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BRAIN INSPIRED COGNITIVE SYSTEMS 14 – 16 July 2010, Madrid, Spain . Third International ICSC Symposium on Models of Consciousness ( MoC 2010). Towards the Generation of Visual Qualia in Artificial Cognitive Architectures Raúl Arrabales, Agapito Ledezma , Araceli Sanchis
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BRAIN INSPIRED COGNITIVE SYSTEMS14 – 16 July 2010, Madrid, Spain. Third International ICSC SymposiumonModels of Consciousness (MoC 2010) Towards the Generation of Visual Qualia in Artificial CognitiveArchitectures Raúl Arrabales, Agapito Ledezma, Araceli Sanchis Carlos III University of MadridComputerScienceDepartment
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
Main Objective Explore the possibility of specification of the content of visual qualia using a computational model based on the Global Workspace Theory.
Qualia in Humans LIGHT Retina Sensation Spike Stream ? SENSES BRAIN MIND
Qualia in Humans LIGHT How are sensations produced? Retina Sensation Spike Stream ? SENSES BRAIN MIND
The Mind-Body Problem BRAIN MIND MaterialObservable ImmaterialPrivate
Dimensions of Consciousness Phenomenal Consciousness Functional Consciousness Responses Stimuli
Dimensions of Consciousness Phenomenal Consciousness Qualia “Hard Problem” Functional Consciousness “Easy Problems” Responses Stimuli
Dimensions of Consciousness Phenomenal Consciousness Qualia “Hard Problem” Functional Consciousness “Easy Problems” Responses Stimuli
What are qualia? Integrated Ineffable “Enjoying a song” Qualia Private Structured Presence “The redness of red” Sensations “Hard Problem” “The flavor of an ice-cream” “A headache”
Why are qualia so elusive? “Red” “Red” A B
How to study phenomenology? Heterophenomenology(Dennett, 1991). Qualia 1st Person Observations
How to study phenomenology? Heterophenomenology(Dennett, 1991). Qualia 1st Person Observations Report Inspection 2nd Person Observations 3rd Person Observations
How to study phenomenology? Heterophenomenology(Dennett, 1991). Qualia 1st Person Observations Report Inspection 2nd Person Observations 3rd Person Observations
Machine Consciousness Human Consciousness Physical Neurophysiologic Cognitive Analysis and Modeling Human Consciousness Models Adaptation to Computational Models Comparison (Synthetic Phenomenology) Machine Consciousness Models Design and Implementation Artificial Neural Networks Hybrid Systems Cognitive Architectures Machine Consciousness
How to study phenomenology? Qualia 1st Person Observations Report Qualia 2nd Person Observations 1st Person Observations Report 2nd Person Observations
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
Working Hypotheses about Qualia • They are related to cognitive functions. • Their contents have a functional role. • They are the ultimate outcome of the perception process.
Stage 3 Self-Modulation and Report Meta-Management Perceptual Content Stage 2 Introspective Perceptual Representation Meta-Representation Exteroceptive Sensing Proprioceptive Sensing Stage 1 Perceptual Content Representation Visual Sensors (dot stimulus) Somatosensory System (sensor positions) Sensory Data Modulation / Reportability World Reconstruction Introspection Proposed Model
Application to Visual Experience 150 ms 10 ms 150 ms 10 ms
Stage 3 I report to be watching a moving dot Meta-Management Perceptual Content Stage 2 Whatisitliketosee a movingdot Meta-Representation Exteroceptive Sensing Proprioceptive Sensing Stage 1 Moving dot Visual Sensors (dot stimulus) Somatosensory System (sensor positions) Sensory Data (left dot – blank – right dot – blank) Modulation / Reportability World Reconstruction Introspection Proposed Model
Context Formation and Executive Guidance (Director, scene designer, etc. behind the scenes) WorkingMemory (Scene) Spotlight Broadcast Broadcast SpecializedProcessors (Audience) Interim coalition GWT Computational Model Global Workspace Theory (Baars, 1988, 1997).
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
CERA-CRANIUM A framework for experimentation with cognitive models of consciousness. CERA-CRANIUM Model Sensors Actuators Agent
CERA-CRANIUM • CERA (Conscious and Emotional Reasoning Architecture) • Layered Control Architecture • CRANIUM (Cognitive Robotics Architecture Neurologically Inspired Underlying Manager) • Runtime Environment for the creation and management of specialized processors sharing a global working memory.
Core Layer ROBOT CERA Commands Sensor Service SensorServices Physical Layer Sensors Mission-specific Layer Single Percepts Complex Percepts MotorServices Core Layer Actuators CRANIUM Workspace … CERA-CRANIUMMinimal Implementation • What should be the next action of the agent? • What should be the next “conscious” content of the agent? CERA Viewer
CRANIUM Workspace … CERA-CRANIUM Observer CERA. S-M CERA. Physical Layer CERA.Core Layer (focus onsaliencies) Sensors Sensor Service Sensor Service Complex Percepts Simple Percepts … … Sensor Service Pre-processors Aggregators
Sensor Preprocessors Percept Aggregators CRANIUM Workspace … CERA-CRANIUM Observer CERA. S-M CERA. Physical Layer CERA.Core Layer (focus onsaliencies) Sensors Sensor Service Sensor Service Complex Percepts Simple Percepts … … Sensor Service Pre-processors Aggregators Sensor Readings Complex Percepts Simple Percepts t j N(δSj) M(SCJ) Timer N(δSJ) Proprioception
Context Control Signal Context Formation ProcessesCoordination Processes GOALS Working Memory(GW) Sensors ArtificialQualia “Spotlight” Asynchronous InputHigh Bandwidth Sequential OutputLow Bandwidth Specialized Processors Integrated Multimodal Representations Raw Monomodal SensoryData CERA-CRANIUM Observer
Contextualization • Bottom-Up: • Native Spatiotemporal contexts. • Top Down: • Specific contexts induced from the Core Layer.
Contextualization Single Percepts Complex Percept
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
Specialized Processors • Region of Interest detector for white objects. • Motion Detector.
Visual Stimuli “I see an object moving downwards” Human Observer Content Specification can be directly compared Artificial Qualia Specification Robot Cam CERA Viewer CERA CRANIUM Visual Experience
Visual Stimuli “I see an object moving downwards” Human Observer Content Specification can be directly compared Artificial Qualia Specification Robot Cam CERA Viewer CERA CRANIUM Visual Experience • Visual Stimuli: • S1: Static white object in a dark background. • S2: White object moving along a rectilinear trajectory. • S3: Two stationary white blinking rounded spots.
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
Preliminary Results (a) (b) RDS SIMULATOR “Object moving uniformly from the right to the left” S2 SIMULATED CAM S1 (c) “Ball moving back and forth from the left to the right” CERA VIEWER “Objet resting on the ground” S3
Contents • Introduction • Computational Model • CERA-CRANIUM • Experimental Setting • Preliminary Results • Conclusions • Future Work
Conclusions • Using GWT will shed light on whether or not the model can account for typical human perceptual effects. • Synthetic Phenomenology might help us understand qualia. • For instance: Does the presence of perceptual illusions correlates with better perception accuracy in noisy environments?
Future Work • More complex stimuli. Multimodal stimuli. Real world scenarios. • Better specification and representation of the content of Artificial Qualia. • Improve the Cognitive Architecture: • Expectations. • Emotions. • …