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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Image modeling with position-encoding dynamic trees
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Image modeling with position-encoding dynamic trees

机译:使用位置编码动态树进行图像建模

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摘要

This paper describes the position-encoding dynamic tree (PEDT). The PEDT is a probabilistic model for images that improves on the dynamic tree by allowing the positions of objects to play a part in the model. This increases the flexibility of the model over the dynamic tree and allows the positions of objects to be located and manipulated. This paper motivates and defines this form of probabilistic model using the belief network formalism. A structured variational approach for inference and learning in the PEDT is developed, and the resulting variational updates are obtained, along with additional implementation considerations that ensure the computational cost scales linearly in the number of nodes of the belief network. The PEDT model is demonstrated and compared with the dynamic tree and fixed tree. The structured variational learning method is compared with mean field approaches.
机译:本文介绍了位置编码动态树(PEDT)。 PEDT是图像的概率模型,通过允许对象的位置在模型中发挥作用,从而在动态树上得到了改进。这增加了动态树上模型的灵活性,并允许定位和操纵对象的位置。本文使用信念网络形式主义来激发和定义这种形式的概率模型。开发了一种结构化的变体方法,用于在PEDT中进行推理和学习,并获得了产生的变体更新,以及确保在信念网络的节点数量上线性计算成本规模的其他实现注意事项。演示了PEDT模型,并将其与动态树和固定树进行了比较。将结构化变分学习方法与平均场方法进行了比较。

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