Applications of Independent Component Analysis Terrence Sejnowski Computational Neurobiology Laboratory The Salk Institute.

Slides:



Advertisements
Similar presentations
FMRI Methods Lecture 10 – Using natural stimuli. Reductionism Reducing complex things into simpler components Explaining the whole as a sum of its parts.
Advertisements

Independent Component Analysis
Independent Component Analysis: The Fast ICA algorithm
Underwater Acoustic MIMO Channel Capacity
ECE 8443 – Pattern Recognition Objectives: Course Introduction Typical Applications Resources: Syllabus Internet Books and Notes D.H.S: Chapter 1 Glossary.
Artifact (artefact) reduction in EEG – and a bit of ERP basics CNC, 19 November 2014 Jakob Heinzle Translational Neuromodeling Unit.
Laboratory for Social & Neural Systems Research (SNS) PATTERN RECOGNITION AND MACHINE LEARNING Institute of Empirical Research in Economics (IEW)
黃文中 Preview 2 3 The Saliency Map is a topographically arranged map that represents visual saliency of a corresponding visual scene. 4.
Independent Component Analysis & Blind Source Separation
REAL-TIME INDEPENDENT COMPONENT ANALYSIS IMPLEMENTATION AND APPLICATIONS By MARCOS DE AZAMBUJA TURQUETI FERMILAB May RTC 2010.
Independent Component Analysis (ICA)
Application of Statistical Techniques to Neural Data Analysis Aniket Kaloti 03/07/2006.
Independent Component Analysis & Blind Source Separation Ata Kaban The University of Birmingham.
3/24/2006Lecture notes for Speech Communications Multi-channel speech enhancement Chunjian Li DICOM, Aalborg University.
Subband-based Independent Component Analysis Y. Qi, P.S. Krishnaprasad, and S.A. Shamma ECE Department University of Maryland, College Park.
Independent Component Analysis (ICA) and Factor Analysis (FA)
ICA of Functional MRI Data: An Overview V.D. Calhoun, T. Adali, L.K. Hansen, et al., ICA 2003 Symposium Paper Presentation by Avshalom Elyada February.
Computer Science Department A Speech / Music Discriminator using RMS and Zero-crossings Costas Panagiotakis and George Tziritas Department of Computer.
Optimal Adaptation for Statistical Classifiers Xiao Li.
A Quick Practical Guide to PCA and ICA Ted Brookings, UCSB Physics 11/13/06.
EE491D Special Topics in Communications Adaptive Signal Processing Spring 2005 Prof. Anthony Kuh POST 205E Dept. of Elec. Eng. University of Hawaii Phone:
Independent Component Analysis From PCA to ICA Bell Sejnowski algorithm Kurtosis method Demonstrations.
ICA Alphan Altinok. Outline  PCA  ICA  Foundation  Ambiguities  Algorithms  Examples  Papers.
Applications of Signals and Systems Fall 2002 Application Areas Control Communications Signal Processing.
Filtering Separating what you want from what you have.
Analytical Techniques
HELSINKI UNIVERSITY OF TECHNOLOGY LABORATORY OF COMPUTER AND INFORMATION SCIENCE NEURAL NETWORKS RESEACH CENTRE Variability of Independent Components.
Survey on ICA Technical Report, Aapo Hyvärinen, 1999.
Hossein Sameti Department of Computer Engineering Sharif University of Technology.
GCT731 Fall 2014 Topics in Music Technology - Music Information Retrieval Overview of MIR Systems Audio and Music Representations (Part 1) 1.
ERP DATA ACQUISITION & PREPROCESSING EEG Acquisition: 256 scalp sites; vertex recording reference (Geodesic Sensor Net)..01 Hz to 100 Hz analogue filter;
ECSE 6610 Pattern Recognition Professor Qiang Ji Spring, 2011.
Applications of Signals and Systems Application Areas Control Communications Signal Processing (our concern)
CSC361/661 Digital Media Spring 2002
-1- ICA Based Blind Adaptive MAI Suppression in DS-CDMA Systems Malay Gupta and Balu Santhanam SPCOM Laboratory Department of E.C.E. The University of.
Research course on functional magnetic resonance imaging Lecture 2
Brain Innovation BVTurbo BrainVoyager Training Course January, 2011 Real-time Independent Component Analysis of functional MRI time-series A new TBV (3.0)
INDEPENDENT COMPONENT ANALYSIS OF TEXTURES based on the article R.Manduchi, J. Portilla, ICA of Textures, The Proc. of the 7 th IEEE Int. Conf. On Comp.
Heart Sound Background Noise Removal Haim Appleboim Biomedical Seminar February 2007.
Parallel ICA Algorithm and Modeling Hongtao Du March 25, 2004.
Independent Component Analysis Zhen Wei, Li Jin, Yuxue Jin Department of Statistics Stanford University An Introduction.
ECE 8443 – Pattern Recognition LECTURE 10: HETEROSCEDASTIC LINEAR DISCRIMINANT ANALYSIS AND INDEPENDENT COMPONENT ANALYSIS Objectives: Generalization of.
An Introduction to Blind Source Separation Kenny Hild Sept. 19, 2001.
EXPERIMENT DESIGN  Variations in Channel Density  The original 256-channel data were downsampled:  127 channel datasets  69 channels datasets  34.
STATISTICS FOR HIGH DIMENSIONAL BIOLOGICAL RECORDINGS Dr Cyril Pernet, Centre for Clinical Brain Sciences Brain Research Imaging Centre
Computational Intelligence: Methods and Applications Lecture 8 Projection Pursuit & Independent Component Analysis Włodzisław Duch Dept. of Informatics,
PCA vs ICA vs LDA. How to represent images? Why representation methods are needed?? –Curse of dimensionality – width x height x channels –Noise reduction.
ECE 8443 – Pattern Recognition ECE 8527 – Introduction to Machine Learning and Pattern Recognition LECTURE 12: Advanced Discriminant Analysis Objectives:
Dongxu Yang, Meng Cao Supervisor: Prabin.  Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum.
EEG DATA EEG Acquisition: 256 scalp sites; vertex recording reference (Geodesic Sensor Net)..01 Hz to 100 Hz analogue filter; 250 samples/sec. EEG Preprocessing:
Independent Component Analysis Independent Component Analysis.
Feature Selection and Extraction Michael J. Watts
Chapter 1. SIGNAL PROCESSING:  Signal processing is concerned with the efficient and accurate extraction of information in a signal process.  Signal.
Principal Component Analysis (PCA).
Introduction to Independent Component Analysis Math 285 project Fall 2015 Jingmei Lu Xixi Lu 12/10/2015.
Chapter 15: Classification of Time- Embedded EEG Using Short-Time Principal Component Analysis by Nguyen Duc Thang 5/2009.
Extraction of Individual Tracks from Polyphonic Music Nick Starr.
Research Process. Information Theoretic Blind Source Separation with ANFIS and Wavelet Analysis 03 February 2006 서경호.
LECTURE 11: Advanced Discriminant Analysis
Machine Learning Independent Component Analysis Supervised Learning
Brain Electrophysiological Signal Processing: Preprocessing
LECTURE 01: COURSE OVERVIEW
Fabien LOTTE, Cuntai GUAN Brain-Computer Interfaces laboratory
Major Project Presentation Phase - I
Principal Component Analysis (PCA)
The Sound of the Original Sentences
LECTURE 01: COURSE OVERVIEW
Curse of Dimensionality
Feature Selection in BCIs (section 5 and 6 of Review paper)
Presentation transcript:

Applications of Independent Component Analysis Terrence Sejnowski Computational Neurobiology Laboratory The Salk Institute

PCA finds the directions of maximum variance ICA finds the directions of maximum independence

Principle: Maximize Information Q:Q: How to extract maximum information from multiple visual channels ? Set of 144 ICA filters AA: ICA does this -- it maximizes joint entropy & minimizes mutual information between output channels (Bell & Sejnowski, 1995). ICA produces brain-like visual filters for natural images.

Example: Audio decomposition Play MixturesPlay Components Perform ICA Mic 1 Mic 2 Mic 3 Mic 4 Terry Scott Te-WonTzyy-Ping

ICA Applications Sound source separation Image processing Sonar target identification Underwater communications Wireless communications Brain wave analysis (EEG) Brain imaging (fMRI)

Recordings in real environments Separation of Music & Speech Experiment-Setup: - office room (5m x 4m) - two distant talking mics - 16kHz sampling rate 40cm 60cm

Learning Image Features

Automatic Image Segmentation

Barcode Classification MatrixLinear Postal

Learned ICA Output Filters Matrix Postal Linear

Barcode Classification Results Classifying 4 data sets: linear, postal, matrix, junk

Image De-noising

Filling in missing data

ICA applied to Brainwaves An EEG recording consists of activity arising from many brain and extra-brain processes

Eye movement Muscle activity

WHAT ARE THE INDEPENDENT COMPONENTS OF BRAIN IMAGING? Measured Signal Task-related activations Arousal Physiologic Pulsations Machine Noise ?

Functional Brain Imaging Functional magnetic resonance imaging (fMRI) data are noisy and complex. ICA identifies concurrent hemodynamic processes. Does not require a priori knowledge of time courses or spatial distributions.

ICA-2001: Contact: