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Dynamic factor graphs: A novel framework for multiple features data fusion

机译:动态因子图:用于多特征数据融合的新颖框架

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The Dynamic Tree [1] (DT) Bayesian Network is a powerful analytical tool for image segmentation and object segmentation tasks. Its hierarchical nature makes it possible to analyze and incorporate information from different scales, which is desirable in many applications. Having a flexible structure enables model selection, concurrent with parameter inference. In this paper, we propose a novel framework, dynamic factor graphs (DFG), where data segmentation and fusion tasks are combined in the same framework. Factor graphs (FGs) enable us to have a broader range of modeling applications than Bayesian networks (BNs) since FGs include both directed acyclic and undirected graphs in the same setting. The example in this paper will focus on segmentation and fusion of 2D image features with a linear Gaussian model assumption.
机译:动态树[1](DT)贝叶斯网络是用于图像分割和对象分割任务的强大分析工具。它的层次结构性质使得可以分析和合并不同规模的信息,这在许多应用程序中都是理想的。具有灵活的结构可以进行模型选择,同时进行参数推断。在本文中,我们提出了一种新颖的框架,即动态因子图(DFG),其中将数据分段和融合任务组合在同一框架中。因子图(FG)使我们比贝叶斯网络(BNs)具有更广泛的建模应用程序,因为FG在相同的设置中同时包含有向无环图和无向图。本文中的示例将重点研究线性高斯模型假设下的2D图像特征的分割和融合。

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