4.7 Article

Empowering Advanced Driver-Assistance Systems from Topological Data Analysis

Journal

MATHEMATICS
Volume 9, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/math9060634

Keywords

Morse theory; topological data analysis; machine learning; time series; smart driving

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Funding

  1. ESI Group [2019-0060]
  2. University of Zaragoza

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The study utilizes motion sensor data and incorporates topological data analysis to design a model for accurately predicting the state of drivers, with experiments demonstrating the effectiveness of the model.
We are interested in evaluating the state of drivers to determine whether they are attentive to the road or not by using motion sensor data collected from car driving experiments. That is, our goal is to design a predictive model that can estimate the state of drivers given the data collected from motion sensors. For that purpose, we leverage recent developments in topological data analysis (TDA) to analyze and transform the data coming from sensor time series and build a machine learning model based on the topological features extracted with the TDA. We provide some experiments showing that our model proves to be accurate in the identification of the state of the user, predicting whether they are relaxed or tense.

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