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Partially Zero-shot Domain Adaptation from Incomplete Target Data with Missing Classes

机译:从缺少类的不完整目标数据中进行部分零域调整

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We tackle a domain adaptation problem under partially zero-shot setting. In this setting, a certain subset of classes is missing in the unlabeled target data, while all classes appear in the labeled source data, and the goal is to discriminate all classes at the target domain. To solve this problem, we utilize an adversarial training scheme and adopt instance weighting to estimate the loss related to unavailable target data in the missing classes. The instance weight is computed on the basis of the prediction of deep neural networks, implying which instance would be similar to unseen data and having useful information for the loss estimation. This estimation makes it possible to explicitly consider all classes during the domain adaptation training even in the partially zero-shot setting, which leads to accurate adaptation between domains. Experimental results with several benchmark datasets validate the advantage of our method.
机译:我们解决了部分零镜头设置下的领域适应问题。在这种设置下,未标记的目标数据中缺少某些类别的子集,而所有类别均出现在已标记的源数据中,目标是区分目标域中的所有类别。为了解决这个问题,我们采用了对抗训练方案,并采用实例加权来估计与缺失类中无法获得的目标数据有关的损失。实例权重是根据深度神经网络的预测来计算的,这意味着哪个实例将类似于看不见的数据,并且具有可用于损失估计的有用信息。该估计使得即使在部分零镜头设置中,也可以在域适应训练期间明确考虑所有类别,从而导致域之间的准确适应。几个基准数据集的实验结果证明了我们方法的优势。

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