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EPFL-IST%20collaboration

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ROBOTICS EPFL-IST : a proposal for a collaboration program * – PowerPoint PPT presentation

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Title: EPFL-IST%20collaboration


1
ROBOTICS
EPFL-IST a proposal for a collaboration
program
2
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision taking and planning
  • Collaboration instruments

3
Institute for Systems and RoboticsISR/IST
Director Profª Isabel Ribeiro
4
Institute for Systems and RoboticsISR/IST
  • University based RD institution founded in
    1992, located at IST
  • Since 2002 status of Associate Laboratory
  • Multidisciplinary advanced research activities in
    Robotics and Information Processing

SCIENTIFIC DISCIPLINES
APPLICATIONS
Systems and Control Theory Signal
Processing Computer Vision Image and Video
Processing Optimization AI and Intelligent
Systems Biomedical Engineering
Autonomous Ocean Robotics Land Mobile
Robotics Search and Rescue / Surveillance Satellit
e Formation for Space Exploration Service and
Companion Robotics 3D reconstruction Mobile
Communications and Multimedia
5
Institute for Systems and RoboticsISR/IST
  • 38 - Senior Researchers with PhD (26 IST faculty)
  • 8 Post-docs
  • 45 PhD students
  • 24 M.Sc students
  • 28 Research Engineers Undergraduate students

Portugal Spain Netherlands Germany Italy USA Servi
a
28
with a scholarship from the Portuguese Science
and Technology Foundation
140 members
6
Institute for Systems and RoboticsISR/IST
RESEARCH LABS
  • COMPUTER AND ROBOT VISION (VISLab)
  • DYNAMICAL SYSTEMS AND OCEAN ROBOTICS (DSORLab)
  • INTELLIGENT SYSTEMS (ISLab)
  • MOBILE ROBOTICS (MRLab)
  • SIGNAL PROCESSING (SPLab)
  • EVOLUTIONARY SYSTEMS AND BIOMEDICAL ENG.
    (LaSEEB)

7
Institute for Systems and RoboticsISR/IST
José Santos-Victor VisLab Alexandre Bernardino
VisLab Manuel Lopes Vislab Mattijs Spaan
ISLab Jorge Salvador Marques SigProc
Lab Isabel Ribeiro MRLab Pedro Lima IS
Lab João Sequeira - MRLab
Thematic Area Robotic Monitoring and Surveillance
8
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision making and planning
  • Collaboration instruments

9
Networked Cognitive Systems
distributed networked robots and sensors (capable
of sensing acting computing) able to observe,
map and operate in possibly dynamic environments
and interacting with humans
CMU Portugal
10
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision making and planning
  • Collaboration instruments

11
Understanding human activity
Example
EU-Project CAVIAR (U. Edinburgh, IST-Lisbon,
INRIA)
12
Understanding human activity
Cameras 275 Images 352x288 pixels _at_ 25Hz
EU-Project CAVIAR (U. Edinburgh, IST-Lisbon,
INRIA)
13
Understanding human activity
Hierarchical classifier
1
Active Inactive Walking Running Fighting
2
3
Active Inactive
Walking Running Fighting
Active
Inactive
4
Walking Running
Fighting
Recognition rate 98,8
Walking
Running
14
Understanding human activity
Johansson G (1973) Visual perception of
biological motion and a model for its analysis.
Perception and Psychophysics 14201211
15
Understanding human activity
Frank PollickDpt Psychology, University of
Glasgow
16
Mirror Neurons
Gallese, Fadiga, Fogassi and Rizzolati, Brain,
1996
  • Active during observation of another monkeys or
    experimenters hands interacting with objects.
  • Observed executed actions
  • are the same

Observed executed action are NOT the same
(tool)
17
Action observation/execution ressonance
18
Motor Gesture recognition
Training Set 24 sequences 15 visual features
15 joint angles
Test Set 96 seqs.
19
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision making and planning
  • Collaboration instruments

20
Humanoid Robotics
  • VISLAB IST/ISR

21
Challenges
  • Daily Life Environments
  • Unstructured and Dynamic Scenarios
  • Friendly Interaction
  • Advanced Recognition and Expressive Capabilities
  • Easy Programming and Adaptation
  • Learning by exploration and imitation

22
The ROBOT-CUB Project
  • Design and construction of a humanoid robotic
    platform for research in cognition and
    cognitive development.
  • Consortium roboticists neuroscientists
    psychologists ..

2.5 yr child, 23kg 50 DOFs
iCub
23
A Developmental Approach
  • Self-Awareness
  • Learning about the self
  • Auto-observation
  • World-Awareness
  • Learning about the world
  • Object affordances
  • Imitation
  • learning about others
  • View point transformation
  • Task imitation metrics

24
A Developmental Approach
  • Self-Awareness
  • Learning about the self
  • Auto-observation
  • World-Awareness
  • Learning about the world
  • Object affordances
  • Imitation
  • learning about others
  • View point transformation
  • Task imitation metrics

25
Control and learning with redundant robotic
systems
  • Learn sensory-motor maps
  • Function approximation methods
  • Jacobian estimation methods
  • Control
  • Optimal control

26
I - Sensory-motor maps
Sensory Motor appearance/position/velocity
joint position/velocity
Reconstruct (backward model)
Predict (forward model)
Static vs Incremental To be used in open-loop or
closed-loop control Full vs Partial Restricting
all or part of the available degrees of
freedom Geometric vs Radiometric Geometric or
other kind of features
27
Head Gaze Control
28
Head Gaze Control
29
A Developmental Approach
  • Self-Awareness
  • Learning about the self
  • Auto-observation
  • World-Awareness
  • Learning about the world
  • Object affordances
  • Imitation
  • learning about others
  • View point transformation
  • Task imitation metrics

30
Affordances
Affordances as models for prediction, action
selection and execution
  • action possibilities on a certain object, with
    reference to the actors capabilities James J.
    Gibson, 1979
  • links Actions, Objects and the consequences of
    acting on objects (Effects).
  • Grounded of the particular experience and
    capabilities of the agent.

31
Example Grasp, Tap Touch
  • Effects
  • Contact
  • Object Motion
  • Objects have
  • Two different shapes
  • Two sizes
  • Three colors

32
Exploring the space of actions
33
Using the affordances
  • Probabilistic inference planning for
    recognition, prediction and decision making
  • Imitation, action clustering
  • Hierarchical organization for sequences

34
A Developmental Approach
  • Self-Awareness
  • Learning about the self
  • Auto-observation
  • World-Awareness
  • Learning about the world
  • Object affordances
  • Imitation
  • learning about others
  • View point transformation
  • Task imitation metrics

35
(No Transcript)
36
Affordance based imitation
  • Affordances
  • Model Learning
  • Imitation framework
  • Combining affordances imitation

37
Imitation framework
  1. Observe the demonstration.
  2. Use affordances to interpret what actions would
    give the same effect.
  3. Create a function r that describes the task
  4. Select the actions to accomplish the task r
  5. Perform the imitation

38
Experiments
39
Inaccurate and incomplete demonstration
40
Imitation
41
Future
Biomimetic Control Interaction Behaviour
Control Learning Attention Modulation
Setups
iCub Baltazar Sensors Data Glove, Flock of
Birds, Tobii, .
42
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision making and planning
  • Collaboration instruments

43
Distributed decision making
  • Research Activities
  • Distributed Autonomous Sensor and Robot Networks
  • Cooperative perception
  • Cooperative navigation
  • Cooperative plan representation and task
    coordination
  • Modeling, analysis and control of robot swarms

44
Distributed decision making
  • Research Activities
  • Distributed Autonomous Sensor and Robot Networks
  • Cooperative perception
  • Bayesian strategies to fuse uncertain information
    from spatially distributed sensors
  • Handling disagreement
  • Taking decisions (e.g., using POMDPs) to move
    mobile sensors to suitable locations to improve
    perception
  • Probabilistic language which takes into
    account observation models, dependence on sensor
    location w.r.t. object, robot location
    uncertainty

Im dead, and I cant see the ball
  • Possible applications
  • soccer robots
  • rescue robot fleets (with aerial and land
    robots)
  • tracking moving objects in distributed sensor
    networks

45
Distributed decision making
  • Research Activities
  • Distributed Autonomous Sensor and Robot Networks
  • Cooperative navigation
  • Cooperative self-localization
  • Formation control
  • Decentralized low-communication formation full
    state estimation
  • Possible applications
  • formation flying spacecraft
  • rescue robot fleets (with aerial and land robots)

46
Distributed decision making
  • Research Activities
  • Distributed Autonomous Sensor and Robot Networks
  • Plan representation and task coordination
  • Decentralized Sequential Decision Making methods
    (MDPs, POMDPs)
  • Multi-Robot Reinforcement Learning (especially in
    POMDPs)
  • Deterministic Discrete Event and Hybrid Systems
    modeling, analysis and synthesis
  • Possible applications
  • any multi-robot team with a small number of
    robots (e.g., up to 10)

47
Distributed decision making
  • Research Activities
  • Distributed Autonomous Sensor and Robot Networks
  • Modeling, analysis and control of robot swarms
  • Stochastic Discrete Event and Hybrid Systems
    modeling, analysis and synthesis
  • Bio-inspired models and methodologies (e.g., from
    the immune system)
  • Possible applications
  • any multi-robot team with a large number of
    robots (e.g., larger than 100)
  • cell population dynamics
  • surveillance by networks of sensors robots

48
Robotics initiative
  • ISR/IST - Who we are
  • Networked Cognitive Systems
  • Human action understanding and surveillance
  • Cognitive robots (humanoids)
  • Distributed decision making and planning
  • Collaboration instruments

49
Networked Cognitive Systems
  • Potential collaborators _at_ EPFL
  • Prof. Aude Billard, LASA - Learning Algorithms
    and Systems Laboratory, Learning and Dynamical
    Systems, Neural Computation and Modelling,
    Human-Machine Interaction, Humanoids Robotics,
    Mechatronics, Design of Therapeutic and
    Educational Robotic Systems EU project Robotcub
  • Prof. Auke Jan Ijspeert, BIRG - Biologically
    Inspired Robotics Group, Articulated and
    biologically inspired robotics, Modular robotics,
    Humanoid robotics, Control of locomotion and of
    coordinated movements in robots, Computational
    neuroscience, neural networks, sensorimotor
    coordination in animals EU project Robotcub
  • Prof. Alcherio Martinoli, MICS - Mobile
    Information and Communication Systems,
    swarm-intelligence, networked robotic systems,
    swarm robotics, multi-robot systems, sensor
    actuator networks existing personal contacts

50
Networked Cognitive Systems
  • Potential collaborators _at_ EPFL
  • Prof. Dario Floreano, Laboratory of Intelligent
    Systems (I2S - Institut d'Ingénierie des
    Systèmes, Faculté STI Sciences et Techniques de
    l'Ingénieur), Evolutionary systems, Bio-inspired
    robots, robot swarms
  • Prof. Thomas Henzinger, Models and Theory of
    Computation Laboratory (IIF - Institute of Core
    Computing Science, IC - School of Computer and
    Communication Sciences), Hybrid Automata
    Verification, Systems Biology
  • Prof. Herve Bourlard, LIDIAP/ EPFL and IDIAP -
    Dalle Molle Institute for Perceptual Artificial
    Intelligence, Speech Processing, Computer Vision,
    Information Retrieval, Biometric Authentication,
    Multimodal Interaction and Machine Learning. EU
    Project Submission

51
Contact José Santos-Victor jasv_at_isr.ist.utl.pt
Credits Alexandre Bernardino, Manuel
Cabido Lopes,Luis Montesano, Ricardo
Beira, Luis Vargas. URL
http//vislab.isr.ist.utl.pt
www.robotcub.org
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