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Manifold Guided Label Transfer for Deep Domain Adaptation

机译:用于深域适应的歧管引导标签转移

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We propose a novel domain adaptation method for deep learning that combines adaptive batch normalization to produce a common feature-space between domains and label transfer with subspace alignment on deep features. The first step of our method automatically conditions the features from the source/target domain to have similar statistical distributions by normalizing the activations in each layer of our network using adaptive batch normalization. We then examine the clustering properties of the normalized features on a manifold to determine if the target features are well suited for the second of our algorithm, label-transfer. The second step of our method performs subspace alignment and k-means clustering on the feature manifold to transfer labels from the closest source cluster to each target cluster. The proposed manifold guided label transfer methods produce state of the art results for deep adaptation on several standard digit recognition datasets.
机译:我们提出了一种新的域适应方法,用于深入学习,将自适应批量归一化结合在域之间的常见特征空间,并在深度特征上与子空间对齐进行标签传输。我们的方法的第一步是通过使用自适应批量归一化将每层的激活标准化来自动地将来自源/目标域的功能具有相似的统计分布。然后,我们检查歧管上标准化功能的聚类属性,以确定目标功能是否适合我们算法的第二个,标记转移。我们方法的第二步对特征歧管执行子空间对齐和K-Means群集,以将来自最近源集群的标签传输到每个目标群集。所提出的歧管引导标签转移方法产生最新的技术结果,用于在几个标准数字识别数据集上深度适应。

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