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What you saw is not what you get: Domain adaptation using asymmetric kernel transforms

机译:所见即所得不是:使用非对称内核变换进行域自适应

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In real-world applications, “what you saw” during training is often not “what you get” during deployment: the distribution and even the type and dimensionality of features can change from one dataset to the next. In this paper, we address the problem of visual domain adaptation for transferring object models from one dataset or visual domain to another. We introduce ARC-t, a flexible model for supervised learning of non-linear transformations between domains. Our method is based on a novel theoretical result demonstrating that such transformations can be learned in kernel space. Unlike existing work, our model is not restricted to symmetric transformations, nor to features of the same type and dimensionality, making it applicable to a significantly wider set of adaptation scenarios than previous methods. Furthermore, the method can be applied to categories that were not available during training. We demonstrate the ability of our method to adapt object recognition models under a variety of situations, such as differing imaging conditions, feature types and codebooks.
机译:在实际的应用程序中,训练过程中的“所见即所得”通常并不是部署过程中的“所见即所得”:特征的分布甚至类型和维度可以从一个数据集更改为另一个数据集。在本文中,我们解决了将对象模型从一个数据集或视觉域转移到另一个数据域的视觉域适应问题。我们介绍了ARC-t,这是一种用于监督学习域之间的非线性转换的灵活模型。我们的方法基于一种新颖的理论结果,证明了可以在核空间中学习这种变换。与现有工作不同,我们的模型不仅限于对称变换,也不限于相同类型和维数的特征,因此与以前的方法相比,它适用于更广泛的适应方案。此外,该方法可以应用于训练期间不可用的类别。我们展示了我们的方法在各种情况下(例如不同的成像条件,特征类型和密码本)适应对象识别模型的能力。

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