Semi-Supervised Single- and Multi-Domain Regression with Multi-Domain Training
Michaeli, Tomer, Eldar, Yonina C., Sapiro, Guillermo
For example, word recognition can greatly benefit from the availability of joint audiovisual measurements [17]. Person recognition and verification can be performed much more accurately by fusing information from several modalities such as facial images, iris scans, voice recordings, and handwritings. A major difficulty in fusing multiple sources is that one can often access only distinct labeled training sets for the different domains and does not have paired labeled examples from all domains. Suppose, for instance, we wish to perform audiovisual gender recognition. There are numerous existing data-sets of labeled voice recordings as well as labeled data-sets of facial images. However, there are only a few jointly labeled audiovisual data-sets, with a limited number of different subjects each.
Mar-20-2012
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- North America > United States (0.28)
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- Research Report (0.40)
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- Government (0.46)
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