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Papers/Adversarial Discriminative Domain Adaptation

Adversarial Discriminative Domain Adaptation

Eric Tzeng, Judy Hoffman, Kate Saenko, Trevor Darrell

2017-02-17CVPR 2017 7Unsupervised Image-To-Image TranslationGeneral ClassificationUnsupervised Domain AdaptationDomain Adaptation
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Abstract

Adversarial learning methods are a promising approach to training robust deep networks, and can generate complex samples across diverse domains. They also can improve recognition despite the presence of domain shift or dataset bias: several adversarial approaches to unsupervised domain adaptation have recently been introduced, which reduce the difference between the training and test domain distributions and thus improve generalization performance. Prior generative approaches show compelling visualizations, but are not optimal on discriminative tasks and can be limited to smaller shifts. Prior discriminative approaches could handle larger domain shifts, but imposed tied weights on the model and did not exploit a GAN-based loss. We first outline a novel generalized framework for adversarial adaptation, which subsumes recent state-of-the-art approaches as special cases, and we use this generalized view to better relate the prior approaches. We propose a previously unexplored instance of our general framework which combines discriminative modeling, untied weight sharing, and a GAN loss, which we call Adversarial Discriminative Domain Adaptation (ADDA). We show that ADDA is more effective yet considerably simpler than competing domain-adversarial methods, and demonstrate the promise of our approach by exceeding state-of-the-art unsupervised adaptation results on standard cross-domain digit classification tasks and a new more difficult cross-modality object classification task.

Results

TaskDatasetMetricValueModel
Domain AdaptationSVHN-to-MNISTAccuracy80.1ADDN
Domain AdaptationMNIST-to-USPSAccuracy90.1ADDN
Domain AdaptationEPIC-KITCHENS-100Average Accuracy37.4ADDA
Domain AdaptationUCF-HMDBAccuracy79.17ADDA
Domain AdaptationJester (Gesture Recognition)Accuracy52.3ADDA
Domain AdaptationHMDB-UCFAccuracy88.44ADDA
Unsupervised Domain AdaptationEPIC-KITCHENS-100Average Accuracy37.4ADDA
Unsupervised Domain AdaptationUCF-HMDBAccuracy79.17ADDA
Unsupervised Domain AdaptationJester (Gesture Recognition)Accuracy52.3ADDA
Unsupervised Domain AdaptationHMDB-UCFAccuracy88.44ADDA

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