Corpus ID: 63439326

Domain Adaptation and Domain Generalization with Representation Learning

@inproceedings{Ghifary2016DomainAA,
  title={Domain Adaptation and Domain Generalization with Representation Learning},
  author={Muhammad Ghifary},
  year={2016}
}
Machine learning has achieved great successes in the area of computer vision, especially in object recognition or classification. One of the core factors of the successes is the availability of massive labeled image or video data for training, collected manually by human. Labeling source training data, however, can be expensive and time consuming. Furthermore, a large amount of labeled source data may not always guarantee traditional machine learning techniques to generalize well; there is a… Expand
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