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Dynamic topology and relevance learning SOM-based algorithm for image clustering tasks

机译:基于动态拓扑和相关性学习SOM的图像聚类算法

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In this paper, the task of unsupervised visual object categorization (UVOC) is addressed. We utilize a variant of Self-organizing Map (SOM) to cluster images in two different scenarios: disjoint (images from Caltech256) and non-disjoint (images from MSRC2) sets. First, we ran several tests to evaluate different image representation techniques: features obtained by a deep convolutional network were compared with those obtained by handcrafted methods, such as SIFT combined with a set of interest point detectors. As expected, we found that deep convolutional network features significantly outperformed its handcrafted counterparts. After choosing the best image representation technique, we compared the state-of-the-art image clustering algorithms with a SOM-based subspace clustering method that identifies automatically the relevant features in the high-dimensional image representations. The results have shown that our method achieves substantially lower clustering error than all competitors in several challenging testing settings.
机译:在本文中,解决了无监督视觉对象分类(UVOC)的任务。我们利用自组织映射(SOM)的变体在两种不同情况下对图像进行聚类:不相交(来自Caltech256的图像)和不相交(来自MSRC2的图像)集。首先,我们进行了几次测试,以评估不同的图像表示技术:将通过深度卷积网络获得的特征与通过手工方法获得的特征进行比较,例如将SIFT与兴趣点检测器结合使用。不出所料,我们发现深层卷积网络功能明显优于其手工制作的网络。选择最佳的图像表示技术后,我们将最新的图像聚类算法与基于SOM的子空间聚类方法进行了比较,该方法可自动识别高维图像表示中的相关特征。结果表明,在几种具有挑战性的测试设置中,我们的方法比所有竞争对手都实现了更低的聚类误差。

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