Title: Sociable Machines
1Sociable Machines
- Cynthia Breazeal
- MIT Media Lab
- Robotic Presence Group
2Human-Robot Relations
iRobot
Hondas Asimo
Sonys Aibo
Robotic extensions
- Types of relationships
- Face to face with a robot creature
- Embodied, distal interactions through a robot
avatar - Augmented physicality through robotic extensions
- Capable machines, untrained users, human
environment - Balance human strengths with machine capabilities
- Useful and enjoyable!
3Robots in your everyday life
- Competence in
- Human engineered environment
- Human social environment
- Untrained users of different
- Age, gender, culture, etc.
- Human centered design
- Appropriate mental model
- Supports what comes naturally
- On the job learning
- Easy to teach
- Long-term relationships
- Acceptance, trust
4Sociable anthropomorphic robots
- Very complex technology
- Social interface is (ReevesNass)
- Intuitive, natural
- Untrained users
- Humanoid robots are well suited to this
hypothesis - Same morphology, sensing
- Share social, communication cues
- HRI meets HCI
- Study how people want to and do interact with
them. - Informs design
- Evaluation methods
5Three research themes
Informed by scientific understanding of
humans And animals
Evaluate robot compatibility with people
HCI
SCIENCE
ROBOTICS AI
Build robots that do real things In the real
world with real people
6Issues for sociable robots today
- The real-world is
- Complex
- Ever-changing
- Robots have limited abilities compared to people
- Motor skills
- Perceptual abilities
- Mental abilities
- Imbalance in social sophistication
- Yet, social interaction is
- Tightly coupled
- Mutually regulated
7Early exploration into sociable humanoids
- Set appropriate expectations
- Not human
- Robo-baby
- Use of expressive feedback to regulate
interaction - Emotive expressions
- Communicative displays
- Paralinguistic cues
- Use science of natural behavior as a guide
- Start simple and learn, develop
Kismet, MIT AI Lab
8Socially situated learning A path to more
capable machines?
- Issues for learning systems (robots or otherwise)
- Knowing what matters
- Knowing what action to try
- Evaluating actions
- Correcting errors
- Recognize success
- Structuring learning
- If task is pre-specified, then can do at
design-time - If not the case, then what?
- Address issues through structured social
interactions - Robots in a benevolent learning environment
9Learning from the way we teach
10Social skills that support learning
- Direct visual attention
- Indicates saliency (i.e.what matters)
- Match to human find similar things interesting
- Robot responds to attention directing cues of
people - Robot sends feedback to person for focus of
attention
11Video of attention system
12Social skills that support learning
- Recognize communicated reinforcement
- Serves as progress estimator
- Serves as signal for goal attainment
- Robot should recognize affective feedback from
human - Robot signal to human that intent was properly
understood
13Video of communicated affect
14Social skills that support learning
- Communicate internal state to human
- Allows human to
- Predict and understand robots behavior
- Tune own behavior to robot
- Improves quality of interaction
- Robot conveys internal state to human in an
intuitive manner - Can be used by both to establish better quality
instruction
15Communication of internal state
16Social skills that support learning
- Regulating the interaction
- Provides structure to the interaction
- Interactive games
- Variations on a theme
- Avoid being overwhelmed or under-stimulated
- Turn-taking as cornerstone
- Human interaction
- Human instruction
17Video of proto-conversations
18Lessons from Kismet
- Face to face
- In human terms
- Human drive to animate, anthropomorphize
- Importance of gaze
- Social qualities
- Emotive qualities
- Physical interaction
- Being and Feeling in communication
- Expressive feedback is vital
- Entrainment and accommodation
- Mutual regulation
- Being engaged vs. interacting
19Related, ongoing directions
HRI gaze studies
Smart Puzzle Fruit
HRI DESIGN
SCIENCE
Organic Robots
ENGINEERING
Sensate Silicone Skin
Sociable robots
20Sociable RobotsStan Winston Studios Media Lab
collaboration
- Next generation sociable robot
- Fully embodied
- Organic look and feel
- Highly expressive
- Socially situated learning
21Robot Avatars/PerformersStan Winston Studios
Media Lab collaboration
- Symbiotic control
- Puppeteer and single-mind performance
- Human provides content, new interfaces
- Robot local intelligence to perform content
- Physical medium for embodied interactions
- Visual, auditory, tactile
- Mobile
- Shared environment, reference frame
- Physical interactions with world and others
22Organic RobotsWhat gives a machine a living
presence?
- Organic qualities to make them familiar yet
distinct - Intriguing blend between plant and animal
- Silicone skin instead of plastic shells
- Natural and expressive movement, serpentine
- Visual perception of people (faces, movement,
color)
23Sensate Synthetic Skin
Perhaps next to the brain, the skin is the most
important of all our organ systems. Ashley
Montagu, Touching The Human Significance of the
Skin, 1986, p.4
- Sensate skin for environmental interactions
- Active perception of material characteristics
(hard, soft) - Development of novel conductive silicone sensor
- Neuro-physiological representations
24Human-Robot Interaction Studies
Controlled studies to better understand the human
side of human-robot interaction
- A series of studies to understand the human
- Focus on the important of gaze in interaction
- Compare physical (robot) verses virtual
(animation) - Examine arousal and engagement through autonomic
responses - To better understand the advantages and
limitations of physical vs. animated media