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Difference between revisions of "Neural Acoustic Processing Lab"
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Landonodnal (talk | contribs) (Created page with "Category:Organizations "Our lab is dedicated to the exploration of human speech communication. We are working on identifying the representational and computational charact...") |
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[[Category:Organizations]] | [[Category:Organizations]] | ||
"Our lab is dedicated to the exploration of human speech communication. We are working on identifying the representational and computational characteristics of the brain regions and biological neural networks involved in naturalistic speech communication, and integrating these attributes into novel mathematical models. More accurate neuro-inspired models will advance our knowledge of how the brain extracts and processes information, and will close the performance gap between biological and artificial computing." | "Our lab is dedicated to the exploration of human speech communication. We are working on identifying the representational and computational characteristics of the brain regions and biological neural networks involved in naturalistic speech communication, and integrating these attributes into novel mathematical models. More accurate neuro-inspired models will advance our knowledge of how the brain extracts and processes information, and will close the performance gap between biological and artificial computing." | ||
==Links== | ==Links== | ||
[http://naplab.ee.columbia.edu/ Website] | [http://naplab.ee.columbia.edu/ Website] | ||
Latest revision as of 01:37, 24 April 2023
"Our lab is dedicated to the exploration of human speech communication. We are working on identifying the representational and computational characteristics of the brain regions and biological neural networks involved in naturalistic speech communication, and integrating these attributes into novel mathematical models. More accurate neuro-inspired models will advance our knowledge of how the brain extracts and processes information, and will close the performance gap between biological and artificial computing."