User Preferences in the Design of Advanced Driver Assistance Systems
Abstract
:1. Introduction
2. Literature Review
2.1. Review of ADAS
2.2. Review of Survey Designs
- Socio-demographic data: crucial to contrast the social features of drivers on which to apply our assistance analysis to the driver.
- Assessment of the use of the car in the previous year (measured in km/year).
- Frequency of use of protection devices (belt and helmet) in the previous six months. This information is not useful for our purposes.
- Involvement in traffic accidents during the previous year (indicating the number and characteristics of the last traffic accident suffered).
- Age of obtaining driving license (car or motorcycle), two questions about their quality as a driver and their perceived driving speed and a set of 28 dichotomous response questions, presented in the form of a matrix, which is related to driving circumstances potentially associated with accidents.
2.3. Review of Interfaces and Usability
3. Survey Design, Analysis and Results
3.1. Analysis Methodology
3.2. General Characteristics of the Participants
3.3. Usefulness of an ADAS
3.3.1. Drivers without an ADAS
3.3.2. Drivers with an ADAS
Usefulness of the ADAS
When It Is Useful to Have an Assistant
Aspects of Improvement of the Assistant
3.4. Assistant Design Preferences
3.4.1. Frequency of Warnings or Recommendations
3.4.2. Information on Traffic
3.4.3. Information on Driving
3.4.4. Information about the Weather
3.4.5. Relaxation Method with Stress
3.4.6. Method to Avoid Distractions
3.4.7. Drowsiness Aid Method
3.5. Method of Receiving Information
3.5.1. Use of Avatar
3.5.2. Type of Avatar
3.5.3. Gender of the Avatar Character
3.6. Analysis of Driver Behavior and Driver Preferences for the Assistant
3.6.1. Relationship between Being Distracted Frequently When Driving and What Helps You Avoid Distractions
3.6.2. Relationship between Circumstances on Long Journeys and Situations That Can Represent Some Danger on the Road
3.7. Discussion
4. Prototype
4.1. Overview
4.2. Architecture
4.3. Technologies
4.4. Test Scenarios
5. Discussions and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Goals | Studies |
---|---|
Save fuel costs/energy | [1,5,6,18] |
Collision/Accident risk detection | [3,9,10,11,12,16] |
Fatigue/drowsiness detection | [7,8] |
Study driving patterns | [1,2,13,14,15,16,17,18,19,20,21] |
Commercial solutions | [22,23,24,25] |
Questions | Frequency | % |
---|---|---|
I know what it is, but it does not seem useful | 46 | 7.8 |
I do not know what it is | 12 | 2.0 |
Yes, under any circumstance | 131 | 22.2 |
Yes, when driving in the city | 23 | 3.9 |
Yes, when driving in unknown zones | 378 | 64.1 |
Total | 590 | 100.0 |
Questions | Age under 40 | Age 41–60 | Age over 60 | |||
---|---|---|---|---|---|---|
n | % | n | % | n | % | |
I know what it is, but it does not seem useful | 24 | 9.41 | 20 | 6.62 | 2 | 6.06 |
I do not know what it is | 3 | 1.18 | 5 | 1.66 | 4 | 12.12 |
Yes, under any circumstance | 56 | 21.96 | 67 | 22.19 | 8 | 24.24 |
Yes, when driving in the city | 6 | 2.35 | 16 | 5.30 | 1 | 3.03 |
Yes, when driving in unknown zones | 166 | 65.10 | 194 | 64.24 | 18 | 54.55 |
Area for Improvement of ADAS | General Scores | Pearson Test (p-Value) | |||
---|---|---|---|---|---|
Frequency | % | Country | Gender | Age | |
Notifications | 150 | 50.3 | 0.197 | 0.550 | 0.884 |
Interaction | 149 | 50.0 | 0.881 | 0.265 | 0.007 |
Information | 84 | 28.2 | 0.619 | 0.287 | 0.072 |
Interface | 71 | 23.8 | 0.506 | 0.003 | 0.345 |
Notification Frequency | Respondents without ADAS (N = 590) | Respondents with ADAS (N = 298) | ||
---|---|---|---|---|
n | % | n | % | |
When there is relevant information | 461 | 78.10 | 233 | 78.20 |
When driving tired | 99 | 16.80 | 49 | 16.40 |
When there are traffic accidents | 95 | 16.10 | 51 | 17.10 |
When there are adverse weather conditions | 83 | 14.10 | 43 | 14.40 |
When approaching a dangerous zone | 76 | 12.90 | 33 | 11.10 |
When approaching heavy traffic | 63 | 10.70 | 32 | 10.7 |
When speed limits are exceeded | 62 | 10.50 | 33 | 11.10 |
Continuously | 43 | 7.30 | 31 | 10.4 |
When approaching roadworks | 40 | 6.80 | 18 | 6 |
When approaching pedestrian zones | 29 | 4.90 | 25 | 8.4 |
Minutes | 29 | 4.9 | 22 | 7.4 |
Fixed periods | 29 | 4.9 | 22 | 7.4 |
Per itinerary | 25 | 4.2 | 10 | 3.4 |
When approaching schools | 25 | 4.20 | 16 | 5.4 |
Information Provided by ADAS | Respondents without ADAS (N = 590) | Respondents with ADAS (N = 298) | ||
---|---|---|---|---|
n | % | n | % | |
Approaching an accident | 400 | 67.80 | 214 | 71.80 |
Approaching a traffic jam | 387 | 65.60 | 193 | 64.80 |
Driving in a forbidden direction | 368 | 62.40 | 192 | 64.40 |
Approaching a dangerous section of road | 320 | 54.20 | 172 | 57.70 |
Approaching roadworks | 271 | 45.90 | 138 | 46.30 |
Approaching out of order traffic lights | 267 | 45.30 | 118 | 39.60 |
Approaching a heavy traffic zone | 254 | 43.10 | 152 | 51.00 |
Approaching dangerous curves | 241 | 40.80 | 122 | 40.90 |
Approaching a wild animal zone | 210 | 35.60 | 98 | 32.90 |
Approaching an area with a high density of pedestrians | 206 | 34.90 | 109 | 36.60 |
Approaching a school zone | 188 | 31.90 | 106 | 35.60 |
Information Provided by ADAS | Respondents without ADAS (N = 590) | Respondents with ADAS (N = 298) | ||
---|---|---|---|---|
n | % | n | % | |
Starting to suffer from fatigue/tiredness | 356 | 60.30 | 199 | 66.80 |
Exceeding the maximum speed limit of the road | 296 | 50.20 | 153 | 51.30 |
Not keeping the safety distance | 215 | 36.40 | 117 | 39.30 |
Driving erratically | 220 | 37.30 | 132 | 44.30 |
The air quality is not appropriate | 200 | 33.90 | 112 | 37.60 |
Driving too aggressively | 189 | 32.00 | 98 | 32.90 |
Managing other devices while driving | 134 | 22.70 | 69 | 23.20 |
Temperature is too high inside the car | 99 | 16.80 | 58 | 19.50 |
Smoking while driving | 28 | 4.70 | 18 | 6.00 |
Information Provided by ADAS | Respondents without ADAS (N = 590) | Respondents with ADAS (N = 298) | ||
---|---|---|---|---|
n | % | n | % | |
Listen to music | 217 | 36.8 | 104 | 34.90 |
Do not listen to anything | 177 | 30.0 | 64 | 21.50 |
To be reminded how important it is to stay alert | 99 | 16.8 | 38 | 12.80 |
Listen to radio programs | 97 | 16.4 | 92 | 30.90 |
Information Provided by ADAS | Respondents without ADAS (N = 590) | Respondents with ADAS (N = 298) | ||
---|---|---|---|---|
n | % | n | % | |
Audio notification | 522 | 88.5 | 267 | 89.60 |
Through vibrations in the safety belt | 80 | 13.6 | 46 | 15.40 |
Visual notification | 19 | 20.2 | 89 | 29.90 |
Listen to Music | Listen to Radio Programs | Do Not Listen to Anything | Be Reminded of How Important It Is to Be Alert | |
---|---|---|---|---|
Very frequent | 33.33% | 33.33% | 33.33% | 0 |
Quite frequent | 25.93% | 19.75% | 20.99% | 33.33% |
Infrequent | 36.38% | 21.54% | 27.37% | 14.70% |
Rare | 41.88% | 20.51% | 29.91% | 7.69% |
Criteria | Main Option | Differentiation |
---|---|---|
General usefulness of an assistant | Very useful, in more than 90% of cases, in drivers with and without ADAS | By age: for drivers without an assistant, there is less awareness of usefulness for those over the age of 60. By gender: women surveyed that use assistants give them more importance than men when driving through unfamiliar areas. |
What can be improved on an ADAS? | System interaction and notifications | Interaction with the system: By age: the younger group is critical compared to the other age groups, regarding the graphics and the interaction component with the system. By gender: men give more value to the graphic part than women. |
Criteria | Main Option | Differentiation |
---|---|---|
When do drivers want to receive notifications? | Only when there is something relevant to report. They do not want periodic or programmable notifications. | |
How do drivers want to receive notifications? | With an audio notification | |
What do they want to know about? | Approaching an accident; Approaching a traffic jam; Driving in the wrong direction; General weather conditions especially ice; When they start to get tired, when they exceed the maximum speed | In Portugal there is more interest in knowing when driving aggressively, compared to Spanish drivers (51% versus 29%). Additionally, in terms of information on air quality, the Portuguese are more interested in this information (60% against 33%). Information on tiredness is more important for people over 40 (70%) than below this age (57%). Regarding fatigue, women give it less importance (56%) than men (67%). As regards ice on the road, Spanish drivers give more importance to this information (89%) compared to the Portuguese (69%). |
What they do not want to be informed about | When they are smoking. | |
Preferential form of relaxation | Listen to music | In Portugal this preference is more pronounced (84%) than in Spain (70%). In drivers without assistants, the % of music choice is higher for women (41%) than men (32%). Those under 40 prefer to listen to music (43%) and only 10% radio. In Portugal, the option “listen to music” is more relevant (49%) than in Spain (31%), where the most relevant is radio (34%). Users of ADAS under 40 prefer to listen to music (45%) rather than radio whilst with users over the age of 60 it is just the opposite. |
Preferential form of notification in case of distraction | Audio notifications | For the audio notifications there is no differentiation. There is an association by country and by gender for visual notifications, being higher in Portugal than in Spain and in men (37.4%) than in women (19.0%). |
Preferred way to avoid drowsiness | Drink caffeinated beverages | |
Use of avatar | Overall, there is no preference for a more user-friendly avatar in relation to a message, either in relation to the avatar image or its gender | In drivers with assistants, in Portugal they prefer a cartoon (41%) while in Spain they have no preference (61%). Regarding gender, there is a strong preference for a female avatar, more chosen by men than women, regardless of being or not users of ADAS. In users of ADAS, there is a greater preference for a female avatar in Portugal (40%) than in Spain (18%). |
Event | Rule | Recommendation |
---|---|---|
Tiredness detected | -Driver model: frequent drowsiness, enjoys driving -Driving status: daytime, 2 h travelled | “It has already been 2 h. Why don’t you take a break?” |
-Driver model: frequent drowsiness -Driving status: night-time, 1 h travelled | “It is night-time, you tend to suffer from drowsiness, and it has been 1 h. Why don’t you take a break?” (Figure 5a) | |
-Driver model: infrequent drowsiness, enjoys driving -Driving status: daytime, 3 h travelled | “You should take a break even if you don’t feel tired. It has been 3 h.” | |
High noise detected | -Driver model: does not enjoy loud music, tends to suffer stress -Driving status: high noise | “Could you turn the music down? It is too loud” (Figure 5b) |
First trip of the day | -Driver model: gets distracted easily, does not enjoy driving -Driving status: early in the morning, more than 8 h since last trip, bad weather | “Welcome. We have many hours ahead of us and the weather seems to be bad. Today we need to focus.” |
-Driver model: enjoys driving -Driving status: early in the morning, more than 8 h since last trip, good weather | “Welcome. It is a nice day to be driving, don’t you think? Let’s go!” | |
High stress detected | -Driver model: tends to suffer stress and does not enjoy driving -Driving status: night-time, high heart rate, driving on a motorway, frequent accelerations and braking | “Is everything ok? I’m detecting stress, it is night-time and your behavior is erratic. Shall we take a break?” |
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Paiva, S.; Pañeda, X.G.; Corcoba, V.; García, R.; Morán, P.; Pozueco, L.; Valdés, M.; del Camino, C. User Preferences in the Design of Advanced Driver Assistance Systems. Sustainability 2021, 13, 3932. https://doi.org/10.3390/su13073932
Paiva S, Pañeda XG, Corcoba V, García R, Morán P, Pozueco L, Valdés M, del Camino C. User Preferences in the Design of Advanced Driver Assistance Systems. Sustainability. 2021; 13(7):3932. https://doi.org/10.3390/su13073932
Chicago/Turabian StylePaiva, Sara, Xabiel García Pañeda, Victor Corcoba, Roberto García, Próspero Morán, Laura Pozueco, Marina Valdés, and Covadonga del Camino. 2021. "User Preferences in the Design of Advanced Driver Assistance Systems" Sustainability 13, no. 7: 3932. https://doi.org/10.3390/su13073932
APA StylePaiva, S., Pañeda, X. G., Corcoba, V., García, R., Morán, P., Pozueco, L., Valdés, M., & del Camino, C. (2021). User Preferences in the Design of Advanced Driver Assistance Systems. Sustainability, 13(7), 3932. https://doi.org/10.3390/su13073932