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IOSR Journal of Electronics and Communication Engineering (IOSR-JECE)
e-ISSN: 2278-2834,p- ISSN: 2278-8735.Volume 10, Issue 1, Ver. III (Jan - Feb. 2015), PP 01-04
www.iosrjournals.org
DOI: 10.9790/2834-10130104 www.iosrjournals.org 1 | Page
Smartphone Based Sensing Driver Behavior Modeling
Rachana Daigavane1
, Prof. S.S.Wankhede2
1,2,
(Department of Electronics Engineering, G.H. Raisoni College of Engineering Nagpur , India)
Abstract: The project aim is to study and discover the main causes of accidents and then provide risk
assessments. Tracking dangerous driving behavior can help raise drivers awareness of their driving habits and
associated risks, thus, helping reduce careless driving and enforce safe driving practices. Showing
determination behavior and energetic pursuit of your ends is presently a causal agent of traffic in a urban
centre. Awareness and encourage driver safety are the measures that are added, we are intend to propose a
good arrangement that uses detection system and control of the vehicle. For the most part, drivers are not
aware that they give disposition to behave aggressively activity found in the ordinary course of events. Among
the factors involved in driving, namely the driver, the vehicle, and the environment, the human factor is the most
relevant and most difficult to characterize. This project is not only useful for the driver's behavior detection but
also provide reconstruction and investigation of accidents and in this way to reduce the risks and dangers for
the driver.
Keywords: ARM-7,Driver-behaviour,safety,Reckless behavior.
I. Introduction
The problem of aggressive driving appears to be increasing in seriousness. Aggressive Driver behavior
shows reckless driving statutes which add notion of a customary way of demeanor happen to complete in a
short period and/or intention. Mostly, drivers are incognizant that they give potentially-aggressive activity
everyday. As an anticipated outcome that is intented is hard to turn up province with codified necessitate the
criterion of connotation be met frequently aggressive driving accuse as rash impulsive. Potentially-aggressive
driver behavior is presently a leading cause of traffic in a city area. Driving behavior let in the definition of
rough or aggressive driving could result from aggression, selfishness, or competition. As Consequently of this
people are go through the road as an more and more life-threatening area. The most deadly factor is human
error. This includes unawareness of traffic rules and roadway condition; lack of driving skills; poor judgment;
and most importantly, aggressive driving. The main objective of this study is to identify aggressive driving
behaviors and underline their effect on traffic safety.
II. Driver Behavior Evaluation
A. Motivation and Objectives
Aggressiveness is modelled as a linear filter over the driving signals, causing a scaling transformation.
Once we have empirically demonstrated that aggressiveness causes a modification on the driving signals, we can
use this fact to detect aggressive behaviour from those signals. The overall objective is detecting aggressiveness
by means of nonintrusive methods to reduce the risk of road accidents. Employing Smartphone in order to
collect GPS data, process them, and provide information about risk levels. The provision of information relating
to the level of risk the driver is experiencing could alert the driver and make them modify their behaviour, thus
increasing road safety.
Smartphone Based Sensing Driver Behavior Modeling
DOI: 10.9790/2834-10130104 www.iosrjournals.org 2 | Page
B. Vehicle Dynamics Control System
Driving is a conceptual whole made up of complicated and related tasks, requiring full concentration
and a calm attitude. Bearing a accent and strong feeling, whether they result from the controlling and steering
the movement of a vehicle task itself or causal related matters, impact a drivers abilities. For example search has
shown that furious drivers are more desirable to take risks such as speeding, rapidly switching lanes, driving
dangerously close behind another vehicle and jumping red lights. Several states have to set down in an orderly
way particular traffic offenses, usually in some compounding as exhibit purpose and gumptious chase of your
ends. Withal, safety without put an address on other route users. Futhermore, practicing certainly knowing the
interrelatedness between the automobilist and the driving environment. The target is to step in a way the one
permanently get rid of aggressive-driving behaviors. The way of education and manner of acting adjustment are
needed which render capable of commonly used offender to learn in what state to conjure self-disciplines, or
make experience of imminent exterior infliction of approve. The individual may operate the vehicle fast only
doe merely on route with minimum overcrowding thus non causation fuss towards other people. Suppose
misdemeanor track record were utilised, it almost finished with a categorization scheme that could recognise
between aggressive and non-aggressive misdemeanor.
III. Block Diagram
Fig 1: System design.
The complete system diagram showing the interconnection of Aggressiveness detection system in
figure 1. The hardware system consists of GPS module, GSM Module, Accelerometer, Heart Beat sensor, Alarm
and LCD which plays important role for Aggressiveness detection system. All these sensors and module are
interface to a ARM7 TDMI core processor. USB interface provides a communication path between this
received signals and the handheld devices like laptops, palmtops etc.
Two types of bio medical sensors are used here. They are
1. Heart beat sensor
2. Temperature sensor
Heart Beat Sensor:
The pulse sensing element offers to survey the heart's function. This sensing element supervise the
stream of blood and impart away waste material through the bodypart. As the heart influence blood through the
vessel in which blood circulates in the human ear lobe, the quantity of blood in the ear alteration with time. The
detector reflect a light lobe through the ear and how much there is or how many there are transmitted light. The
clip is used on the tip of a finger or on the web of cutis 'tween fore finger and thumb. In the box the signal is
magnify, reverse and lastly separate out. By visual representation to the degree of signal, the heart rate or pulse
can be find out. Heart rate varies between individuals. At rest, an grownup or adult have norm pulse of 72 per
min. A person trained to compete in sports ordinarily have a deject pulse than less active people. Children have
a higher heart rate merely show large variations. The pulse go up while workout and come back easy to rest
frequency after the workout. The pulse that come back to regular or normal can be used as an indicant of
fitness.
Smartphone Based Sensing Driver Behavior Modeling
DOI: 10.9790/2834-10130104 www.iosrjournals.org 3 | Page
Accelerometer:
Roads are designed in accordance with design guidelines with the objective to modify to achieve
maximum efficiency and safety while minify price and environmental damage. The actual time that it takes a
process to occur unnatural implusive doings or behavior trying to better safety driving. Existing works on
driving behaviors monitoring using smart phones 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 abnormal driving behaviors monitoring
approach, which can not only detect abnormal driving behaviors but also identify specific types of abnormal
driving behaviors, i.e. Weaving, Swerving, Sideslipping, Fast U-turn, Turning with a wide radius and Sudden
braking.
The reckless behaviour of driver can be determined by the accelerometer. Overtaking of vehicle is
takes place during reckless driving. Vehicle is moving positive and negative x-axis in minimum time which may
shows reckless. After detection the necessary steps can be taken. The vehicle can be identified and stopped at
anywhere.
GPS:
The GPS smart receiving system characteristic the 16 channels, extremist less power Global
Positioning System architectural product. This concluded enabled GPS receiving system furnish eminent place,
speed and accurate time execution and in addition eminent sensitiveness and trailing potentiality. Extremist low
power CMOS technology, the GPS receiving system is paragon for many portable practical applications like
PDA, Tab PC, a mobile phone with more advanced features etc. The GPS receiver provides latitude and
longitude information which provides location of vehicle. The profit to exploiter is that its a ultra low power
consumption, easy and fast to put in , low cost with high performance.
GSM:
In (electronics) GSM is Group Special Mobile and (telecommunications) Global System for Mobile
communications.
Figure 2: GSM model
The GSM is used to send information via a wireless channel through air. The information which is collected by
ARM processor send wirelessly through GSM.
Smartphone Based Sensing Driver Behavior Modeling
DOI: 10.9790/2834-10130104 www.iosrjournals.org 4 | Page
Fig 2: Detection system flow chart
IV. Conclusion
The Driver behavior can be monitor by knowing their heartbeat and reckless driving by accelerometer.
Our objective is to combine this information detect aggressiveness behavior and reckless driving and send
those information via GSM. These systems are not only useful for the driver's behavior detection but also
render the reconstruction and probe of collision storing driving related Conduction and in that manner cut
down peril for the operator of the vehicle. SMS based service is used to make Monitoring and detecting the
behavior of drivers is vital to ensuring road safety by alerting the driver and other vehicles on the road in cases
of abnormal driving behaviors. Driver behavior is affected by many factors that are related to the vehicle and
the environment and over the course of driving a driver will be found to be in a particular state and the state for
a period of time or shift to another state. Hence, it is important to capture the static and the dynamic aspects of
behavior and take into account the contextual information that relates to driver behavior.
References
[1]. Department for Transport, “Reported road casualties Great Britain: 2008 Annual Report”, London, The Stationery Office, 2009.
[2]. D. G. Kidd, and W. J. Horrey, “Do drivers' estimates of distraction become calibrated to their actual distracted driving performance
with greater exposure?”, in TRB the 88th Annual Meeting Compendium, Washington D.C., January, 2009.
[3]. W. J. Horrey, M. F. Lesch, and A. Garabet, “Dissociation between driving performance and drivers' subjective estimates of
performance and workload in dual-task conditions”, Journal of safety research, vol. 40, 2009, pp. 7-12.
[4]. M. A. Recarte, E. Perez, A. Conchillo, and L. M. Nunes, “Mental workload and visual impairment: Differences between pupil,
blink, and subjective rating”, The Spanish Journal of Psychology, vol. 11, no. 2, 2008, pp. 374-385.
[5]. L. Bergasa, J. Nuevo, M. Sotelo, R. Barea, and M. Lopez, “Real-time system for monitoring driver vigilance,” IEEE Trans. Intell.
Transp. Syst., vol. 7, no. 1, pp. 63–77, Mar. 2006.
[6]. T. Toledo, O. Musicant, and T. Lotan, “In-vehicle data recorders for mon- itoring and feedback on drivers’ behavior,” Transp. Res.
Part C, Emerging Technol., vol. 16, no. 3, pp. 320–331, Jun. 2008.
[7]. E. Murphy-Chutorian and M. M. Trivedi, “3d tracking and dy- namic analysis of human head movements and attentional targets,”
in Proc. ACM/IEEE Int. Conf. Distrib. Smart Cameras, 2008, pp. 1–8.
[8]. “Monitoring the Fatigue Conditions and Controlling the Speed of the Vehicle” A. Nivetha, R. Priya, V. Radhika and Dr. S.Mary
Praveena Sri Ramakrishna Institute of Technology, CBE-10.
[9]. “Modeling and Detecting Aggressiveness From Driving Signals” Ana Belén Rodríguez González, Mark Richard Wilby, Juan José
Vinagre Díaz, and Carmen Sánchez Ávila
[10]. “Are Drivers Aware of their Behavior Changes When Using In-Vehicle Systems” Yan Yang*, Mike McDonald, Byran Reimer and
Bruce Mehle 2012 15th International IEEE Conference on Intelligent Transportation Systems.
[11]. “Intelligent Vehicle Control for Driver Behaviour using Wireless in Transportation” System 1Jayapriya.P, 2Prof. Prabhakaran.S,
3Ashok T. 1ME-EST, 2Assistant Professor Nandha Engineering College, Erode 2014 International Journal of Engineering
Development and Research.
[12]. “ACCIDENT AVOIDANCE AND DETECTION ON HIGHWAYS” S.P. Bhumkar1, V.V. Deotare2, R.V.Babar3 1Sinhgad
Institute Of Technology, Lonavala, Pune, India International Journal of Engineering Trends and Technology- Volume3Issue2- 2012
[13]. “DriveSafe: an App for Alerting Inattentive Drivers and Scoring Driving Behaviors” Luis M. Bergasa, Daniel Almería, Javier
Almazán, J. Javier Yebes, Roberto Arroyo 2014 IEEE Intelligent Vehicles Symposium (IV) June 8-11, 2014.
start
Heart beat sensor
Normal Abnormal
GSM
Send Message
Emergency Family /
Caregivers
Medicalservice
provider
GPS
Alarm
Accelerometer
Reckless behavior

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Smartphone Based Sensing Driver Behavior Modeling

  • 1. IOSR Journal of Electronics and Communication Engineering (IOSR-JECE) e-ISSN: 2278-2834,p- ISSN: 2278-8735.Volume 10, Issue 1, Ver. III (Jan - Feb. 2015), PP 01-04 www.iosrjournals.org DOI: 10.9790/2834-10130104 www.iosrjournals.org 1 | Page Smartphone Based Sensing Driver Behavior Modeling Rachana Daigavane1 , Prof. S.S.Wankhede2 1,2, (Department of Electronics Engineering, G.H. Raisoni College of Engineering Nagpur , India) Abstract: The project aim is to study and discover the main causes of accidents and then provide risk assessments. Tracking dangerous driving behavior can help raise drivers awareness of their driving habits and associated risks, thus, helping reduce careless driving and enforce safe driving practices. Showing determination behavior and energetic pursuit of your ends is presently a causal agent of traffic in a urban centre. Awareness and encourage driver safety are the measures that are added, we are intend to propose a good arrangement that uses detection system and control of the vehicle. For the most part, drivers are not aware that they give disposition to behave aggressively activity found in the ordinary course of events. Among the factors involved in driving, namely the driver, the vehicle, and the environment, the human factor is the most relevant and most difficult to characterize. This project is not only useful for the driver's behavior detection but also provide reconstruction and investigation of accidents and in this way to reduce the risks and dangers for the driver. Keywords: ARM-7,Driver-behaviour,safety,Reckless behavior. I. Introduction The problem of aggressive driving appears to be increasing in seriousness. Aggressive Driver behavior shows reckless driving statutes which add notion of a customary way of demeanor happen to complete in a short period and/or intention. Mostly, drivers are incognizant that they give potentially-aggressive activity everyday. As an anticipated outcome that is intented is hard to turn up province with codified necessitate the criterion of connotation be met frequently aggressive driving accuse as rash impulsive. Potentially-aggressive driver behavior is presently a leading cause of traffic in a city area. Driving behavior let in the definition of rough or aggressive driving could result from aggression, selfishness, or competition. As Consequently of this people are go through the road as an more and more life-threatening area. The most deadly factor is human error. This includes unawareness of traffic rules and roadway condition; lack of driving skills; poor judgment; and most importantly, aggressive driving. The main objective of this study is to identify aggressive driving behaviors and underline their effect on traffic safety. II. Driver Behavior Evaluation A. Motivation and Objectives Aggressiveness is modelled as a linear filter over the driving signals, causing a scaling transformation. Once we have empirically demonstrated that aggressiveness causes a modification on the driving signals, we can use this fact to detect aggressive behaviour from those signals. The overall objective is detecting aggressiveness by means of nonintrusive methods to reduce the risk of road accidents. Employing Smartphone in order to collect GPS data, process them, and provide information about risk levels. The provision of information relating to the level of risk the driver is experiencing could alert the driver and make them modify their behaviour, thus increasing road safety.
  • 2. Smartphone Based Sensing Driver Behavior Modeling DOI: 10.9790/2834-10130104 www.iosrjournals.org 2 | Page B. Vehicle Dynamics Control System Driving is a conceptual whole made up of complicated and related tasks, requiring full concentration and a calm attitude. Bearing a accent and strong feeling, whether they result from the controlling and steering the movement of a vehicle task itself or causal related matters, impact a drivers abilities. For example search has shown that furious drivers are more desirable to take risks such as speeding, rapidly switching lanes, driving dangerously close behind another vehicle and jumping red lights. Several states have to set down in an orderly way particular traffic offenses, usually in some compounding as exhibit purpose and gumptious chase of your ends. Withal, safety without put an address on other route users. Futhermore, practicing certainly knowing the interrelatedness between the automobilist and the driving environment. The target is to step in a way the one permanently get rid of aggressive-driving behaviors. The way of education and manner of acting adjustment are needed which render capable of commonly used offender to learn in what state to conjure self-disciplines, or make experience of imminent exterior infliction of approve. The individual may operate the vehicle fast only doe merely on route with minimum overcrowding thus non causation fuss towards other people. Suppose misdemeanor track record were utilised, it almost finished with a categorization scheme that could recognise between aggressive and non-aggressive misdemeanor. III. Block Diagram Fig 1: System design. The complete system diagram showing the interconnection of Aggressiveness detection system in figure 1. The hardware system consists of GPS module, GSM Module, Accelerometer, Heart Beat sensor, Alarm and LCD which plays important role for Aggressiveness detection system. All these sensors and module are interface to a ARM7 TDMI core processor. USB interface provides a communication path between this received signals and the handheld devices like laptops, palmtops etc. Two types of bio medical sensors are used here. They are 1. Heart beat sensor 2. Temperature sensor Heart Beat Sensor: The pulse sensing element offers to survey the heart's function. This sensing element supervise the stream of blood and impart away waste material through the bodypart. As the heart influence blood through the vessel in which blood circulates in the human ear lobe, the quantity of blood in the ear alteration with time. The detector reflect a light lobe through the ear and how much there is or how many there are transmitted light. The clip is used on the tip of a finger or on the web of cutis 'tween fore finger and thumb. In the box the signal is magnify, reverse and lastly separate out. By visual representation to the degree of signal, the heart rate or pulse can be find out. Heart rate varies between individuals. At rest, an grownup or adult have norm pulse of 72 per min. A person trained to compete in sports ordinarily have a deject pulse than less active people. Children have a higher heart rate merely show large variations. The pulse go up while workout and come back easy to rest frequency after the workout. The pulse that come back to regular or normal can be used as an indicant of fitness.
  • 3. Smartphone Based Sensing Driver Behavior Modeling DOI: 10.9790/2834-10130104 www.iosrjournals.org 3 | Page Accelerometer: Roads are designed in accordance with design guidelines with the objective to modify to achieve maximum efficiency and safety while minify price and environmental damage. The actual time that it takes a process to occur unnatural implusive doings or behavior trying to better safety driving. Existing works on driving behaviors monitoring using smart phones 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 abnormal driving behaviors monitoring approach, which can not only detect abnormal driving behaviors but also identify specific types of abnormal driving behaviors, i.e. Weaving, Swerving, Sideslipping, Fast U-turn, Turning with a wide radius and Sudden braking. The reckless behaviour of driver can be determined by the accelerometer. Overtaking of vehicle is takes place during reckless driving. Vehicle is moving positive and negative x-axis in minimum time which may shows reckless. After detection the necessary steps can be taken. The vehicle can be identified and stopped at anywhere. GPS: The GPS smart receiving system characteristic the 16 channels, extremist less power Global Positioning System architectural product. This concluded enabled GPS receiving system furnish eminent place, speed and accurate time execution and in addition eminent sensitiveness and trailing potentiality. Extremist low power CMOS technology, the GPS receiving system is paragon for many portable practical applications like PDA, Tab PC, a mobile phone with more advanced features etc. The GPS receiver provides latitude and longitude information which provides location of vehicle. The profit to exploiter is that its a ultra low power consumption, easy and fast to put in , low cost with high performance. GSM: In (electronics) GSM is Group Special Mobile and (telecommunications) Global System for Mobile communications. Figure 2: GSM model The GSM is used to send information via a wireless channel through air. The information which is collected by ARM processor send wirelessly through GSM.
  • 4. Smartphone Based Sensing Driver Behavior Modeling DOI: 10.9790/2834-10130104 www.iosrjournals.org 4 | Page Fig 2: Detection system flow chart IV. Conclusion The Driver behavior can be monitor by knowing their heartbeat and reckless driving by accelerometer. Our objective is to combine this information detect aggressiveness behavior and reckless driving and send those information via GSM. These systems are not only useful for the driver's behavior detection but also render the reconstruction and probe of collision storing driving related Conduction and in that manner cut down peril for the operator of the vehicle. SMS based service is used to make Monitoring and detecting the behavior of drivers is vital to ensuring road safety by alerting the driver and other vehicles on the road in cases of abnormal driving behaviors. Driver behavior is affected by many factors that are related to the vehicle and the environment and over the course of driving a driver will be found to be in a particular state and the state for a period of time or shift to another state. Hence, it is important to capture the static and the dynamic aspects of behavior and take into account the contextual information that relates to driver behavior. References [1]. Department for Transport, “Reported road casualties Great Britain: 2008 Annual Report”, London, The Stationery Office, 2009. [2]. D. G. Kidd, and W. J. Horrey, “Do drivers' estimates of distraction become calibrated to their actual distracted driving performance with greater exposure?”, in TRB the 88th Annual Meeting Compendium, Washington D.C., January, 2009. [3]. W. J. Horrey, M. F. Lesch, and A. Garabet, “Dissociation between driving performance and drivers' subjective estimates of performance and workload in dual-task conditions”, Journal of safety research, vol. 40, 2009, pp. 7-12. [4]. M. A. Recarte, E. Perez, A. Conchillo, and L. M. Nunes, “Mental workload and visual impairment: Differences between pupil, blink, and subjective rating”, The Spanish Journal of Psychology, vol. 11, no. 2, 2008, pp. 374-385. [5]. L. Bergasa, J. Nuevo, M. Sotelo, R. Barea, and M. Lopez, “Real-time system for monitoring driver vigilance,” IEEE Trans. Intell. Transp. Syst., vol. 7, no. 1, pp. 63–77, Mar. 2006. [6]. T. Toledo, O. Musicant, and T. Lotan, “In-vehicle data recorders for mon- itoring and feedback on drivers’ behavior,” Transp. Res. Part C, Emerging Technol., vol. 16, no. 3, pp. 320–331, Jun. 2008. [7]. E. Murphy-Chutorian and M. M. Trivedi, “3d tracking and dy- namic analysis of human head movements and attentional targets,” in Proc. ACM/IEEE Int. Conf. Distrib. Smart Cameras, 2008, pp. 1–8. [8]. “Monitoring the Fatigue Conditions and Controlling the Speed of the Vehicle” A. Nivetha, R. Priya, V. Radhika and Dr. S.Mary Praveena Sri Ramakrishna Institute of Technology, CBE-10. [9]. “Modeling and Detecting Aggressiveness From Driving Signals” Ana Belén Rodríguez González, Mark Richard Wilby, Juan José Vinagre Díaz, and Carmen Sánchez Ávila [10]. “Are Drivers Aware of their Behavior Changes When Using In-Vehicle Systems” Yan Yang*, Mike McDonald, Byran Reimer and Bruce Mehle 2012 15th International IEEE Conference on Intelligent Transportation Systems. [11]. “Intelligent Vehicle Control for Driver Behaviour using Wireless in Transportation” System 1Jayapriya.P, 2Prof. Prabhakaran.S, 3Ashok T. 1ME-EST, 2Assistant Professor Nandha Engineering College, Erode 2014 International Journal of Engineering Development and Research. [12]. “ACCIDENT AVOIDANCE AND DETECTION ON HIGHWAYS” S.P. Bhumkar1, V.V. Deotare2, R.V.Babar3 1Sinhgad Institute Of Technology, Lonavala, Pune, India International Journal of Engineering Trends and Technology- Volume3Issue2- 2012 [13]. “DriveSafe: an App for Alerting Inattentive Drivers and Scoring Driving Behaviors” Luis M. Bergasa, Daniel Almería, Javier Almazán, J. Javier Yebes, Roberto Arroyo 2014 IEEE Intelligent Vehicles Symposium (IV) June 8-11, 2014. start Heart beat sensor Normal Abnormal GSM Send Message Emergency Family / Caregivers Medicalservice provider GPS Alarm Accelerometer Reckless behavior