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

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Presentation on theme: "Applications of Independent Component Analysis Terrence Sejnowski Computational Neurobiology Laboratory The Salk Institute."— Presentation transcript:

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

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

4 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.

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

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

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

8 Learning Image Features

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10 Automatic Image Segmentation

11 Barcode Classification MatrixLinear Postal

12 Learned ICA Output Filters Matrix Postal Linear

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

14 Image De-noising

15 Filling in missing data

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

17 Eye movement Muscle activity

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

23 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.

24 ICA-2001: http://www.ica2001.org Contact: terry@salk.edu


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