Classification and Prediction of Bicycle-Road-Quality using IMU Data
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Keywords

Machine Learning
Deep Learning
InceptionTime
ResNet
Timeseries Classification
Road-Quality Prediction

Abstract

The present work ties in with the problem of bicycle road assessment that is currently done using expensive special measuring vehicles. Our alternative approach for road condition assessment is to mount a sensor device on a bicycle which sends accelerometer and gyroscope data via WiFi to a classification server. There, a prediction model determines road type and condition based on the sensor data. For the classification task, we compare different machine learning methods with each other, whereby validation accuracies of 99% can be achieved with deep residual networks such as InceptionTime. The main contribution of this work with respect to comparable work is that we achieve excellent accuracies on a realistic dataset classifying road conditions into nine distinct classes that are highly relevant for practice.

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Copyright (c) 2021 Johannes Heidt, Klaus Dorer