preprintarXiv (Cornell University)Dec 10, 2014GREEN OA

Deep Domain Confusion: Maximizing for Domain Invariance

University of California, Berkeley · University of Massachusetts Lowell · +1 more institution

Indexed inarxivdatacite

Abstract

Recent reports suggest that a generic supervised deep CNN model trained on a large-scale dataset reduces, but does not remove, dataset bias on a standard benchmark. Fine-tuning deep models in a new domain can require a significant amount of data, which for many applications is simply not available. We propose a new CNN architecture which introduces an adaptation layer and an additional domain confusion loss, to learn a representation that is both semantically meaningful and domain invariant. We additionally show that a domain confusion metric can be used for model selection to determine the dimension of an adaptation layer and the best position for the layer in the CNN architecture. Our proposed adaptation…

Citation impact

2,352
total citations
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References
24
Citations per year

Authors

5

Topics & keywords

Keywords
  • Computer science
  • Benchmark (surveying)
  • Domain adaptation
  • Confusion
  • Artificial intelligence
  • Metric (unit)
  • Domain (mathematical analysis)
  • Layer (electronics)
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