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Unsupervised Feature Learning for Writer Identification and Writer Retrieval

机译:作者识别与作家检索的无监督特征学习

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Deep Convolutional Neural Networks (CNN) have shown great success in supervised classification tasks such as character classification or dating. Deep learning methods typically need a lot of annotated training data, which is not available in many scenarios. In these cases, traditional methods are often better than or equivalent to deep learning methods. In this paper, we propose a simple, yet effective, way to learn CNN activation features in an unsupervised manner. Therefore, we train a deep residual network using surrogate classes. The surrogate classes are created by clustering the training dataset, where each cluster index represents one surrogate class. The activations from the penultimate CNN layer serve as features for subsequent classification tasks. We evaluate the feature representations on two publicly available datasets. The focus lies on the ICDAR17 competition dataset on historical document writer identification (Historical-WI). We show that the activation features we trained without supervision are superior to descriptors of state-of-the-art writer identification methods. Additionally, we achieve comparable results in the case of handwriting classification using the ICFHR16 competition dataset on historical Latin script types (CLaMM16).
机译:深度卷积神经网络(CNN)在诸如角色分类或约会之类的监督分类任务中表现出巨大的成功。深度学习方法通​​常需要很多注释的培训数据,这在许多情况下都没有。在这些情况下,传统方法通常优于或等同于深度学习方法。在本文中,我们提出了一种简单但有效的方式,以无监督的方式学习CNN激活功能。因此,我们使用代理课程培训深度剩余网络。代理类是通过群集训练数据集创建的,其中每个群集索引代表一个代理类。来自倒数第二CNN层的激活用作后续分类任务的特征。我们评估两个公共可用数据集的功能表示。该焦点在于历史文档作家识别(历史Wi)的ICDAR17竞争数据集。我们展示我们在没有监督的情况下培训的激活功能优于最先进的作者识别方法的描述符。此外,我们在使用历史拉丁文脚本类型(CLAMM16)上使用ICFHR16竞争数据集进行手写分类的情况下实现了可比的结果。

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