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FJLT-FLSH: More Efficient Fly Locality-Sensitive Hashing Algorithm via FJLT for WMSN IoT Search

机译:FJLT-FLSH:通过FJLT进行WMSN物联网搜索的更高效的Fly Local-Sensitive Hashing算法

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摘要

Wireless multimedia sensor networks (WMSNs) have been widely used in environmental monitoring, intelligent transportation, and other scenarios; however, their data have high-dimensional, large-scale, and multitype properties, as well as other characteristics. It is technically difficult to construct an appropriate index structure and query strategy while we perform a highly accurate search. This paper proposes a novel locality-sensitive hashing (LSH) fast Johnson-Lindenstrauss transform (FJLT)-fly locality-sensitive hashing (FLSH) algorithm for WMSN Internet of Things search. In this method, the projection method of FJLT and the winner-takesall feature selection strategy in the fruity FLSH are considered. The method provides a new solution for the nearest neighbor search of high-dimensional data. We also discuss the distance-keeping property of our algorithm, and prove theoretically that the method proposed in this paper has better distance keeping performance than the traditional dimensionality reduction method. The experimental results show that the proposed algorithm has better generalization, accuracy of the search results, and time efficiency when using the Drosophila olfactory nerve to simulate the LSH process. This method effectively solves the problem of the approximate neighbor query of high-dimensional big data and can be effectively applied to search application on WMSN system.
机译:无线多媒体传感器网络(WMSN)已广泛用于环境监控,智能交通和其他场景;但是,它们的数据具有高维,大规模和多类型属性以及其他特征。在我们执行高度精确的搜索时,在技术上很难构建合适的索引结构和查询策略。针对WMSN物联网搜索,提出了一种新颖的局部敏感哈希(LSH)快速Johnson-Lindenstrauss变换(FJLT)-飞行局部敏感哈希(FLSH)算法。该方法考虑了果肉FLSH中FJLT的投影方法和获胜者通吃特征选择策略。该方法为高维数据的最近邻搜索提供了一种新的解决方案。我们还讨论了算法的距离保持特性,并从理论上证明了本文提出的方法比传统的降维方法具有更好的距离保持性能。实验结果表明,该算法在使用果蝇嗅神经模拟LSH过程时具有更好的泛化性,搜索结果的准确性和时间效率。该方法有效解决了高维大数据的近似邻居查询问题,可以有效地应用于WMSN系统的搜索应用中。

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