Gaussian Process Based Filtering for Neural Decoding

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1 K. Lakshmanan, H. Hu, and A. Venkatraman Gaussian Process Based Filtering for Neural Decoding Karthik Lakshmanan, Humphrey Hu, Arun Venkatraman April 24, 2013 Sony Pictures University of Pittsburgh http://cs.cmu.edu/~arunvenk/academics/neu ral/

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Gaussian Process Based Filtering for Neural Decoding. Karthik L akshmanan, Humphrey Hu, Arun Venkatraman April 24, 2013. University of Pittsburgh . Sony Pictures. http://cs.cmu.edu/~arunvenk/academics/neural/. Setup & Motivation. Proposed Method. - PowerPoint PPT Presentation

Transcript of Gaussian Process Based Filtering for Neural Decoding

Density Ratio Estimation

Gaussian Process Based Filtering for Neural DecodingKarthik Lakshmanan, Humphrey Hu, Arun VenkatramanApril 24, 2013Sony PicturesUniversity of Pittsburgh

http://cs.cmu.edu/~arunvenk/academics/neural/# K. Lakshmanan, H. Hu, and A. VenkatramanSetup & Motivation# K. Lakshmanan, H. Hu, and A. Venkatraman2Model non-linear observation mapping with Gaussian Processes (GPs)Need to use Unscented Kalman Filter (UKF)

However, this can be slow to evaluate

Proposed Method# K. Lakshmanan, H. Hu, and A. Venkatraman3Dimensionality Reduction

# K. Lakshmanan, H. Hu, and A. Venkatraman

Results & ConclusionImproved decoding & produced a higher fidelity generative (observation) model

Trajectory ReconstructionFinal Cursor Position Neural Reconstruction% Improvement of GP-UKF over KF (both non-dim-reduced)33.6%42.8%43.4%% Improvement of GP-UKF (w/PCA) over KF (non-dim-reduced)22.2%16.8%-% Improvement of GP-UKF (w/FA) over KF (non-dim-reduced)-0.80%-7.20%-(trained on 1/5 of training data)

# K. Lakshmanan, H. Hu, and A. Venkatraman