Abstract

ultra-wideband (UWB) technology enables centimeter-level localization systems based on the accurate estimation of the actual distance between transmitter and receiver, by means of the precise estimation of the signal time-of-flight. However, this is only possible when correctly detecting the first path of the incoming signal instead of a bounce or a reflection, which becomes challenging in non line-of-sight (NLOS) situations. There are many different approaches in the literature to alleviate the wrong detection of the first incoming UWB signal path. One of them considers machine learning techniques to design classifiers capable of distinguishing between line-of-sight (LOS) and NLOS propagation from available signal features. However, the performance and complexity of the obtained classifiers depend largely on the size of the input data associated to such features. Thus, features such as the channel impulse response (CIR) produce large amounts of data, yielding very complex classifiers. In this paper, we propose using a downsampled power delay profile (PDP) as an alternative feature consisting of input data much smaller than the CIR, although sufficiently representative, hence resulting in a lower computational cost while exhibiting a similar classification performance. Furthermore, another of the tasks addressed in this work is the study of the impact on the classification results of using a dataset for training where the samples of each class are not balanced from the point of view of energy. Finally, this work also studies how the classifiers based on the CIR or the PDP improve their performance when considering additional signal features such as the estimated range value or its energy level.

Highlights

  • I NDOOR positioning has experienced great advances in recent years, driven by an increasing number of commercial technology solutions capable of achieving positioning with centimeter accuracy

  • This is why the new neural network was designed with two different branches: a first one composed of several convolutional layers to treat the channel impulse response (CIR)/power delay profile (PDP) samples, and a different branch composed of a full connected layer whose input corresponds to the two extra features

  • A series of experiments to test two hypotheses related to the classification of UWB measurements into LOS and non line-of-sight (NLOS) according to its propagation conditions was carried out using deep learning mechanisms

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Summary

INTRODUCTION

I NDOOR positioning has experienced great advances in recent years, driven by an increasing number of commercial technology solutions capable of achieving positioning with centimeter accuracy. Regarding the LOS-NLOS classification problem with UWB, there are some authors that have considered the use of the CIR samples together with machine learning or deep learning techniques to find a solution In these cases, the process typically consists in employing all the samples from the CIR directly as training features [19], yielding classifiers with a high computational cost due to the large number of data samples provided by the CIR. The dataset does not include absolute position references, but it includes the values provided by the DW1000 after a regular ranging operation, such as the range estimation itself, the CIR samples or the index within the CIR where the first path of the UWB signal was detected This same dataset has been used in the present work, so that the results obtained with the features introduced could be compared with all the other works based on these same measurements.

USING THE PDP AS TRAINING SET
TRAINING FEATURES
RESULTS
EFFECT OF THE DIFFERENT ENERGY LEVELS OF EACH CLASS ON THE RESULT
CONCLUSION
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