ComicLib:一个新的用于草图理解的大规模漫画数据集

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引用次数: 0

摘要

草图在日常交流中是必不可少的,在计算机视觉界受到了广泛的关注。一般来说,研究人员使用基于学习的方法来研究基于草图的算法。这些方法依靠大规模的数据来训练复杂的模型,以达到令人满意的性能。大多数现有的数据集是由不熟练的用户在封闭的环境中绘制的。这些数据集的复杂性较低,使得深度学习模型无法提取更多的信息。本文提出了一种新的大规模漫画草图数据集ComicLib,用于草图理解。我们从漫画库中扫描了181354张漫画素描图片,并通过自己开发的众包标注平台进行标注。最后,我们获得了一个包含17个类别的数百万个漫画对象的数据集。我们使用多种深度学习算法在素描识别、检索、检测、生成和着色方面进行了对比实验。这些实验提供了ComicLib数据集的基准性能。我们希望ComicLib能够为基于草图的研究领域做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ComicLib: A New Large-Scale Comic Dataset for Sketch Understanding
The sketch is essential in everyday communication and has received much attention in the computer vision community. In general, researchers use learning-based approaches to study sketch-based algorithms. These methods rely on large-scale data to train complex models to achieve satisfactory performance. Most existing datasets are drawn by unskilled users in a closed environment. These datasets are of low complexity, making deep learning models unable to extract more information. This paper proposes a new large-scale comic sketch dataset called ComicLib for sketch understanding. We scan 181,354 comic sketch images from the comic library and annotate them through a crowdsourcing annotation platform developed by ourselves. Finally, we obtain a dataset of millions of comic objects in 17 categories. We conduct comparative experiments on sketch recognition, retrieval, detection, generation and colorization using a number of deep learning algorithms. These experiments provide the benchmark performance of the ComicLib dataset. We hope that ComicLib can contribute to the field of sketch-based research.
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