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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A region-centered topic model for object discovery and category-based image segmentation
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A region-centered topic model for object discovery and category-based image segmentation

机译:以区域为中心的主题模型,用于对象发现和基于类别的图像分割

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摘要

Latent topic models have become a popular paradigm in many computer vision applications due to their capability to unsupervisely discover semantics in visual content. Relying on the Bag-of-Words representation, they consider images as mixtures of latent topics that generate visual words according to some specific distributions. However, the performance of these methods is still limited by the way in which they take into account the spatial distribution of visual words and, what is even more important, the currently used appearance distributions. In this paper, we propose a novel region-centered latent topic model that introduces two main contributions: first, an improved spatial context model that allows for considering inter-topic inter-region influences; and second, an advanced region-based appearance distribution built on the Kernel Logistic Regressor. It is worth highlighting that the proposed contributions have been seamlessly integrated in the model, so that all the parameters are concurrently estimated using a unified inference process. Furthermore, the proposed model has been extended to work in both unsupervised and supervised modes. Our results for unsupervised mode improve 30% those of previous latent topic models. For supervised mode, where discriminative approaches are preponderant, our results are quite close to those of discriminative state-of-the-art methods.
机译:潜在主题模型由于能够无监督地发现视觉内容中的语义而成为许多计算机视觉应用程序中的流行范例。依靠词袋表示法,他们将图像视为潜在主题的混合,根据某些特定分布生成视觉单词。但是,这些方法的性能仍然受到它们考虑视觉单词的空间分布以及当前使用的外观分布的方式的限制。在本文中,我们提出了一种新颖的以区域为中心的潜在主题模型,该模型引入了两个主要贡献:第一,一种改进的空间上下文模型,该模型可以考虑主题间的区域间影响。第二,基于内核Logistic回归器的基于区域的高级外观分布。值得强调的是,建议的贡献已无缝集成到模型中,因此使用统一的推理过程可以同时估算所有参数。此外,所提出的模型已扩展为可在无监督和受监督模式下工作。我们在无监督模式下的结果比以前的潜在主题模型提高了30%。对于歧视性方法占优势的监督模式,我们的结果与歧视性最新技术方法的结果非常接近。

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