Simultaneous Deep Transfer Across Domains and Tasks
University of California, Berkeley · International Computer Science Institute · +2 more institutions
Abstract
Recent reports suggest that a generic supervised deep CNN model trained on a large-scale dataset reduces, but does not remove, dataset bias. Fine-tuning deep models in a new domain can require a significant amount of labeled data, which for many applications is simply not available. We propose a new CNN architecture to exploit unlabeled and sparsely labeled target domain data. Our approach simultaneously optimizes for domain invariance to facilitate domain transfer and uses a soft label distribution matching loss to transfer information between tasks. Our proposed adaptation method offers empirical performance which exceeds previously published results on two standard benchmark visual domain adaptation tasks,…
Citation impact
- FWCI
- 106.39
- Percentile
- 100%
- References
- 55
Authors
4- ETEric TzengCorresponding
University of California, Berkeley, International Computer Science Institute
- JHJudy Hoffman
University of California, Berkeley, International Computer Science Institute
- TDTrevor Darrell
Berkeley College, University of California, Berkeley
- KSKate Saenko
University of Massachusetts Lowell
Topics & keywords
- Computer science
- Domain adaptation
- Benchmark (surveying)
- Exploit
- Artificial intelligence
- Transfer of learning
- Domain (mathematical analysis)
- Matching (statistics)