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Compact feature based clustering for large-scale image retrieval

机译:基于紧凑特征的聚类用于大规模图像检索

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This paper addresses the problem of fast similar image retrieval, especially for large-scale datasets with millions of images. We present a new framework which consists of two dependent algorithms. First, a new feature is proposed to represent images, which is dubbed compact feature based clustering (CFC). For each image, we first extract cluster centers of local features, and then calculate distribution histograms of local features and statistics of spatial information in each cluster to form compact features based clustering, replacing thousands of local features. It can reduce feature vectors of image representation and enhance the discriminative power of each feature. In addition, an efficient retrieval method is proposed, based on vocabulary tree through compact features based clustering. Extensive experiments on the Ukbench, Holidays, and ImageNet databases demonstrate that our method reduces the memory and computation overhead and improves the retrieval efficiency, while keeping approximate state-of-the-art accuracy.
机译:本文解决了快速相似图像检索的问题,特别是对于具有数百万个图像的大规模数据集。我们提出了一个新的框架,该框架包含两个相关的算法。首先,提出了一种新的表示图像的特征,称为基于紧凑特征的聚类(CFC)。对于每个图像,我们首先提取局部特征的聚类中心,然后计算局部特征的分布直方图和每个聚类中的空间信息统计信息,以形成基于聚类的紧凑特征,从而替换了数千个局部特征。它可以减少图像表示的特征向量,并增强每个特征的判别能力。另外,提出了一种基于词汇树的基于紧凑特征聚类的有效检索方法。在Ukbench,Holidays和ImageNet数据库上进行的大量实验表明,我们的方法减少了内存和计算开销,并提高了检索效率,同时保持了大约最新的准确性。

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