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Rapid Relevance Feedback Strategy Based on Distributed CBIR System

机译:基于分布式CBIR系统的快速相关反馈策略

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This article describes the capability of online data storage which has been enhanced by the emergence of cloud datacenter development. Distributed Hash Table (DHT) based image retrieval system using locality sensitive hash (LSH) has provided an efficient way to set up distributed Content Based Image Retrieval (CBIR) frameworks. However, with the fixed LSH function adopted, LSH and other codebook-based distributed retrieval systems are facing the problem of flexibility, and also are difficult to satisfy the user's demand. In this article, LRFMIR is proposed to introduce semantic search into DHT based CBIR system. LRFMIR is established on a DHT based network, where a flexible result truncating strategy is employed to fuse provided results by using multiple features measurements. Experiments show that LRFMIR provides a higher accuracy and recall rate than single feature employed retrieval systems, and possesses good load balancing and query efficiency performance.
机译:本文介绍了通过云数据中心开发的出现而增强的在线数据存储的能力。 基于分布式哈希表(DHT)使用局部敏感散列(LSH)的图像检索系统提供了一种有效的方法来设置基于分布式内容的图像检索(CBIR)框架。 然而,通过固定的LSH函数采用,LSH和其他基于码本的分布式检索系统正面临灵活性问题,并且难以满足用户的需求。 在本文中,建议LRFMIR将语义搜索引入基于DHT的CBIR系统。 LRFMIR在基于DHT的网络上建立,其中使用灵活的结果截断策略通过使用多个特征测量来保险为提供结果。 实验表明,LRFMIR提供比单个特征所采用的检索系统更高的精度和召回率,并具有良好的负载平衡和查询效率性能。

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