论文标题

提高无线本地化深度学习的表现

Improving the Performance of Deep Learning for Wireless Localization

论文作者

Pydipaty, Ramdoot, George, Johnu, Selvaraju, Krishna, Saha, Amit

论文摘要

室内定位系统通常基于接收的信号强度指标(RSSI)测量WiFi或蓝牙 - 低能(BLE)信标。在这样的系统中,两种最常见的技术是三材和指纹识别,后者提供了更高的准确性。在指纹技术中,经常使用深度学习(DL)算法来预测接收器的位置,该算法基于接收器收到的多个信标的RSSI测量值。在本文中,我们解决了将深度学习应用于无线本地化的两个实际问题 - 将解决方案从一个无线环境转移到另一个\ emph {and}标记的数据集的小尺寸。首先,我们将自动超参数优化应用于室内无线本地化的深神经网络(DNN)系统,这使该系统易于移植到新的无线环境中。其次,我们展示了如何使用未标记的数据集增强通常的标记数据集。我们通过应用两种技术观察到了DL的性能提高。此外,所有相关代码均已免费提供。

Indoor localization systems are most commonly based on Received Signal Strength Indicator (RSSI) measurements of either WiFi or Bluetooth-Low-Energy (BLE) beacons. In such systems, the two most common techniques are trilateration and fingerprinting, with the latter providing higher accuracy. In the fingerprinting technique, Deep Learning (DL) algorithms are often used to predict the location of the receiver based on the RSSI measurements of multiple beacons received at the receiver. In this paper, we address two practical issues with applying Deep Learning to wireless localization -- transfer of solution from one wireless environment to another \emph{and} small size of labelled data set. First, we apply automatic hyperparameter optimization to a deep neural network (DNN) system for indoor wireless localization, which makes the system easy to port to new wireless environments. Second, we show how to augment a typically small labelled data set using the unlabelled data set. We observed improved performance in DL by applying the two techniques. Additionally, all relevant code has been made freely available.

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