NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS

Subject of Research.The paper considers the issues of neural network application for detection and prediction of road accidents. The overtaking process of cars with crossing into oncoming traffic is analyzed. The potential possibility of road accident reduction while overtaking is shown owing to int...

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Main Authors: Tatyana V. Zikratova, Igor A. Zikratov
Format: Article
Language:English
Published: Saint Petersburg National Research University of Information Technologies, Mechanics and Optics (ITMO University) 2020-04-01
Series:Naučno-tehničeskij Vestnik Informacionnyh Tehnologij, Mehaniki i Optiki
Subjects:
Online Access:https://ntv.ifmo.ru/file/article/19532.pdf
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author Tatyana V. Zikratova
Igor A. Zikratov
author_facet Tatyana V. Zikratova
Igor A. Zikratov
author_sort Tatyana V. Zikratova
collection DOAJ
description Subject of Research.The paper considers the issues of neural network application for detection and prediction of road accidents. The overtaking process of cars with crossing into oncoming traffic is analyzed. The potential possibility of road accident reduction while overtaking is shown owing to intellectual assessment of road situation dynamics development. Method.We proposed to use a two-class classifier based on a neural network. Road situations while overtaking with crossing into oncoming traffic were the objects of classification. The data on them was transmitted to the neural network input in the form of the frame set, that is, a graphical representation of discrete states of the “group of vehicles — section of the road” system. Frame formation was expected to be carried out as a result of information exchange between detectors and vehicle-mounted sensors, and road infrastructure, which is developed within the framework of the “smart city” paradigm. Main Results.The road situation is classified as “Dangerous” in case of high vehicle collision probability while overtaking and “Safe”, otherwise. If the situation is considered as “Dangerous”, the vehicle central processor generates an appropriate effect on the vehicle control elements to prevent an accident. Results of situation simulation implemented on Tensor Flow open software library for machine learning are obtained. They showed high prediction accuracy (0.96) on artificial data set. Practical Relevance. The results of the work can be used in promising unmanned and manned vehicles having radio communication with road infrastructure elements within the “smart city” concept to prevent road accidents caused by dangerous overtaking.
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spelling doaj.art-0fc46763c30d4f42973b5d0937e35c3c2022-12-22T00:07:04ZengSaint Petersburg National Research University of Information Technologies, Mechanics and Optics (ITMO University)Naučno-tehničeskij Vestnik Informacionnyh Tehnologij, Mehaniki i Optiki2226-14942500-03732020-04-0120230130510.17586/2226-1494-2020-20-2-301-305NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTSTatyana V. Zikratova0https://orcid.org/0000-0001-8365-658XIgor A. Zikratov1https://orcid.org/0000-0001-9054-800XLecturer, Military Institute (Naval Politechnic) Naval Military Educational and Scientific Center “Naval Academy”, Pushkin, 197045, Russian FederationD.Sc., Professor, Dean, Bonch-Bruevich Saint Petersburg State University of Telecommunications, Saint Petersburg, 193232, Russian FederationSubject of Research.The paper considers the issues of neural network application for detection and prediction of road accidents. The overtaking process of cars with crossing into oncoming traffic is analyzed. The potential possibility of road accident reduction while overtaking is shown owing to intellectual assessment of road situation dynamics development. Method.We proposed to use a two-class classifier based on a neural network. Road situations while overtaking with crossing into oncoming traffic were the objects of classification. The data on them was transmitted to the neural network input in the form of the frame set, that is, a graphical representation of discrete states of the “group of vehicles — section of the road” system. Frame formation was expected to be carried out as a result of information exchange between detectors and vehicle-mounted sensors, and road infrastructure, which is developed within the framework of the “smart city” paradigm. Main Results.The road situation is classified as “Dangerous” in case of high vehicle collision probability while overtaking and “Safe”, otherwise. If the situation is considered as “Dangerous”, the vehicle central processor generates an appropriate effect on the vehicle control elements to prevent an accident. Results of situation simulation implemented on Tensor Flow open software library for machine learning are obtained. They showed high prediction accuracy (0.96) on artificial data set. Practical Relevance. The results of the work can be used in promising unmanned and manned vehicles having radio communication with road infrastructure elements within the “smart city” concept to prevent road accidents caused by dangerous overtaking.https://ntv.ifmo.ru/file/article/19532.pdfpredictiondetectionsimulationbayesian classifierneural networkssafety
spellingShingle Tatyana V. Zikratova
Igor A. Zikratov
NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
Naučno-tehničeskij Vestnik Informacionnyh Tehnologij, Mehaniki i Optiki
prediction
detection
simulation
bayesian classifier
neural networks
safety
title NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
title_full NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
title_fullStr NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
title_full_unstemmed NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
title_short NEURAL NETWORK APPLICATION FOR DETECTION OF ROAD ACCIDENTS
title_sort neural network application for detection of road accidents
topic prediction
detection
simulation
bayesian classifier
neural networks
safety
url https://ntv.ifmo.ru/file/article/19532.pdf
work_keys_str_mv AT tatyanavzikratova neuralnetworkapplicationfordetectionofroadaccidents
AT igorazikratov neuralnetworkapplicationfordetectionofroadaccidents