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Learning Deep Feature Representations with Domain Guided Dropout for Person Re-identification

机译:通过域引导的辍学来学习深度特征表示,以进行人员重新识别

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Learning generic and robust feature representations with data from multiple domains for the same problem is of great value, especially for the problems that have multiple datasets but none of them are large enough to provide abundant data variations. In this work, we present a pipeline for learning deep feature representations from multiple domains with Convolutional Neural Networks (CNNs). When training a CNN with data from all the domains, some neurons learn representations shared across several domains, while some others are effective only for a specific one. Based on this important observation, we propose a Domain Guided Dropout algorithm to improve the feature learning procedure. Experiments show the effectiveness of our pipeline and the proposed algorithm. Our methods on the person re-identification problem outperform stateof-the-art methods on multiple datasets by large margins.
机译:使用来自多个域的数据针对同一个问题学习通用且鲁棒的特征表示非常有价值,特别是对于具有多个数据集但没有一个足够大以提供大量数据变化的问题。在这项工作中,我们提出了使用卷积神经网络(CNN)从多个域中学习深度特征表示的管道。当使用来自所有域的数据训练CNN时,一些神经元会学习跨多个域共享的表示,而另一些神经元仅对特定域有效。基于这一重要观察,我们提出了一种域导引辍学算法,以改进特征学习过程。实验证明了我们的管道和提出的算法的有效性。我们在人员重新识别问题上的方法大大优于在多个数据集上使用最新技术的方法。

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