A Comprehensive Survey of Driving Monitoring and Assistance Systems
Abstract
:1. Introduction
1.1. Background and Motivation
1.2. Contribution and Organization
- Basic concepts related to driving process and problems associated with a driver’s distraction, fatigue, and driving style are discussed in Section 2.
- Section 3 provides a survey of the driver-focused studies and explains the systems and techniques developed to detect a driver’s distraction and fatigue.
- A discussion on modeling and recognition of driving style behavior is provided in Section 4. These studies are mainly vehicle-oriented as the data used for driving style recognition is extracted from sensors installed on the vehicle.
- In Section 5, a review is presented on the models and systems developed to avoid collision by detecting other vehicles. Therefore, this section focuses on the driving environment.
- A review of systems developed to enhance a driver’s perception of comfortable driving experiences and DMAS available in modern vehicles is presented in Section 6. Moreover, a brief description of future trends in DMAS is also provided in the same section.
- Section 7 concludes this survey.
2. Basic Topics Associated with Driving
2.1. Driving Process
- Distraction (ranging from mild distraction to, looked but could not see, status which is a form of cognitive distraction)
- Fatigue (this work considers it as a comprehensive term which also encompasses the drowsy behavior of a driver)
- Aggressive driving style (which is typically detected by vehicle-related parameters such as sharp turns, over-speed, and hard braking)
2.2. Distraction
- Olfactory distraction
- Gustatory distraction
- Visual distraction
- Auditory distraction
- Biomechanical distraction
- Cognitive distraction
2.3. Fatigue
- Frequent yawning
- Radically increased eye-blinking frequency
- Burning feeling in the eyes and hard to keep them open
- Lethargic or relaxed position of hands on steering wheel
- Increased (or sometimes irrationally decreased) response time
- Vehicle wandering between the lanes or out of road
- Nodding off and prompting the body or head from nodding off
- Shallow breathing
- A spontaneous head nod after glancing at side mirrors
- Reduced movement of the head
- Increased frequency of scratching legs, chin, head, and ears
- Turning head to the left to relieve the muscular tension of the neck
- Feelings of depression and irritation
2.4. Driving Style
- Ignoring speed limits and road conditions
- Opposite side driving
- Driving between two lanes
- Not using the indicator while taking a turn
- Driving when the driver is under the effect of drugs
3. Driver-Focused Studies and Systems
3.1. Electroencephalogram (EEG)
3.2. Electrocardiogram (ECG)
- Heart Rate (HR): A reduction in HR or the number of heart beats per minute is reported in [68,69] for persons moving from attentive to a sleepy state. Similarly, a decrease in HR is reported during long drives at night [50]. Moreover, a driver’s emotions, mental activity, and body exertion also affect HR [70,71].
- Heart Rate Variability (HRV): HRV is the change in the time interval between two successive heart beats, and is also known as RRI. The activities of the autonomous nervous system (ANS) change due to fatigue or stress and can be efficiently detected by HRV [72,73,74]. The studies show that a reduction in HRV is observed as workload increases, indicating a negative correlation between HRV and workload. It is notable that certain activities are mentally easy and physically hard, whereas several activities are mentally hard and physically easy. Typically, during the second type of activities, HR increases and HRV decreases [72,75]. Apart from the HRV pattern, the power spectral analysis of HRV also provides valuable information for drowsiness detection [69]. According to studies on ECG data, HRV receives the priority for early fatigue detection. The instantaneous deviation observed in time-domain ECG signal is the main drawback of HRV [76], which is resolved by its time-frequency analysis [77].
- Respiration Rate (RR): RR is the count of breaths exhaled and inhaled in one minute. The authors of [78] tried to establish a link between drowsiness and RR according to which RR starts to fall with the initialization of drowsiness and sets in, and continues to fall until sleep onset. However, this observation did not receive consensus. For example, the study in [76] experimented 34 participants but did not find any significant variations in the respiratory cycle due to sleepiness. It is observed that non-contact ECG measurements require a close proximity to the driver; otherwise the accuracy of results is compromised [78].
3.3. Electrooculography (EOG)
- Blink Duration: Blink duration is a measure of the total time (ms) from the start to the end of a blink.
- Blink Frequency: It is the number of blinks in a minute. An increased blink frequency is an indicator of drowsiness.
- Blink Amplitude: It provides the measure of electrical potential during a blink. Blink amplitude is measured by EOG electrodes and its typical range is 100–400 μV.
- PERCLOS: The proportion of time during which the eyes remain at least 80% closed in one minute.
- Lid Reopening Delay: The time taken from full closure of lid to the start of its reopening. Its duration is a few milliseconds for an awake person, and it increases during drowsiness and extends to several hundred milliseconds during a microsleep.
- Eye Ball Movement: The eyeball movements take place when eyeball moves from its point of fixation. This phenomenon is also used as an indicator of drowsiness.
3.4. Electromyography (EMG)
3.5. Electro-Dermal Activity (EDA)
3.6. Skin Temperature (ST)
3.7. Hybrid Techniques
4. Vehicle-Focused Studies and Systems
4.1. Definition of the Objective
4.2. Classification Levels
- Discrete Classes: Driving styles are often categorized into discrete classes on the basis of selected driving parameters and extracted features as shown in the initial rows of Table 2. These classes are defined at the design stage of the classification algorithm and encompass all values of input parameters to produce a multifactor classification. Titles or labels of the classes are based on the classification objective, such as safety or fuel economy. Applications related to safety define classes and assume title based on aggressive or gentle behavior of the driver, while fuel-related classification generally uses terminology such as efficient or economical. With the increased research in this field, it is expected that further classification criteria and labeling titles will increase.
- Continuous Scale: Instead of discrete classes, this classification style takes into account a higher number of clusters through continuous indexing. To produce the output, it is possible to use a threshold-based algorithm that converts the continuous values into finite classes [136,144]. The classification approach of continuous indexing has been adopted in recognition of driving styles related to safety, behavioral analysis, and fuel economy as shown in Table 2. The work in [144] classifies driving style in a range of (−1, 1) whereas 0 represents a neutral driving style with gentle and aggressive styles at the corners. An aggressive driver tends to drive the vehicle in a risky manner, ignoring speed limits, improper car-following, changing lanes erratically, and hasty turns. Similarly, a driving style classification is developed in [141,142,143,145] based on vehicle efficiency calculated through fuel consumption.
4.3. Information Collection
4.4. Selection of Input Variables
4.5. Classification Algorithm
5. Driving Environment-Focused Studies and Systems
5.1. Passive Sensors
5.2. Active Sensors
5.3. Combination or Fusion of Sensors
5.3.1. Vision and Radar
5.3.2. Vision and Lidar
5.3.3. Vision and Sound
5.3.4. Radar and Lidar
5.3.5. Other Combinations
6. DMAS in Modern Vehicles
6.1. Assistance in Situation Awareness
- Inside-vehicle screens: A typical example of such systems is the rear-view camera extensively used for parking. Other examples are infrared cameras which dynamically capture the scenes ahead of the vehicle, and relay them to the driver in an enhanced form. Display of such infrared cameras is usually located on top of the dashboard in front of the driver. The inside-vehicle screens deliver additional information to the drivers that is usually invisible, and sometimes irrelevant as well. Consequently, it increases recognition burden for the drivers. These displays always divert drivers’ attention regardless of their position in the vehicle.
- Outside-vehicle lighting arrangement: These systems dynamically tweak the intensity and range of vehicle lights to attain a continuous transition between high/low beam illuminations or differentiate possible obstructions for the drivers. Marking Light [196] from Volkswagen is an example of such systems. Comparative to inside-vehicle screens, the outside-vehicle lighting systems are considered to be more natural and easier for the drivers, but not free of intrusions [203,204].
6.2. Assistance in Decision Making
- Audio system (e.g., voice navigation and warning)
- Video or visual system (e.g., displays)
- Miscellaneous (a combination of above two, vibration, etc.)
6.3. Assistance in Action Performing
6.4. Future Trends
- Connectivity: Communication networks are becoming an integral part of both external and in-vehicle connectivity as vehicle-related digital-data grows substantially. In addition to their assistance in crucial systems such as braking systems and tire-pressure monitoring, wireless networks provide superior flexibility for regular automotive communications protocols. The development of highly integrated wireless devices offers a flexible foundation for services that keep drivers informed about vehicle status and road conditions. Moreover, new technologies like the Internet of Things can connect smart devices with vehicles’ communication system to deliver more sophisticated services.
- Sensors: DMAS necessitate a wide-ranging set of sensors for monitoring the vehicles’ surroundings and drivers’ condition. The modern trend is toward signal-chain integration and enhanced sensor fusion, which combine the output of various sensors to provide more extrapolative information. For example, by merging sensors’ data from tire-pressure sensors, anti-lock braking system, acceleration sensors, and electronic-stability control, the researchers are developing systems that can predict a loss of friction between the tire and the road.
- Embedded vision: Vision systems are critical to identify and track the possible hazards. These systems provide critical input for high-level warning functions, including unobserved vehicles or lane drift and support other services such as automatic parking and traffic sign recognition.
- Automotive systems infrastructure: The modern vehicles’ control is significantly dependent on the increased integration of smart sensors. This situation requires an improved system foundation in DMAS architectures as well as throughout the vehicle system design. With several processors scattered throughout the vehicle, the necessity for a stable design platform is evident, as indicated in ISO standards [249]. There is a growing list of real-time operating systems, middleware, and development tools designed to support the ISO 26262 international functional safety standard for road vehicles.
- Human-machine interface (HMI) design: The success of DMAS eventually lies in distraction-free interaction for the driver, though improved vision, sensors, and connectivity. For an improved driving experience itself, the most promising trend is perhaps the application of advanced HMI technologies. The touchscreen technology may assist drivers when the vehicle is parked or help passengers. Touch-free HMI systems offer the mechanisms for driver interaction without requiring hands off the steering wheel.
7. Discussion and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Study Area | Signal | Typical Range | Correlation with Fatigue | Detection Accuracy | References | Commercially Available Sensors | |
---|---|---|---|---|---|---|---|
Positive | Negative | ||||||
Fatigue detection | ECG | 50 µV–50 mV [71] 0.05 Hz–100 Hz | Heart rate | 96% (30 volunteers) | [71,72,75,101,104] | Omron, Flex Sensors, EPI mini, Alivecor System and ECG Check, Ambulatory ECG, Drypad Sensors, NeuroSky’s Dry Sensor, Quasar sensors | |
HRV | |||||||
HF | VLF, LF, LF/HF | ||||||
RR | |||||||
Fatigue and distraction detection | EEG | 2 µV–10 µV [71] 10 Hz–2 kHz | α, θ Bands Powers | β Band Power | 96.7% [105] (6 volunteers) | [106,107,108,109,110] | Drypad Sensors, Imotive Headset, MindWave Headsets, NeuroSky’s Dry Sensor, Quasar Sensors, Flex Sensors |
P300 Latency | P300 Amplitude | ||||||
Entropy | |||||||
Detection of alertness | EOG | 0.05 mV–3.5 mV [61] 0.1 Hz–100 Hz [71] | Blink Duration | 81.7% (20 volunteers) | [89,111,112,113,114,115] | SMI Eye Tracking Glasses, NeuroSky’s Dry Sensor, Google glass, Comnoscreen, ASL Eye Tracking Glasses | |
Blink Frequency Time | |||||||
Lid Reopening | |||||||
Blink Amplitude | |||||||
PERCLOS | |||||||
Eye Movements | |||||||
Fatigue detection | EMG | 20 µV–10 mV [71] 10 Hz–10 kHz | EMG Amplitude | 94% [67] (4 volunteers) | [67,91,96,97,98,115,116] | SX230, Neuronode, NeuroSky’s Dry Sensor, Trigno Mini Sensor, Quasar Sensors | |
Centre frequency shift towards lower frequency region | |||||||
Fatigue detection | EDA | 10 kΩ–10 MΩ 1.76 V–0.14 V | Skin Resistance | EDA | 80% [101] (13 volunteers) | [117] | Shimmer 3, Empatica wristband, Grove — GSR |
Fatigue detection | ST | 89.6°F–95°F [118] | ST | [118] | YSI 400 Series Temperature Probe, MAXIM30205 |
Levels | Description of Levels | Objective | Inputs | Reference |
---|---|---|---|---|
2 | Safety | Speed, fuel consumption, accelerometer, throttle | [123,126,127,128,129,130,131,132] | |
3 | Safety | Brake, throttle, car following | [129,133,134,135] | |
4 | Safety | Jerk | [136] | |
4 | Behavioral analysis | Sharp turn, acceleration, deceleration | [137,138] | |
5–7 | Behavioral analysis | Acceleration, speed | [139] | |
4 | Behavioral analysis | Personality features | [140] | |
(−1,1) | Fuel economy | Kinetic energy, accelartion, speed | [141,142,143] | |
(−1,1) | Behavioral analysis, safety | Brake, speed, turn | [144] |
Type | Typical Range | Description | References | Specific Sensor | |
---|---|---|---|---|---|
Advantages | Disadvantages | ||||
Acoustic | Variable | An economical solution, Real time Omni—directional microphone, | Noise sensitive, Short range, Interference problem | [153,168] | SONY ECM-77B |
Radar | 175 m | Robust in foggy or rainy day, and during night time, Measure distance directly with less computing resources, Longer detection range than acoustic, and optical sensor | Classification issue, More Power consumption than acoustic and optical sensor, Interference problem, Higher cost than Acoustic sensors | [163,165,166] | Delphi Adaptive Cruise Control |
Laser/Lidar | 120 m | Independent of weather conditions, Longer detection range than acoustic and optical sensor, Modern lidar/laser scanners acquire high resolution and 3D information | More Power consumption than other sensors, High speed 3D scanners are expensive Road infrastructure dependency | [164,169,170] | Velodyne HDL-64E Laser Rangefinder (31D LIDAR) |
80 m | SICK LMS5l-l0l00 (2D) | ||||
Optical (camera) | 100 m (day) l2 m (night) | Accumulate data in nonintrusive way, Higher resolution and wider view angle, Low cost, easier to install and maintain, Extensive information in images, Independent of any modifications to the road infrastructure | Requires more computing resources to process the images, Image quality depends on lighting and weather conditions | [154,155,157,158,171,172] | SV-625B |
Fusion | Variable | Maximum information of surroundings, Increased system robustness and reliability, Broadens the sensing capabilities, | Expensive, Separate algorithms for each Sensor | [153,169,171,173,174,175,176,177,178,179,180,181,182,183,184,185] | Not Applicable |
Company | Technology | Category | Monitoring System/Detection Parameters/Warning System | Important Features | Reference |
---|---|---|---|---|---|
Audi | Audi pre sense (driver assistance system) | Car-based | Far infrared system, Camera, Radar, Thermal camera/Lane position, Proximity detection/Audio, display, vibration |
| [188] |
BMW | BMW Drive Assist (driver assistance system) | Car-based | Radar, Camera, Thermal camera/Lane position, Proximity detection/Audio, display, vibration |
| [189] |
Toyota | Toyota Safety Sense (Driver moniting system) | Driver-based | Radar, Charge-coupled camera/Eye tracking and head motion/Audio, display |
| [190] |
Mercedez-Benz | Mercedez-Benz Pre-safe Technology (Attention assist) | Car-based | Radar, Camera, Sensors on the steering column/Steering wheel movement and speed/Audio, display |
| [191] |
Ford | Ford Safe and Smart (Driver alert control) | Car based | Radar, Camera, Steering sensors/Lane position, Proximity detection/Audio, display, vibration |
| [192] |
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Khan, M.Q.; Lee, S. A Comprehensive Survey of Driving Monitoring and Assistance Systems. Sensors 2019, 19, 2574. https://doi.org/10.3390/s19112574
Khan MQ, Lee S. A Comprehensive Survey of Driving Monitoring and Assistance Systems. Sensors. 2019; 19(11):2574. https://doi.org/10.3390/s19112574
Chicago/Turabian StyleKhan, Muhammad Qasim, and Sukhan Lee. 2019. "A Comprehensive Survey of Driving Monitoring and Assistance Systems" Sensors 19, no. 11: 2574. https://doi.org/10.3390/s19112574
APA StyleKhan, M. Q., & Lee, S. (2019). A Comprehensive Survey of Driving Monitoring and Assistance Systems. Sensors, 19(11), 2574. https://doi.org/10.3390/s19112574