am)
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© sebastian thrun, CMU, 200012
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© sebastian thrun, CMU, 200013
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© sebastian thrun, CMU, 200014
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© sebastian thrun, CMU, 200015
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© sebastian thrun, CMU, 200016 Five Sources of Uncertainty Environment Dynamics Random Action Effects Sensor Limitations Inaccurate Models Approximate Computation
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© sebastian thrun, CMU, 200017 Trends in Robotics Reactive Paradigm (mid-80’s) no models relies heavily on good sensing Probabilistic Robotics (since mid-90’s) seamless integration of models and sensing inaccurate models, inaccurate sensors Hybrids (since 90’s) model-based at higher levels reactive at lower levels Classical Robotics (mid-70’s) exact models no sensing necessary
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© sebastian thrun, CMU, 200018
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© sebastian thrun, CMU, 200019 Rhino
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© sebastian thrun, CMU, 200020 Minerva
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© sebastian thrun, CMU, 200021 The CMU/Pitt Nursebot Initiative
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© sebastian thrun, CMU, 200022 People Detection Mike Montemerlo
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© sebastian thrun, CMU, 200023 Learning Models of People Maren Bennewitz
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© sebastian thrun, CMU, 200024 3D Mapping Result With: Christian Martin
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© sebastian thrun, CMU, 200025 Multi-Robot Exploration
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© sebastian thrun, CMU, 200026 Mine Mapping (brand new)
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© sebastian thrun, CMU, 200027 What are interesting problems? Mapping, automatic, manual, guided? Probabilistic localization, landmarks?, odometer!, Route planning, collision avoidance Mine Mapping?
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© sebastian thrun, CMU, 200028 How can we solve them?
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© sebastian thrun, CMU, 200029
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© sebastian thrun, CMU, 200030 Where Am I/?
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© sebastian thrun, CMU, 200031 Nature of Sensor Data: Uncertainty Odometry Data Range Data
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© sebastian thrun, CMU, 200032
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© sebastian thrun, CMU, 200033 Warm-Up Assignment: Localization, Due Sept 23
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© sebastian thrun, CMU, 200034 Warm-Up Assignment: Localization
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© sebastian thrun, CMU, 200035 Warm-Up Assignment: Localization
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