在大规模图上使用局部随机漫步和重新启动的并发图像查询

Yinglong Xia, Jui-Hsin Lai, Lifeng Nai, Ching-Yung Lin
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引用次数: 4

摘要

在许多大型多媒体应用程序中,高效的图像查询是一个基本挑战,特别是在并发处理多个查询时。本文提出了一种基于图局部随机漫步的高性能并行图像查询方法。具体来说,我们根据图像之间的相似度,利用图数据库将海量图像集组织成一个大规模的图。利用启发式方法将每个查询图像映射到图中的某个顶点,然后使用图上局部随机游动的替代方法进行局部搜索以改进查询结果。局部随机漫步过程本质上是在局部子图中进行加权部分遍历,以找到查询图像的更好匹配。利用处理器的多线程能力,对图像集的图进行并行化组织,使局部随机行走的一组部分图遍历可以并行进行。我们在最先进的多核平台上实现了所提出的方法。实验结果表明,基于图局部随机漫步的方法在吞吐量和可扩展性方面都优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concurrent image query using local random walk with restart on large scale graphs
Efficient image query is a fundamental challenge in many large scale multimedia applications, especially when handling many queries concurrently. In this paper, we proposed a novel approach called graph local random walk for high performance concurrent image query. Specifically, we organize the massive images set into a large scale graph using graph database, according to the similarity between images. A heuristic method is utilized to map each query image to some vertex in the graph, followed by a local search to refine the query results using an alternative of local random walk on graph. The local random walk process is essentially a weighted partial traversal in the local subgraphs for finding a better match of the query images. We organize the graph of the image set in a parallelization amenable approach, so that a set of partial graph traversal for local random walk can be performed concurrently, taking the advantage of the multithreading capability of processors. We implemented the proposed method in state-of-the-art multicore platforms. The experimental result shows that the graph local random walk based approach outperforms baseline methods in terms of both throughput and scalability.
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