Progressive deep feature learning for manga character recognition via unlabeled training data

Xiaoran Qin, Yafeng Zhou, Yonggang Li, Siwei Wang, Yongtao Wang, Zhi Tang
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引用次数: 7

Abstract

The recognition of manga (Japanese comics) characters is an essential step in industrial applications, such as manga character retrieval, content analysis and copyright protection. However, conventional methods for manga character recognition are mainly based on handcrafted features which are not robust enough for manga of various style. The emergence of deep learning based methods provides representational features, which has a huge demand for labeled data. In this paper, we propose a framework to exploit unlabeled manga data to facilitate the discriminative capability of deep feature representations for manga character recognition (i.e., unsupervised learning on manga images), which does not rely on any manual annotation. Specifically, we first train an initial feature model using an anime character dataset. Then, we adopt a Progressive Main Characters Mining (PMCM) strategy which iterates between two steps: 1) produce selected data with estimated labels from unlabeled data, 2) update the feature model by the selected data. These two steps are mutually promoted in essence. Experimental results on Manga109 dataset, to which we introduce new head annotations, demonstrate the effectiveness of the proposed framework and the usefulness in manga character verification and retrieval.
基于未标记训练数据的漫画角色识别的渐进式深度特征学习
对日本漫画人物的识别是漫画人物检索、内容分析和版权保护等工业应用中必不可少的一步。然而,传统的漫画人物识别方法主要基于手工特征,对于各种风格的漫画来说,这些特征的鲁棒性不够。基于深度学习的方法的出现提供了表征特征,这对标记数据有巨大的需求。在本文中,我们提出了一个框架来利用未标记的漫画数据来促进漫画字符识别的深度特征表示的判别能力(即漫画图像的无监督学习),它不依赖于任何手动注释。具体来说,我们首先使用动漫角色数据集训练初始特征模型。然后,我们采用渐进式主要特征挖掘(PMCM)策略,该策略在两个步骤之间迭代:1)从未标记的数据中生成具有估计标签的选定数据,2)根据所选数据更新特征模型。这两个步骤在本质上是相互促进的。在Manga109数据集上,我们引入了新的头部注释,实验结果证明了该框架的有效性以及在漫画字符验证和检索中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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