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DOI: 10.1145/2733373.2806216
OpenAccess: Closed
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Weakly-Shared Deep Transfer Networks for Heterogeneous-Domain Knowledge Propagation

Xiangbo Shu,Guo-Jun Qi,Jinhui Tang,Jingdong Wang

Computer science
Domain (mathematical analysis)
Artificial intelligence
2015
In recent years, deep networks have been successfully applied to model image concepts and achieved competitive performance on many data sets. In spite of impressive performance, the conventional deep networks can be subjected to the decayed performance if we have insufficient training examples. This problem becomes extremely severe for deep networks with powerful representation structure, making them prone to over fitting by capturing nonessential or noisy information in a small data set. In this paper, to address this challenge, we will develop a novel deep network structure, capable of transferring labeling information across heterogeneous domains, especially from text domain to image domain. This weakly-shared Deep Transfer Networks (DTNs) can adequately mitigate the problem of insufficient image training data by bringing in rich labels from the text domain.
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    Weakly-Shared Deep Transfer Networks for Heterogeneous-Domain Knowledge Propagation” is a paper by Xiangbo Shu Guo-Jun Qi Jinhui Tang Jingdong Wang published in 2015. It has an Open Access status of “closed”. You can read and download a PDF Full Text of this paper here.