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MCS
2005
Springer

Mixture of Gaussian Processes for Combining Multiple Modalities

13 years 9 months ago
Mixture of Gaussian Processes for Combining Multiple Modalities
This paper describes a unified approach, based on Gaussian Processes, for achieving sensor fusion under the problematic conditions of missing channels and noisy labels. Under the proposed approach, Gaussian Processes generate separate class labels corresponding to each individual modality. The final classification is based upon a hidden random variable, which probabilistically combines the sensors. Given both labeled and test data, the inference on unknown variables, parameters and class labels for the test data is performed using the variational bound and Expectation Propagation. We apply this method to the challenge of classifying a student’s interest level using observations from the face and postures, together with information from the task the students are performing. Classification with the proposed new approach achieves accuracy of over 83%, significantly outperforming the classification using individual modalities and other common classifier combination schemes.
Ashish Kapoor, Hyungil Ahn, Rosalind W. Picard
Added 28 Jun 2010
Updated 28 Jun 2010
Type Conference
Year 2005
Where MCS
Authors Ashish Kapoor, Hyungil Ahn, Rosalind W. Picard
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