基于特征自适应k均值聚类的RSS指纹数据集缩减

Lucie Klus, Darwin Quezada-Gaibor, J. Torres-Sospedra, E. Lohan, C. Granell, J. Nurmi
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引用次数: 11

摘要

现代物联网设备,包括智能手机和可穿戴设备,通常资源有限。它们需要有效的方法来优化内部存储的使用,提供计算效率,并降低能耗。应适当使用设备资源,特别是在用于耗时和能量密集的计算(如定位或定位)时。然而,计算成本的降低通常会降低定位方法的性能。因此,本文的目标是提出并比较指纹数据集的压缩机制,通过使用自适应k-means聚类,在不丢失相关信息的情况下节能。结果,我们实现了高达15.97的压缩比,并且位置误差很小(1%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RSS Fingerprinting Dataset Size Reduction Using Feature-Wise Adaptive k-Means Clustering
Modern IoT devices, that include smartphones and wearables, usually have limited resources. They require efficient methods to optimize the use of internal storage, provide computational efficiency, and reduce energy consumption. Device resources should be used appropriately, especially when employed for time-consuming and energy-intensive computations such as positioning or localization. However, reducing computational costs usually degrades the positioning methods. Therefore, the goal of this article is to propose and compare compression mechanisms of the fingerprinting datasets for energy-saving without losing relevant information, by using adaptive k-means clustering. As a result, we achieved a compression ratio of up to 15.97 with a small decrease (1%) in position error.
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