云计算大数据检索中基于带宽的Geo-SPEBH算法评价

A. Othman, Moses Timothy, Aisha Yahaya Umar, Abdullahi Salihu Audu, B. Souley, A. Gital
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引用次数: 0

摘要

移动设备产生的信息量和速度的快速增长,以及基于web的应用程序的可用性,极大地促进了数据的大量收集。在计算机视觉和模式识别领域,近似最近邻算法(ANN)在大型数据库的比较搜索中提供给定查询的最近邻是必不可少的。为了提高大型数据库的数据管理和检索精度,已经开发了许多散列算法。然而,这些算法都没有考虑带宽,而带宽是信息检索和模式识别的一个重要方面。因此,我们的工作创造了一个Geo-SPEBH算法来解决这个基本差距。然后,从带宽的角度对分布式计算环境下Geo-SPEBH算法的性能进行了评估。使用名为Wire shark的网络分析仪,将SPEBH的地理性能与现有最先进的方法进行了比较。仿真结果表明,在检索过程中,从源到目的地和从目的地到用户的数据传输速率相同。当编码长度为8bit时,研究结果表明,从源到目的传输数据需要0.091 kb/s的数据速率。每个具有相同位码的算法需要相同的带宽来传输数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Geo-SPEBH algorithm based on Bandwidth for Big Data retrieval in Cloud Computing
The fast increase in volume and speed of information created by mobile devices, along with the availability of web-based applications, has considerably contributed to the massive collection of data. Approximate Nearest Neighbor (ANN) is essential in big size databases for comparison search to offer the nearest neighbor of a given query in the fi eld of computer vision and pattern recognition. Many hashing algorithms have been developed to improve data management and retrieval accuracy in huge databases. However, none of these algorithms took bandwidth into consideration, which is a signi fi cant aspect in information retrieval and pattern recognition. As a result, our work created a Geo-SPEBH algorithm to solve this basic gap. The paper then assesses the performance of the Geo-SPEBH algorithm in terms of bandwidth in a distributed computing environment. Geo-performance SPEBH ' s was compared to existing state-of-the-art approaches using a network analyzer called Wire shark. The simulation results reveal that during retrieval, the same kb/sec of data is carried from source to destination and from destination to user. When the coding length is 8bit, the fi ndings show that 0.091 kb/s of data is required to transport data from source to destination. Each algorithm with the same bit code requires the same amount of bandwidth to convey data.
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