Domain Adaptation for Rare Classes Augmented with Synthetic Samples
To alleviate lower classification performance on rare classes in imbalanced datasets, a possible solution is to augment the underrepresented classes with synthetic samples. Domain adaptation can be incorporated in a classifier to decrease the domain discrepancy between real and synthetic samples. Wh...
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Zusammenfassung: | To alleviate lower classification performance on rare classes in imbalanced
datasets, a possible solution is to augment the underrepresented classes with
synthetic samples. Domain adaptation can be incorporated in a classifier to
decrease the domain discrepancy between real and synthetic samples. While
domain adaptation is generally applied on completely synthetic source domains
and real target domains, we explore how domain adaptation can be applied when
only a single rare class is augmented with simulated samples. As a testbed, we
use a camera trap animal dataset with a rare deer class, which is augmented
with synthetic deer samples. We adapt existing domain adaptation methods to two
new methods for the single rare class setting: DeerDANN, based on the
Domain-Adversarial Neural Network (DANN), and DeerCORAL, based on deep
correlation alignment (Deep CORAL) architectures. Experiments show that
DeerDANN has the highest improvement in deer classification accuracy of 24.0%
versus 22.4% improvement of DeerCORAL when compared to the baseline. Further,
both methods require fewer than 10k synthetic samples, as used by the baseline,
to achieve these higher accuracies. DeerCORAL requires the least number of
synthetic samples (2k deer), followed by DeerDANN (8k deer). |
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DOI: | 10.48550/arxiv.2110.12216 |