约束深度迁移特征学习及其应用

Yue Wu, Q. Ji
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引用次数: 34

摘要

深度模型的特征学习在各种视觉任务的数据表示和分类方面取得了令人印象深刻的结果。然而,深度特征学习通常需要大量的训练数据,这在某些应用领域可能是不可行的。迁移学习可以将数据从数据丰富的源域转移到数据稀缺的目标域,是缓解这一问题的方法之一。现有的迁移学习方法通常是一次性迁移学习,往往忽略了迁移数据必须满足的特定属性。为了解决这些问题,我们引入了一种约束深度迁移特征学习方法,通过在逐步改进的特征空间中迭代地进行迁移学习,同时进行迁移学习和特征学习,以更好地缩小目标域和源域之间的差距,从而有效地将数据从源域转移到目标域。此外,我们提出利用目标领域知识,并在迁移学习过程中加入这些先验知识作为约束,以确保迁移的数据满足目标领域的某些属性。为了验证所提出的约束深度转移特征学习方法的有效性,我们将其应用于人眼检测的热特征学习。我们还将提出的方法应用于交叉视图面部表情识别作为第二个应用。实验结果证明了该方法在两种应用中的有效性。
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Constrained Deep Transfer Feature Learning and Its Applications
Feature learning with deep models has achieved impressive results for both data representation and classification for various vision tasks. Deep feature learning, however, typically requires a large amount of training data, which may not be feasible for some application domains. Transfer learning can be one of the approaches to alleviate this problem by transferring data from data-rich source domain to data-scarce target domain. Existing transfer learning methods typically perform one-shot transfer learning and often ignore the specific properties that the transferred data must satisfy. To address these issues, we introduce a constrained deep transfer feature learning method to perform simultaneous transfer learning and feature learning by performing transfer learning in a progressively improving feature space iteratively in order to better narrow the gap between the target domain and the source domain for effective transfer of the data from source domain to target domain. Furthermore, we propose to exploit the target domain knowledge and incorporate such prior knowledge as constraint during transfer learning to ensure that the transferred data satisfies certain properties of the target domain. To demonstrate the effectiveness of the proposed constrained deep transfer feature learning method, we apply it to thermal feature learning for eye detection by transferring from the visible domain. We also applied the proposed method for cross-view facial expression recognition as a second application. The experimental results demonstrate the effectiveness of the proposed method for both applications.
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