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Efficient Storage Support for Real-Time Near-Duplicate Video Retrieval

机译:实时近乎重复的视频检索的有效存储支持

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Near-duplicate video retrieval in a real-time manner is important to offer efficient storage services, and becomes more challenging due to dealing with the rapid growth of multimedia videos. Existing work fails to efficiently address this important problem due to overlooking the storage property of massive videos. In order to bridge the gap between storage system organization and application-aware videos, we propose a cost-effective real-time video retrieval scheme, called FastVR, which supports fast near-duplicate video retrieval. FastVR has the salient features of space- and time-efficiency in large-scale storage systems. The idea behind FastVR is to leverage space-efficient indexing structure and compact feature representation to facilitate keyframe based matching. Moreover, in the compact feature representation, FastVR transforms the frames into feature vectors in the Hamming space. The indexing structure in FastVR uses Locality Sensitive Hashing(LSH) to support fast similar neighboring search by grouping similar videos together. The conventional LSH unfortunately causes space inefficiency that is well addressed by a cuckoo hashing scheme. FastVR uses a semi-random choice to improve the performance in the random selection of the cuckoo hashing scheme. We implemented FastVR and examined the performance using a real-world dataset. The experimental results demonstrate the efficiency and significant performance improvements.
机译:实时方式的近乎重复的视频检索对于提供有效的存储服务很重要,并且由于处理多媒体视频的快速增长而变得更具挑战性。由于忽略了大容量视频的存储特性,因此现有工作无法有效解决这一重要问题。为了弥合存储系统组织和应用感知视频之间的差距,我们提出了一种经济高效的实时视频检索方案,称为FastVR,该方案支持快速的近重复视频检索。在大型存储系统中,FastVR具有节省时间和空间的显着特征。 FastVR背后的想法是利用节省空间的索引结构和紧凑的特征表示来促进基于关键帧的匹配。此外,在紧凑的特征表示中,FastVR将帧转换为汉明空间中的特征向量。 FastVR中的索引结构使用局部敏感哈希(LSH)通过将相似视频分组在一起来支持快速相似邻居搜索。不幸的是,传统的LSH会导致空间效率低下,这是通过杜鹃哈希方案很好解决的。 FastVR使用半随机选择来提高布谷鸟哈希方案的随机选择的性能。我们实施了FastVR,并使用实际数据集检查了性能。实验结果证明了效率和显着的性能改进。

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