Composite Templates for Cloth Modeling and Sketching

Hong Chen, Zijian Xu, Ziqiang Liu, Song-Chun Zhu
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引用次数: 156

Abstract

Cloth modeling and recognition is an important and challenging problem in both vision and graphics tasks, such as dressed human recognition and tracking, human sketch and portrait. In this paper, we present a context sensitive grammar in an And-Or graph representation which will produce a large set of composite graphical templates to account for the wide variabilities of cloth configurations, such as T-shirts, jackets, etc. In a supervised learning phase, we ask an artist to draw sketches on a set of dressed people, and we decompose the sketches into categories of cloth and body components: collars, shoulders, cuff, hands, pants, shoes etc. Each component has a number of distinct subtemplates (sub-graphs). These sub-templates serve as leafnodes in a big And-Or graph where an And-node represents a decomposition of the graph into sub-configurations with Markov relations for context and constraints (soft or hard), and an Or-node is a switch for choosing one out of a set of alternative And-nodes (sub-configurations) - similar to a node in stochastic context free grammar (SCFG). This representation integrates the SCFG for structural variability and the Markov (graphical) model for context. An algorithm which integrates the bottom-up proposals and the topdown information is proposed to infer the composite cloth template from the image.
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复合模板布料建模和素描
在服装识别和跟踪、人体素描和肖像等视觉和图形任务中,服装建模和识别都是一个重要而具有挑战性的问题。在本文中,我们在And-Or图表示中提出了一种上下文敏感语法,该语法将产生一组大的复合图形模板,以解释布料配置的广泛变化,如t恤,夹克等。在监督学习阶段,我们请一位艺术家在一组穿着衣服的人身上画草图,我们将草图分解为布料和身体成分的类别:衣领、肩膀、袖口、手、裤子、鞋子等。每个组件都有许多不同的子模板(子图)。这些子模板充当大型and - or图中的叶节点,其中and -node表示将图分解为具有上下文和约束(软或硬)的马尔可夫关系的子配置,or -node是用于从一组可选and -node(子配置)中选择一个的开关——类似于随机上下文自由语法(SCFG)中的节点。这种表示集成了用于结构可变性的SCFG和用于上下文的马尔可夫(图形)模型。提出了一种融合自底向上和自顶向下信息的算法,从图像中推断出复合布模板。
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