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An Efficient Parallel Strategy for Matching Visual Self-similarities in Large Image Databases

机译:大型图像数据库中匹配视觉自相似性的有效并行策略

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Due to high interest of social online systems, there exists a huge and still increasing amount of image data in the web. In order to handle this massive amount of visual information, algorithms often need to be redesigned. In this work, we developed an efficient approach to find visual similarities between images that runs completely on GPU and is applicable to large image databases. Based on local self-similarity descriptors, the approach finds similarities even across modalities. Given a set of images, a database is created by storing all descriptors in an arrangement suitable for parallel GPU-based comparison. A novel voting-scheme further considers the spatial layout of descriptors with hardly any overhead. Thousands of images are searched in only a few seconds. We apply our algorithm to cluster a set of image responses to identify various senses of ambiguous words and re-tag similar images with missing tags.
机译:由于社会在线系统的高度兴趣,网络中存在大量且仍在增加的图像数据。为了处理大量的视觉信息,通常需要重新设计算法。在这项工作中,我们开发了一种有效的方法来查找完全在GPU上运行并适用于大型图像数据库的图像之间的视觉相似性。基于局部自相似性描述符,该方法甚至可以跨模态找到相似性。给定一组图像,通过将所有描述符存储在适合基于并行GPU的比较的安排中来创建数据库。一种新颖的投票方案进一步考虑了描述符的空间布局,几乎没有任何开销。仅几秒钟即可搜索成千上万张图像。我们将算法应用于一组图像响应,以识别歧义词的各种含义,并用丢失的标签重新标记相似的图像。

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