Modeling Spatial Patterns of Shapes.

Anuj Srivastava, Wei Liu, Shantanu H Joshi
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引用次数: 0

Abstract

We introduce a framework for modeling spatial patterns of shapes formed by multiple objects in an image. Our approach is graph-based where each node denotes an object and attributes of a node consist of that object's shape, position, orientation, and scale. Neighboring node are connected by edges, and they are allowed to interact in terms of their attributes/features. Similar to a Markov random field, but now applied to more sophisticated features space, the interactions are governed by energy functionals that can be internal or external. The internal energies, composed entirely of interactions between nodes, may include similarity between shapes and pose. The external energies, composed of outside influences, may include the data-likelihood term and the a-priori information about the shapes and the locations of the objects.

形状的空间模式建模。
介绍了一种图像中由多个物体构成的形状空间模式的建模框架。我们的方法是基于图形的,其中每个节点表示一个对象,节点的属性由该对象的形状、位置、方向和比例组成。相邻节点通过边连接,并允许它们根据其属性/特征进行交互。与马尔可夫随机场类似,但现在应用于更复杂的特征空间,相互作用由内部或外部的能量泛函控制。内部能量完全由节点之间的相互作用组成,可能包括形状和姿态之间的相似性。由外界影响组成的外部能量可包括数据似然项和关于物体形状和位置的先验信息。
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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