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Capturing layers in image collections with componential models: from the layered epitome to the componential counting grid

机译:使用成分模型捕获图像集合中的图层:从分层缩影到成分计数网格

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Recently, the Counting Grid (CG) model [5] was developed to represent each input image as a point in a large grid of feature counts. This latent point is a corner of a window of grid points which are all uniformly combined to match the (normalized) feature counts in the image. Being a bag of word model with spatial layout in the latent space, the CG model has superior handling of field of view changes in comparison to other bag of word models, but with the price of being essentially a mixture, mapping each scene to a single window in the grid. In this paper we introduce a family of componential models, dubbed the Componential Counting Grid, whose members represent each input image by multiple latent locations, rather than just one. In this way, we make a substantially more flexible admixture model which captures layers or parts of images and maps them to separate windows in a Counting Grid. We tested the models on scene and place classification where their componential nature helped to extract objects, to capture parallax effects, thus better fitting the data and outperforming Counting Grids and Latent Dirichlet Allocation, especially on sequences taken with wearable cameras.
机译:最近,开发了计数网格(CG)模型[5]以将每个输入图像表示为特征计数的大网格中的点。这种潜在点是网格点窗口的角落,它们都均匀地组合以匹配图像中的(归一化)特征计数。作为一袋单词模型,在潜伏空间中具有空间布局,CG模型具有卓越的处理视野与其他单词模型相比,但具有基本上是混合的价格,将每个场景映射到单个网格中的窗口。在本文中,我们介绍了一系列成分模型,被称为组成计数网格,其成员代表多个潜在位置的每个输入图像,而不是一个。通过这种方式,我们制作了一个基本上更灵活的突出模型,它捕获层或部分图像,并将它们映射到分离计数网格中的窗口。我们在场景上测试了模型,并将其组成性质有助于提取对象的分类,以捕获视差效果,从而更好地拟合数据和优于计数网格和潜在的Dirichlet分配,尤其是在具有可穿戴摄像机拍摄的序列上。

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