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A Faster R-CNN based Method for Comic Characters Face Detection

机译:基于R-CNN的漫画人物脸检测方法

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Face detection of comic characters is a necessary step in most applications, such as comic character retrieval, automatic character classification and comic analysis. However, the existing methods were developed for simple cartoon images or small size comic datasets, and detection performance remains to be improved. In this paper, we propose a Faster R-CNN based method for face detection of comic characters. Our contribution is twofold. First, for the binary classification task of face detection, we empirically find that the sigmoid classifier shows a slightly better performance than the softmax classifier. Second, we build two comic datasets, JC2463 and AEC912, consisting of 3375 comic pages in total for characters face detection evaluation. Experimental results have demonstrated that the proposed method not only performs better than existing methods, but also works for comic images with different drawing styles.
机译:面部检测漫画人物是大多数应用程序的必要步骤,例如漫画人物检索,自动字符分类和漫画分析。但是,现有的方法是为简单的卡通图像或小型漫画数据集开发的,并且检测性能仍有待提高。在本文中,我们提出了一种基于R-CNN基于漫画人物的脸部检测方法。我们的贡献是双重的。首先,对于面部检测的二进制分类任务,我们经验发现Sigmoid分类器比SoftMax分类器显示出稍微更好的性能。其次,我们构建两个漫画数据集,JC2463和AEC912,总共组成的3375个漫画页面,用于字符面部检测评估。实验结果表明,所提出的方法不仅比现有方法更好,而且还适用于具有不同绘图样式的漫画图像。

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