Driver Maneuver Detection and Analysis using Time Series Segmentation and Classification

11/10/2022
by   Armstrong Aboah, et al.
0

The current paper implements a methodology for automatically detecting vehicle maneuvers from vehicle telemetry data under naturalistic driving settings. Previous approaches have treated vehicle maneuver detection as a classification problem, although both time series segmentation and classification are required since input telemetry data is continuous. Our objective is to develop an end-to-end pipeline for frame-by-frame annotation of naturalistic driving studies videos into various driving events including stop and lane keeping events, lane changes, left-right turning movements, and horizontal curve maneuvers. To address the time series segmentation problem, the study developed an Energy Maximization Algorithm (EMA) capable of extracting driving events of varying durations and frequencies from continuous signal data. To reduce overfitting and false alarm rates, heuristic algorithms were used to classify events with highly variable patterns such as stops and lane-keeping. To classify segmented driving events, four machine learning models were implemented, and their accuracy and transferability were assessed over multiple data sources. The duration of events extracted by EMA were comparable to actual events, with accuracies ranging from 59.30 change) to 85.60 1D-convolutional neural network model was 98.99 Long-short-term-memory model at 97.75 the support vector machine model at 97.65 consistent across different data sources. The study concludes that implementing a segmentation-classification pipeline significantly improves both the accuracy for driver maneuver detection and transferability of shallow and deep ML models across diverse datasets.

READ FULL TEXT
research
02/10/2020

Finding manoeuvre motifs in vehicle telematics

Driving behaviour has a great impact on road safety. A popular way of an...
research
05/31/2019

Driver Behavior Analysis Using Lane Departure Detection Under Challenging Conditions

In this paper, we present a novel model to detect lane regions and extra...
research
01/31/2018

Dynamics of Driver's Gaze: Explorations in Behavior Modeling & Maneuver Prediction

The study and modeling of driver's gaze dynamics is important because, i...
research
10/05/2021

A Hybrid Spatial-temporal Sequence-to-one Neural Network Model for Lane Detection

Reliable and accurate lane detection is of vital importance for the safe...
research
03/11/2019

Exploring OpenStreetMap Availability for Driving Environment Understanding

With the great achievement of artificial intelligence, vehicle technolog...
research
01/12/2023

Unsupervised Driving Event Discovery Based on Vehicle CAN-data

The data collected from a vehicle's Controller Area Network (CAN) can qu...
research
03/10/2021

An Automated Machine Learning (AutoML) Method for Driving Distraction Detection Based on Lane-Keeping Performance

With the enrichment of smartphones, driving distractions caused by phone...

Please sign up or login with your details

Forgot password? Click here to reset