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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Unsupervised Learning of Probabilistic Grammar-Markov Models for Object Categories
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Unsupervised Learning of Probabilistic Grammar-Markov Models for Object Categories

机译:对象类别的概率语法-马尔可夫模型的无监督学习

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摘要

We introduce a Probabilistic Grammar-Markov Model (PGMM) which couples probabilistic context free grammars and Markov Random Fields. These PGMMs are generative models defined over attributed features and are used to detect and classify objects in natural images. PGMMs are designed so that they can perform rapid inference, parameter learning, and the more difficult task of structure induction. PGMMs can deal with unknown 2D pose (position, orientation, and scale) in both inference and learning, different appearances, or aspects, of the model. The PGMMs can be learnt in an unsupervised manner where the image can contain one of an unknown number of objects of different categories or even be pure background. We first study the weakly supervised case, where each image contains an example of the (single) object of interest, and then generalize to less supervised cases. The goal of this paper is theoretical but, to provide proof of concept, we demonstrate results from this approach on a subset of the Caltech dataset (learning on a training set and evaluating on a testing set). Our results are generally comparable with the current state of the art, and our inference is performed in less than five seconds.
机译:我们引入了概率语法-马尔可夫模型(PGMM),该模型将概率上下文无关文法和马尔可夫随机域结合在一起。这些PGMM是在属性上定义的生成模型,用于检测和分类自然图像中的对象。 PGMM的设计使其可以执行快速推理,参数学习以及结构归纳的更艰巨任务。 PGMM可以在推理和学习,模型的不同外观或方面中处理未知的2D姿势(位置,方向和比例)。可以以无监督的方式学习PGMM,其中图像可以包含未知数量的不同类别的对象之一,甚至可以是纯背景。我们首先研究弱监督案例,其中每个图像都包含一个(单个)关注对象的示例,然后将其推广到较少监督的案例。本文的目的是理论性的,但为了提供概念证明,我们在Caltech数据集的子集上演示了此方法的结果(在训练集上学习并在测试集上进行评估)。我们的结果通常与当前的技术水平相当,我们的推断在不到五秒钟的时间内完成。

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