Automatic Data Acquisition with Robots for Indoor Fingerprinting

D. Năstac, Elena-Simona Lehan, Florentin Alexandru Iftimie, O. Arsene, B. Cramariuc
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Abstract

This paper addresses the problem of automatic data collection for the purpose of indoor positioning via Received Signal Strength (RSS) fingerprinting. A robotic platform with basic odometer sensors was used in an university building to automate the process of data acquisition which becomes particularly time consuming when considering mapping of large spaces such as shopping malls or hospitals. More than 3000 observations were collected. We associated for each observation their two dimensional coordinates with the received MAC RSS vector. Preprocessing methods included data augmentation and feature normalization. We searched for multiple models and one of the best performance was achieved by using neural networks and post-filtering.
室内指纹识别机器人的自动数据采集
本文研究了利用接收信号强度(RSS)指纹技术自动采集室内定位数据的问题。一个带有基本里程表传感器的机器人平台被用于一所大学的建筑中,以实现数据采集过程的自动化,当考虑到大型空间(如购物中心或医院)的测绘时,数据采集过程变得特别耗时。收集了3000多项观察结果。我们将每个观测值的二维坐标与接收到的MAC RSS向量相关联。预处理方法包括数据增强和特征归一化。我们搜索了多个模型,并使用神经网络和后滤波获得了最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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