scispace - formally typeset
Open AccessJournal ArticleDOI

Fine-Grained Abnormal Driving Behaviors Detection and Identification with Smartphones

TLDR
From results of extensive experiments with 20 volunteers driving for another four months in real driving environments, it is shown that a fine-grained abnormal driving behaviors detection and identification model achieves an average total accuracy of 95.36 percent with SVM classifier model, and 96.88 percent with NN classifiers.
Abstract
Real-time abnormal driving behaviors monitoring is a corner stone to improving driving safety. Existing works on driving behaviors monitoring using smartphones only provide a coarse-grained result, i.e., distinguishing abnormal driving behaviors from normal ones. To improve drivers’ awareness of their driving habits so as to prevent potential car accidents, we need to consider a fine-grained monitoring approach, which not only detects abnormal driving behaviors but also identifies specific types of abnormal driving behaviors, i.e., Weaving , Swerving , Sideslipping , Fast U-turn , Turning with a wide radius , and Sudden braking . Through empirical studies of the 6-month driving traces collected from real driving environments, we find that all of the six types of driving behaviors have their unique patterns on acceleration and orientation. Recognizing this observation, we further propose a fine-grained abnormal D riving behavior D etection and i D entification system, $D^{3}$ , to perform real-time high-accurate abnormal driving behaviors monitoring using smartphone sensors. We extract effective features to capture the patterns of abnormal driving behaviors. After that, two machine learning methods, Support Vector Machine (SVM) and Neuron Networks (NN), are employed, respectively, to train the features and output a classifier model which conducts fine-grained abnormal driving behaviors detection and identification. From results of extensive experiments with 20 volunteers driving for another four months in real driving environments, we show that $D^{3}$ achieves an average total accuracy of 95.36 percent with SVM classifier model, and 96.88 percent with NN classifier model.

read more

Citations
More filters
Journal ArticleDOI

Driver behavior detection and classification using deep convolutional neural networks

TL;DR: A novel yet efficient deep learning method for analyzing the driver behavior by learning a 2D Convolutional Neural Network on images constructed from driving signals based on recurrence plot technique.
Journal ArticleDOI

Smartphone-Based Vehicle Telematics: A Ten-Year Anniversary

TL;DR: In this paper, the authors summarized the first ten years of research in smartphone-based vehicle telematics, with a focus on user-friendly implementations and the challenges that arise due to the mobility of the smartphone.
Posted Content

Smartphone-based Vehicle Telematics - A Ten-Year Anniversary

TL;DR: This paper summarizes the first ten years of research in smartphone-based vehicle telematics, with a focus on user-friendly implementations and the challenges that arise due to the mobility of the smartphone.
Journal ArticleDOI

The application of machine learning techniques for driving behavior analysis: A conceptual framework and a systematic literature review

TL;DR: A conceptual framework is outlined whereby DB is viewed in terms of different dimensions established within the Driver–Vehicle–Environment (DVE) system, and an interpretive framework incorporating multiple dimensions influencing the driver’s conduct is identified.
Journal ArticleDOI

A survey on driving behavior analysis in usage based insurance using big data

TL;DR: The outcome of this research would help the insurance industries to assess the driving risk more accurately and to propose a solution to calculate the personalized premium based on the driving behavior with most importance towards prevention of risk.
References
More filters
Journal ArticleDOI

LIBSVM: A library for support vector machines

TL;DR: Issues such as solving SVM optimization problems theoretical convergence multiclass classification probability estimates and parameter selection are discussed in detail.
Journal ArticleDOI

Using mobile phones to determine transportation modes

TL;DR: This work creates a convenient (no specific position and orientation setting) classification system that uses a mobile phone with a built-in GPS receiver and an accelerometer to identify the transportation mode of an individual when outside.
Book

Machine Learning in Action

TL;DR: You'll use the flexible Python programming language to build programs that implement algorithms for data classification, forecasting, recommendations, and higher-level features like summarization and simplification in code you can reuse.
Journal ArticleDOI

Can SVM be used for automatic EEG detection of drowsiness during car driving

TL;DR: This study shows that automatic analysis and detection of EEG changes is possible by SVM and SVM is a good candidate for developing pre-emptive automatic drowsiness detection systems for driving safety.
Proceedings ArticleDOI

Mobile phone based drunk driving detection

TL;DR: A highly efficient system aimed at early detection and alert of dangerous vehicle maneuvers typically related to drunk driving, which achieves high accuracy and energy efficiency and is implemented on Android G1 phone.
Related Papers (5)