结合多特征进行卡通人物检索与剪辑合成。

Jun Yu, Dongquan Liu, Dacheng Tao, Hock Soon Seah
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引用次数: 112

摘要

我们如何准确地检索卡通人物?或者如何从卡通库中顺利有效地合成新的卡通剪辑?这两个问题对于动画师和卡通爱好者来说都很重要,他们可以利用现有的卡通材料设计和创作新的卡通。回答这些问题的第一个关键问题是找到一个有效地描述卡通人物的适当表示。在本文中,我们从不同的角度考虑多个特征,即颜色直方图、Hausdorff边缘特征和骨架特征,来表示具有不同颜色、形状和手势的卡通人物。每一种视觉特征都反映了一个卡通人物的独特特征,它们相互补充,便于检索和综合。然而,如何结合这三个视觉特征是我们应用程序的第二个关键问题。通过简单地将它们连接成一个长向量,它将以所谓的“维度诅咒”结束,更不用说嵌入在不同视觉特征空间中的异质性了。在这里,我们引入了一种半监督多视图子空间学习(semi-MSL)算法,将不同的特征编码到统一的空间中。具体而言,在patch alignment框架下,半msl利用标记卡通人物的判别信息构建局部patch,利用未标记卡通人物所揭示的流形结构捕获局部patch的几何分布。基于卡通人物检索和动画片段合成的实验验证了该方法在卡通应用中的有效性。此外,基于内容的图像检索在基准数据上的其他结果表明了半msl在其他应用中的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On combining multiple features for cartoon character retrieval and clip synthesis.

How do we retrieve cartoon characters accurately? Or how to synthesize new cartoon clips smoothly and efficiently from the cartoon library? Both questions are important for animators and cartoon enthusiasts to design and create new cartoons by utilizing existing cartoon materials. The first key issue to answer those questions is to find a proper representation that describes the cartoon character effectively. In this paper, we consider multiple features from different views, i.e., color histogram, Hausdorff edge feature, and skeleton feature, to represent cartoon characters with different colors, shapes, and gestures. Each visual feature reflects a unique characteristic of a cartoon character, and they are complementary to each other for retrieval and synthesis. However, how to combine the three visual features is the second key issue of our application. By simply concatenating them into a long vector, it will end up with the so-called "curse of dimensionality," let alone their heterogeneity embedded in different visual feature spaces. Here, we introduce a semisupervised multiview subspace learning (semi-MSL) algorithm, to encode different features in a unified space. Specifically, under the patch alignment framework, semi-MSL uses the discriminative information from labeled cartoon characters in the construction of local patches where the manifold structure revealed by unlabeled cartoon characters is utilized to capture the geometric distribution. The experimental evaluations based on both cartoon character retrieval and clip synthesis demonstrate the effectiveness of the proposed method for cartoon application. Moreover, additional results of content-based image retrieval on benchmark data suggest the generality of semi-MSL for other applications.

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