Modeling images as mixtures of reference images

F. Perronnin, Yan Liu
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引用次数: 4

Abstract

A state-of-the-art approach to measure the similarity of two images is to model each image by a continuous distribution, generally a Gaussian mixture model (GMM), and to compute a probabilistic similarity between the GMMs. One limitation of traditional measures such as the Kullback-Leibler (KL) divergence and the probability product kernel (PPK) is that they measure a global match of distributions. This paper introduces a novel image representation. We propose to approximate an image, modeled by a GMM, as a convex combination of K reference image GMMs, and then to describe the image as the K-dimensional vector of mixture weights. The computed weights encode a similarity that favors local matches (i.e. matches of individual Gaussians) and is therefore fundamentally different from the KL or PPK. Although the computation of the mixture weights is a convex optimization problem, its direct optimization is difficult. We propose two approximate optimization algorithms: the first one based on traditional sampling methods, the second one based on a variational bound approximation of the true objective function. We apply this novel representation to the image categorization problem and compare its performance to traditional kernel-based methods. We demonstrate on the PASCAL VOC 2007 dataset a consistent increase in classification accuracy.
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将图像建模为参考图像的混合物
测量两幅图像相似性的最先进方法是通过连续分布(通常是高斯混合模型(GMM))对每个图像进行建模,并计算GMM之间的概率相似性。Kullback-Leibler (KL)散度和概率积核(PPK)等传统度量方法的一个局限性是它们度量的是分布的全局匹配。本文介绍了一种新的图像表示方法。我们建议将由GMM建模的图像近似为K个参考图像GMM的凸组合,然后将图像描述为混合权重的K维向量。计算的权重编码了一种有利于局部匹配的相似性(即单个高斯的匹配),因此与KL或PPK有本质的不同。虽然混合权值的计算是一个凸优化问题,但其直接优化是困难的。我们提出了两种近似优化算法:第一种是基于传统的采样方法,第二种是基于真实目标函数的变分界近似。我们将这种新的表示应用于图像分类问题,并将其性能与传统的基于核的方法进行了比较。我们在PASCAL VOC 2007数据集上证明了分类精度的一致提高。
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