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HDP-HCRF for object segmentation

机译:HDP-HCRF用于对象分割

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摘要

Infinite hidden conditional random fields has been proposed for human behavior analysis which is a non-parametric discriminative model as the extension of HCRF. However, it only model one dimensional temporal relationship by using a chain structure imposed on latent state variables, and would involve huge number of parameters as the number of state increases. In order to solve the 2D object segmentation problem, we propose a novel model relying on hierarchical Dirichlet processes and hidden conditional random fields. Our model maintains properties of non-parametric Bayesian model but with only finite model parameters. Experimental results show the effectiveness of HDP-HCRF on MSRC-21 and VOC 2007 segmentation dataset.
机译:已经提出了用于人类行为分析的无限隐藏条件随机场,它是HCRF的扩展,是一种非参数判别模型。但是,它仅通过使用施加在潜在状态变量上的链结构来建模一维时间关系,并且随着状态数量的增加,将涉及大量参数。为了解决二维对象分割问题,我们提出了一种基于分层Dirichlet过程和隐藏条件随机场的新型模型。我们的模型保留非参数贝叶斯模型的属性,但仅具有有限的模型参数。实验结果表明,HDP-HCRF对MSRC-21和VOC 2007分割数据集有效。

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