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Not teaching in Spring 2026 | |||||
EESC 6368 Carlos Busso Recabarren | |||||
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Not teaching in Spring 2026 | |||||
EESC 6368 Carlos Busso Recabarren | |||||
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Multimodal Signal Processing
EESC 6368
Erik Jonsson School of Engineering and Computer Science
Theory and applications in the field of multimodal signal processing. Robustness and performance of systems by considering cross-modal integration. Statistical algorithms and machine learning methods used for fusion/fission of multimodal content at feature, decision and model level. Common graphical models used in multimodal analysis including Dynamic Bayesian Network, Product Hidden Markov Model (HMM), Multistream HMM, Coupled HMM, Factorial HMM, Input Output HMM and segmental models. Recommended Corequisite: EESC 6349. 3 credit hours.
Prerequisite: ENGR 3341 or equivalent.
Offering Frequency: Every two years
Grades: 10
Median GPA: A
Mean GPA: 3.801
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Multimodal Signal Processing
EESC 6368
Erik Jonsson School of Engineering and Computer Science
Theory and applications in the field of multimodal signal processing. Robustness and performance of systems by considering cross-modal integration. Statistical algorithms and machine learning methods used for fusion/fission of multimodal content at feature, decision and model level. Common graphical models used in multimodal analysis including Dynamic Bayesian Network, Product Hidden Markov Model (HMM), Multistream HMM, Coupled HMM, Factorial HMM, Input Output HMM and segmental models. Recommended Corequisite: EESC 6349. 3 credit hours.
Prerequisite: ENGR 3341 or equivalent.
Offering Frequency: Every two years
Grades: 10
Median GPA: A
Mean GPA: 3.801
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