Mobile Robotics Laboratory Institute of Systems and Robotics ISR – Coimbra Aim –Take advantage from intelligent cooperation between mobile robots, so as.

Slides:



Advertisements
Similar presentations
An appearance-based visual compass for mobile robots Jürgen Sturm University of Amsterdam Informatics Institute.
Advertisements

COORDINATION and NETWORKING of GROUPS OF MOBILE AUTONOMOUS AGENTS.
Monte Carlo Localization for Mobile Robots Karan M. Gupta 03/10/2004
Localization of Piled Boxes by Means of the Hough Transform Dimitrios Katsoulas Institute for Pattern Recognition and Image Processing University of Freiburg.
Cognitive Colonization The Robotics Institute Carnegie Mellon University Bernardine Dias, Bruce Digney, Martial Hebert, Bart Nabbe, Tony Stentz, Scott.
Localization David Johnson cs6370. Basic Problem Go from thisto this.
Decentralised Coordination of Mobile Sensors using the Max-Sum Algorithm Ruben Stranders, Alex Rogers, Nick Jennings School of Electronics and Computer.
Paper Discussion: “Simultaneous Localization and Environmental Mapping with a Sensor Network”, Marinakis et. al. ICRA 2011.
Active SLAM in Structured Environments Cindy Leung, Shoudong Huang and Gamini Dissanayake Presented by: Arvind Pereira for the CS-599 – Sequential Decision.
Carnegie Mellon Mobile Robot Agents Eduardo Camponogara , Special Topics in Systems and Control: Agents Electrical & Computer Engineering.
ECE 4340/7340 Exam #2 Review Winter Sensing and Perception CMUcam and image representation (RGB, YUV) Percept; logical sensors Logical redundancy.
Monte Carlo Localization
Probabilistic Robotics
Location Systems for Ubiquitous Computing Jeffrey Hightower and Gaetano Borriello.
ALLIANCE: An Architecture for Fault Tolerant Multirobot Cooperation L. E. Parker, 1998 Presented by Guoshi Li April 25th, 2005.
Optimal Area Covering by Mobile Robot presented by: Nelly Chkolunov Fentahun Assefa-Dawit Fentahun Assefa-Dawit supervised by: Alexey Talyansky Technion.
Opportunistic Optimization for Market-Based Multirobot Control M. Bernardine Dias and Anthony Stentz Presented by: Wenjin Zhou.
Motion Planning in Dynamic Environments Two Challenges for Optimal Path planning.
Grid Maps for Robot Mapping. Features versus Volumetric Maps.
IROS04 (Japan, Sendai) University of Tehran Amir massoud Farahmand - Majid Nili Ahmadabadi Babak Najar Araabi {mnili,
A Decentralised Coordination Algorithm for Mobile Sensors School of Electronics and Computer Science University of Southampton {rs06r2, fmdf08r, acr,
Sonar-Based Real-World Mapping and Navigation by ALBERTO ELFES Presenter Uday Rajanna.
InerVis Mobile Robotics Laboratory Institute of Systems and Robotics ISR – Coimbra Contact Person: Jorge Lobo Human inertial sensor:
NBTC/ITU Workshop on Cross-Border Frequency Coordination June , 2015 Bangkok, Thailand.
Decentralised Coordination of Mobile Sensors School of Electronics and Computer Science University of Southampton Ruben Stranders,
Robotics.usc.edu/~embedded Physics-based Sensing and State Estimation Algorithms for Robotic Sensor Networks Gaurav. S. Sukhatme Robotic Embedded Systems.
오 세 영, 이 진 수 전자전기공학과, 뇌연구센터 포항공과대학교
Intelligent Mobile Robotics Czech Technical University in Prague Libor Přeučil
Case Base Maintenance(CBM) Fabiana Prabhakar CSE 435 November 6, 2006.
Bryan Willimon ECE 869.  Previous Work  Approach  Kinematics Calculations  Jacobian Matrix  Obstacle Avoidance  Self-Collision Avoidance  Results.
Mobile Robotics Laboratory Institute of Systems and Robotics ISR – Coimbra 3D Hand Trajectory Segmentation by Curvatures and Hand Orientation for Classification.
WMNL Sensors Deployment Enhancement by a Mobile Robot in Wireless Sensor Networks Ridha Soua, Leila Saidane, Pascale Minet 2010 IEEE Ninth International.
Mutual Exclusion in Wireless Sensor and Actor Networks IEEE SECON 2006 Ramanuja Vedantham, Zhenyun Zhuang and Raghupathy Sivakumar Presented.
Data Distribution Dynamic Data Distribution. Outline Introductory Comments Dynamic (Value based) Data Distribution: HLA Data Distribution Management –Routing.
Hybrid Behavior Co-evolution and Structure Learning in Behavior-based Systems Amir massoud Farahmand (a,b,c) (
Planning and Analysis Tools to Evaluate Distribution Automation Implementation and Benefits Anil Pahwa Kansas State University Power Systems Conference.
DARPA TMR Program Collaborative Mobile Robots for High-Risk Urban Missions Third Quarterly IPR Meeting May 11, 1999 P. I.s: Leonidas J. Guibas and Jean-Claude.
1 Robot Environment Interaction Environment perception provides information about the environment’s state, and it tends to increase the robot’s knowledge.
Behrouz Haji Soleimani Dr. Moradi. Outline What is uncertainty? Some examples Solutions to uncertainty Ignoring uncertainty Markov Decision Process (MDP)
Probabilistic Reasoning for Robust Plan Execution Steve Schaffer, Brad Clement, Steve Chien Artificial Intelligence.
Collaborative Mobile Robots for High-Risk Urban Missions Report on Timeline, Activities, and Milestones P. I.s: Leonidas J. Guibas and Jean-Claude Latombe.
Chapter 40 Springer Handbook of Robotics, ©2008 Presented by:Shawn Kristek.
Adapted from the original presentation made by the authors Reputation-based Framework for High Integrity Sensor Networks.
Common Information Model - enabling data exchanges and interoperability in the electric utility industry P&E Magazine, May 2015 Power & Energy Magazine.
1 Distributed and Optimal Motion Planning for Multiple Mobile Robots Yi Guo and Lynne Parker Center for Engineering Science Advanced Research Computer.
11 Chapter 11: Localization and Map Making a. Occupancy Grids b. Evidential Methods c. Exploration Overivew Occupancy Grids -Sonar Models -Bayesian Updating.
University of Windsor School of Computer Science Topics in Artificial Intelligence Fall 2008 Sept 11, 2008.
Cooperative Air and Ground Surveillance Wenzhe Li.
A Passive Approach to Sensor Network Localization Rahul Biswas and Sebastian Thrun International Conference on Intelligent Robots and Systems 2004 Presented.
SCALABLE INFORMATION-DRIVEN SENSOR QUERYING AND ROUTING FOR AD HOC HETEROGENEOUS SENSOR NETWORKS Paper By: Maurice Chu, Horst Haussecker, Feng Zhao Presented.
Distributed Algorithms for Multi-Robot Observation of Multiple Moving Targets Lynne E. Parker Autonomous Robots, 2002 Yousuf Ahmad Distributed Information.
Multi-Agent Exploration in Unknown Environments Changchang Wu Nov 2, 2006.
SCALABLE INFORMATION-DRIVEN SENSOR QUERYING AND ROUTING FOR AD HOC HETEROGENEOUS SENSOR NETWORKS Paper By: Maurice Chu, Horst Haussecker, Feng Zhao Presented.
Chapter 10. The Explorer System in Cognitive Systems, Christensen et al. Course: Robots Learning from Humans On, Kyoung-Woon Biointelligence Laboratory.
Behavior-based Multirobot Architectures. Why Behavior Based Control for Multi-Robot Teams? Multi-Robot control naturally grew out of single robot control.
Overivew Occupancy Grids -Sonar Models -Bayesian Updating
Cooperative Location- Sensing for Wireless Networks Authors : Haris Fretzagias Maria Papadopouli Presented by cychen IEEE International Conference on Pervasive.
1 Energy-Efficient Mobile Robot Exploration Yongguo Mei, Yung-Hsiang Lu Purdue University ICRA06.
Probabilistic Robotics Introduction.  Robotics is the science of perceiving and manipulating the physical world through computer-controlled devices.
Optimization-Based Cooperative Multi-Robot Target Tracking with Reasoning about Occlusions Karol Hausman, Gregory Kahn, Sachin Patil, Joerg Mueller, Ken.
Parallel and Distributed Simulation Data Distribution II.
Fast SLAM Simultaneous Localization And Mapping using Particle Filter A geometric approach (as opposed to discretization approach)‏ Subhrajit Bhattacharya.
Chance Constrained Robust Energy Efficiency in Cognitive Radio Networks with Channel Uncertainty Yongjun Xu and Xiaohui Zhao College of Communication Engineering,
Learning for Physically Diverse Robot Teams Robot Teams - Chapter 7 CS8803 Autonomous Multi-Robot Systems 10/3/02.
Probabilistic Robotics Introduction. SA-1 2 Introduction  Robotics is the science of perceiving and manipulating the physical world through computer-controlled.
Heterogeneous Teams of Modular Robots for Mapping and Exploration by Grabowski et. al.
COGNITIVE APPROACH TO ROBOT SPATIAL MAPPING
Overivew Occupancy Grids -Sonar Models -Bayesian Updating
CS 416 Artificial Intelligence
Presentation transcript:

Mobile Robotics Laboratory Institute of Systems and Robotics ISR – Coimbra Aim –Take advantage from intelligent cooperation between mobile robots, so as to build fast and accurate 3-D maps of unknown environments, through efficient information sharing based on information utility. A multi-robot system may be more efficient, reliable and robust than a single robot solution. The space and time distribution of multiple robots allow them to accomplish the mapping mission in less time. If there is an overlap in individual robots capabilities (redundancy), the failure of any particular robot does not compromise the overall mission accomplishment. It robots with different, complementary and specialized skills are used, they may overcome their individual limitations (e.g. different sensors, locomotion, etc.) and increase the system’s robustness. Background –Some authors have already addressed the problem, though there are important limitations that we intend to overcome: Most approaches are restricted to 2-D indoor, flat maps and use a single robot; There are some probabilistic approaches (e.g. occupancy grids), but do not minimize inter-robot communication when fusing the maps from different robots; Very few authors used entropy to formulate the expected information gain of control actions – focused on coordination or not viable in real-time. Studies about multi-robot communication focus mainly on the communication structure rather than on the communication contents. They are tailored in indoor and flat environments; our approach is aimed at using a team of cooperating mobile robots to build 3-D coverage maps of environments not necessarily flat. –There is no a principled mechanism to assess information utility, which might be used to support efficient multi-robot communication. Using efficiently communication resources is crucial to scale up MRS for teams of many robots. Research issues –Grid-based probabilistic maps [3] The occupancy of each cell – voxel – is modeled through a continuous random variable, ranging from empty cell to fully occupied voxel. Compact representation: only two parameters are stored for each voxel. Explicit representation of uncertainty through the entropy concept. Straightforward update of the voxel’s coverage belief through a Bayes Filter. –Entropy gradient-based exploration [3] Reformulation of frontier-based exploration: frontier voxels have maximum entropy gradient. –Distributed architecture model [1] Each robot is capable of building a 3-D map, though it is altruistically committed to share useful measurements with its teammates, who also may provide it with useful data. –Entropy-based measure of information utility [1] Used to support efficient information sharing. Sensory data is as useful as it contributes to improve the robot’s map. –Coordinated exploration based on the minimization of mutual information [2] Each robot avoids to sense regions that are already being sensed by other robots. Minimize robots’ interference: partial occlusions and not reachable exploration viewpoints. Selected publications [1] R. Rocha, J. Dias and A. Carvalho. Cooperative multi-robot systems: a study of vision-based 3-D mapping using information theory. In Proc. of Int. Conf. on Robotics and Automation (ICRA’2005), Barcelona, Spain, pages , Apr [2] R. Rocha, J. Dias and A. Carvalho. Entropy gradient-based exploration with cooperative robots in 3-D mapping missions. In Proc. of ICRA’2005 Workshop on Cooperative Robotics, IEEE Int. Conf. on Robotics and Automation, Barcelona, Spain, Apr [3] R. Rocha, J. Dias, and A. Carvalho. Exploring Information Theory for Vision-Based Volumetric Mapping. In Proc. of IEEE/RSJ Int. Conf. on Intelligent Robots and Systems (IROS’2005), Edmonton, Canada, pages , 2-6 Aug Cooperative Multi-Robot Systems Vision-based 3-D Mapping using Information Theory Contact Person: Rui Rocha Rui Rocha, M.Sc., Jorge Dias, Ph.D., Adriano Carvalho, Ph.D. t k =763 s H( C | M k )=91179 bits t k =1938 s H( C | M k )=70059 bits t k =9289 s H( C | M k )=28691 bits t {W} x y z Sep uncoordinatedcoordinated1/n uncoordinatedcoordinated1/n