内容自适应哈希查找近重复图像搜索的全部或部分图像查询

Harmanci Oztan, R. HaritaogluIsmail
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引用次数: 1

摘要

本文提出了一种可扩展的高性能近重复图像搜索方法。该算法遵循可重复尺度不变兴趣点周围局部特征计算的通用范式。与现有的方法不同,它使用了更短的哈希值(40位)。通过利用哈希的短性,引入了一种新的高性能搜索算法,该算法分析哈希的每个位的可靠性,并通过基于可靠性自适应调整每个哈希位的“范围”来执行内容自适应哈希查找。匹配的特征被后处理以确定最终的匹配结果。实验表明,该算法可以从数千张图像中检测出裁剪、调整大小、打印扫描和重新编码的图像和图像片段。该算法在2.5GHz的Intel Core 2处理器上,可以在0.020秒内从2250张大小为2400x4000的图像数据库中搜索到一张200x200的图像。
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Content Adaptive Hash Lookups for Near-Duplicate Image Search by Full or Partial Image Queries
In this paper we present a scalable and high performance near-duplicate image search method. The proposed algorithm follows the common paradigm of computing local features around repeatable scale invariant interest points. Unlike existing methods, much shorter hashes are used (40 bits). By leveraging on the shortness of the hashes, a novel high performance search algorithm is introduced which analyzes the reliability of each bit of a hash and performs content adaptive hash lookups by adaptively adjusting the "range" of each hash bit based on reliability. Matched features are post-processed to determine the final match results. We experimentally show that the algorithm can detect cropped, resized, print-scanned and re-encoded images and pieces from images among thousands of images. The proposed algorithm can search for a 200x200 piece of image in a database of 2,250 images with size 2400x4000 in 0.020 seconds on 2.5GHz Intel Core 2.
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