A Brave New Matrix Theophanes E. Raptis Division of Applied Technology R&D Unit NCSR DEMOKRITOS 22 April 2008.

Slides:



Advertisements
Similar presentations
Introduction to Machine Learning BITS C464/BITS F464
Advertisements

Outline Administrative issues Course overview What are Intelligent Systems? A brief history State of the art Intelligent agents.
Feature Selection as Relevant Information Encoding Naftali Tishby School of Computer Science and Engineering The Hebrew University, Jerusalem, Israel NIPS.
QUANTUM ROBOTICS IN ROBOT THEATRE. Quantum Logic Binary Logic Fuzzy Logic Quantum Signals and Automata 0, 1 [0,1] Hilbert Space, Bloch Sphere.
Dealing with Complexity Robert Love, Venkat Jayaraman July 24, 2008 SSTP Seminar – Lecture 10.
ECE 8443 – Pattern Recognition ECE 3163 – Signals and Systems Objectives: Review Resources: Wiki: State Variables YMZ: State Variable Technique Wiki: Controllability.
From the NXT top menu Connect desired hardware as indicated Enter a command in the box indicated from the menu provided Repeat for all 5 boxes.
Overview of Computer Vision CS491E/791E. What is Computer Vision? Deals with the development of the theoretical and algorithmic basis by which useful.
Quantum Automata Formalism. These are general questions related to complexity of quantum algorithms, combinational and sequential.
Symbolic Encoding of Neural Networks using Communicating Automata with Applications to Verification of Neural Network Based Controllers* Li Su, Howard.
Artificial Intelligence CHA2555 Lee McCluskey CW3/10 Resources on:
October 27, 2009Introduction to Cognitive Science Lecture 13: The Computational Approach 1 AI – The Movie Many people will leave the cinema after seeing.
제 5 주. Art and Design Computer Animation: from Avatars to Unrestricted Autonomous Actors A. Pina, E. Cerezo and F. Seron, Computers & Graphics, vol. 24,
Introduction to Computer and Programming CS-101 Lecture 6 By : Lecturer : Omer Salih Dawood Department of Computer Science College of Arts and Science.
Digital signal Processing
Artificial Intelligence By John Debovis & Keith Bright.
A Brave New Matrix Theophanes E. Raptis Division of Applied Technology R&D Unit NCSR DEMOKRITOS 22 April 2008.
Novel Sensing Networks for Intelligent Monitoring (Newton) Z Q Lang, H Chen, T Dodd Department of Automatic Control & Systems Engineering University of.
Science of Intelligent Systems
Artificial Intelligence Intro Agents
1.stránka 1. 2 Czech Technical University in Prague International Computer Science Program Faculty of Electrical Engineering OPEN INFORMATICS bachelor.
 The most intelligent device - “Human Brain”.  The machine that revolutionized the whole world – “computer”.  Inefficiencies of the computer has lead.
5. Alternative Approaches. Strategic Bahavior in Business and Econ 1. Introduction 2. Individual Decision Making 3. Basic Topics in Game Theory 4. The.
CELLULAR AUTOMATA RULES GENERATOR FOR MICROBIAL COMMUNITIES CALIFORNIA STATE UNIVERSITY, SAN BERNARDINO SCHOOL OF COMPUTER SCIENCE & ENGINEERING By Melissa.
Lecture 10: 8/6/1435 Machine Learning Lecturer/ Kawther Abas 363CS – Artificial Intelligence.
Artificial Intelligence Intro Agents
REVERSIBILITY AND CRITICALITY IN A DETERMINISTIC “SELF- EXTRACTING” BAK-SNEPPEN AUTOMATON Theofanis Raptis Computational Applications Group Division of.
Cellular Automata & DNA Computing 우정철. Definition Of Cellular Automata Von Von Neuman’s Neuman’s Definition Wolfram’s Wolfram’s Definition Lyman.
REVERSIBLE CELLULAR AUTOMATA WITHOUT MEMORY Theofanis Raptis Computational Applications Group Division of Applied Technologies NCSR Demokritos, Ag. Paraskevi,
Informatics I-586 – Artificial Life as an approach to Artificial Intelligence Scott McCaulay Applications of Artificial Life Methods in the Study of Music.
Autonomy and Artificiality Margaret A. Boden Hojin Youn.
1 New Y. X. Zhong Chinese Association for AI (CAAI) University of Posts & Telecom, Beijing -- to The Celebration of The 50 th Anniversary.
I Robot.
What is Real Now? Artificial Intelligence By Geena Yarbrough.
Chaotic Robotics Callie Branyan Mechanical Engineering A Study of Analog Robots and their Nonlinear Behavior Arizona Space Grant Symposium April 18, 2015.
Major Disciplines in Computer Science Ken Nguyen Department of Information Technology Clayton State University.
Information & Communication INST 4200 David J Stucki Spring 2015.
Application of AI techniques for Computer Games BSc Computer Games Programming, 2006 Julien Delezenne GAMES ARTIFICIAL INTELLIGENCE.
AI: Can Machines Think? Juntae Kim Department of Computer Engineering Dongguk University.
Theory of Computations III CS-6800 |SPRING
1 Viewing Vision-Language Integration as a Double-Grounding case Katerina Pastra Department of Computer Science, Natural Language Processing Group, University.
The Matrix Theory of Objects An Update Sergio Pissanetzky Model Universality Behavior Constraints Dynamics Cost Chaos Attractors.
“It’s the “It’s the SYSTEM !” SYSTEM !” Complex Earth Systems
3rd Indian International Conference on Artificial Intelligence 2007, Puna, India Jan Rauch, KIZI.
Higher Vision, language and movement. Strong AI Is the belief that AI will eventually lead to the development of an autonomous intelligent machine. Some.
Digital Interests Larry Dailey Joseph DeLappe Sushil J. Louis Media Art Computer Science and Engineering.
Matjaž Gams Jozef Stefan Institute, Ljubljana University Slovenia.
CS382 Introduction to Artificial Intelligence Lecture 1: The Foundations of AI and Intelligent Agents 24 January 2012 Instructor: Kostas Bekris Computer.
제 2 주. 인공생명의 개요 Research into models and algorithms of artificial life H. Jiyang, H. Haiying and F. Yongzhe, Artificial Intelligence in Engineering, vol.
CS654: Digital Image Analysis Lecture 11: Image Transforms.
GAME PROGRAMMER By: Aaron Ramos and Oscar Quiles.
  Computer vision is a field that includes methods for acquiring,prcessing, analyzing, and understanding images and, in general, high-dimensional data.
Akram Salah ISSR Basic Concepts Languages Grammar Automata (Automaton)
DIGITAL COMMUNICATION. Introduction In a data communication system, the output of the data source is transmitted from one point to another. The rate of.
Sub-fields of computer science. Sub-fields of computer science.
Electrical Engineering
Advanced Image Processing
Artificial Intelligence ppt
Instrumentation and Control Systems
4.3 Feedforward Net. Applications
4.2 Data Input-Output Representation
Game Controller Lesson Two.
Type your poster title here
Cellular Telephone Networks
Wellcome Centre for Neuroimaging at UCL
Lecture One: Automata Theory Amjad Ali
Von Neumann’s Automaton and Viruses
Structural Emergence in Partially Ordered Sets
MOSCOW FINANCIAL FORUM
1 What do you think AI is? AI, difficult to define
Presentation transcript:

A Brave New Matrix Theophanes E. Raptis Division of Applied Technology R&D Unit NCSR DEMOKRITOS 22 April 2008

5 Interrelated themes  Artificial Volition-Art. Emotion – Art. Consciousness – Art. Intelligence –ALife  Work started in UK ( “Applied Endophysics Ltd” )  MoD Report on “Unmanned Vehicles” 2002  Accomplishment: “Universal Lexicons Theory” – A unified theory of information production, transmission and dissipation based on Number Theory

The AVE Module (Artificial Volition Engine)  Traditional A.I. fails to understand Volition (“will”) based on desire  Recent advances in Robotics – 5-Dim Personality Model – Emotions Generator (Waseda University)  Predescessor: PROLOG based Goal- Planning for Autonomous Agents  Need to introduce Non-linearity and Non- stationarity – Game Theoretic Approaches

The Symbolic Transform  UL theory allows to find new information measures and functional indices for image compression and classification.  The purpose would be to be able to categorize faces or other objects by a bunch of unique complex vectors. Other interesting properties of this indexing scheme are currently under investigation

Turn a Face to a Signal! Input : N x M Image Matrix Output : 1-Dim Signal You can even hear what your face “sounds” like!

Cellular Automata : ALife and Digital Universes "Reversible Cellular Automata without memory.". 19th summer School on Nonlinear Science and Complexity. July 2006 Reversibility and Criticality in a Deterministic "Self-Extracting" Bak Sneppen Automaton“ Poster 20th Nonlinear Science and Complexity International Conference, Patras, July 2007Poster