Semi-Autonomous Vehicles as a Cognitive Assistive Device for Older Adults
Abstract
:1. Impact of Aging on Driving
2. Vehicle Autonomy
2.1. Current Semi-Autonomous Vehivle (SAV) Features
2.2. Technology Benefits
3. Proposed Model of How to Connect Needs of OA to SAV
4. Human Computer Interaction
5. Challenges
5.1. Technology
5.1.1. Vehicle Costs
5.1.2. Safety
5.1.3. Litigation, Liability, and Ethics
5.1.4. Privacy
5.2. Older Drivers Adapting to SAV
5.3. Adapting SAV to Older Drivers
6. Discussion
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Level of Automation | Autonomous Features |
---|---|
Level 0: No automation |
|
Level 1: Driver assistance |
|
Level 2: Partial automation |
|
Level 3: conditional automation |
|
Level 4: High automation |
|
Level 5: Full automation |
|
Sensing Category | Description |
---|---|
Self-sensing | Vehicle uses proprioceptive sensors such as pre-installed measurement units (e.g., odometers, inertial measurement units (IMUs), gyroscopes, and controller area network (CAN) bus) to measure the current state of the ego-vehicle, including the vehicle’s wheel velocity, acceleration, rotational velocity, yaw, and steering angle. |
Localization | Vehicle uses external sensors such as GPS or dead reckoning by IMU readings to determine the vehicle’s global and local position. |
Surroundingsensing | Vehicle uses exteroceptive sensors to detect road markings, road slope, traffic signs, weather conditions, the state (position, velocity, acceleration, etc.) of obstacles including other vehicles, and even the state of the driver (vigilance, drowsiness, fatigue, boredom due to monotony, etc.). |
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Knoefel, F.; Wallace, B.; Goubran, R.; Sabra, I.; Marshall, S. Semi-Autonomous Vehicles as a Cognitive Assistive Device for Older Adults. Geriatrics 2019, 4, 63. https://doi.org/10.3390/geriatrics4040063
Knoefel F, Wallace B, Goubran R, Sabra I, Marshall S. Semi-Autonomous Vehicles as a Cognitive Assistive Device for Older Adults. Geriatrics. 2019; 4(4):63. https://doi.org/10.3390/geriatrics4040063
Chicago/Turabian StyleKnoefel, Frank, Bruce Wallace, Rafik Goubran, Iman Sabra, and Shawn Marshall. 2019. "Semi-Autonomous Vehicles as a Cognitive Assistive Device for Older Adults" Geriatrics 4, no. 4: 63. https://doi.org/10.3390/geriatrics4040063
APA StyleKnoefel, F., Wallace, B., Goubran, R., Sabra, I., & Marshall, S. (2019). Semi-Autonomous Vehicles as a Cognitive Assistive Device for Older Adults. Geriatrics, 4(4), 63. https://doi.org/10.3390/geriatrics4040063