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Foreground Focus: Unsupervised Learning from Partially Matching Images

机译:前景重点:从部分匹配的图像中进行无监督学习

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摘要

We present a method to automatically discover meaningful features in unlabeled image collections. Each image is decomposed into semi-local features that describe neighborhood appearance and geometry. The goal is to determine for each image which of these parts are most relevant, given the image content in the remainder of the collection. Our method first computes an initial image-level grouping based on feature correspondences, and then iteratively refines cluster assignments based on the evolving intra-cluster pattern of local matches. As a result, the significance attributed to each feature influences an image's cluster membership, while related images in a cluster affect the estimated significance of their features. We show that this mutual reinforcement of object-level and feature-level similarity improves unsupervised image clustering, and apply the technique to automatically discover categories and foreground regions in images from benchmark datasets.
机译:我们提出了一种自动发现未标记图像集中有意义的特征的方法。每个图像都分解为描述邻域外观和几何形状的半局部特征。目标是在给定其余集合中的图像内容的情况下,为每个图像确定最相关的部分。我们的方法首先基于特征对应关系计算初始图像级别分组,然后根据局部匹配的不断发展的集群内模式迭代地优化集群分配。结果,归属于每个特征的重要性影响图像的聚类成员,而聚类中的相关图像影响其特征的估计重要性。我们表明,对象级和特征级相似性的这种相互增强改善了无监督图像聚类,并应用了该技术从基准数据集中自动发现图像中的类别和前景区域。

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