by

Autonomous cars have been recently hitting the headlines and dominating tech-talks. It’s seen as a post-Uber disruption to public commuting and transportation of goods. It is surely not a figment of imagination in the age of artificial intelligence (AI) which is being used to complement driverless cars. The combined might of AI and driverless technologies is a formidable force.

The likes of Waymo, Tesla, etc. are heavily invested in driverless cars. In fact, Waymo has been testing the driverless car in Phoenix. Tesla has already implemented a couple of “autopiloting” features in its cars.

But before we get into further details, let us discuss what autonomous means. There are various levels of vehicle automation:

Automation for driver assistance - It is a preliminary level or starting point of car automation where the system assists the driver but does not take control of the car. E.g. parking sensors.

Partially automated driving – the system takes partial control, but the driver is primarily responsible for the operation of the vehicle.

Highly automated driving – allows users to let the system take control of the vehicle for a longer duration of time. E.g. on the highway.

Fully automated driving – The system is responsible for driving the vehicle without interference from any human. However, the human presence is still needed.

Completely automated car – the vehicle can completely navigate its way through from a point to another without any assistance from a driver.

Depending on the level of automation, the definition of autonomous varies. While automation for driver assistance and partially automated cars are in commercial use, the remaining stages are still under test conditions.

For us to achieve the remaining stages of automation or even come close, AI is the stimulus that is being used. For the purpose of this article, let us discuss the impact of AI in highly automated driving and completely or fully automated vehicles, and how the power of AI is being harnessed to bring it to reality.

The role of artificial Intelligence in complementing the use of autonomous cars

Subject to regulatory and social acceptance, the impact of completely autonomous cars is not limited to the disruption of the public transport system. From a macro level, it impacts urbanization, township planning, food delivery, and possibly shake the ever-increasing real-estate market.

For AI to work, it needs IoT devices (such as radars, ultrasound, radar, cameras, LiDAR, accelerometers, and gyroscopes) that augment real-time operating environment and positioning of the vehicle.

Having discussed the potential of AI, let’s talk about the top four areas where AI is seen as a gamechanger towards the success of autonomous vehicles.

1. AI for self-driving car safety

Before AI completely takes over the driver’s seat, it is being used as a co-pilot to gain the confidence of the users, regulators, manufacturers. By analyzing data feeds across its sensors, AI can be handy in situations where flesh and blood drivers are prone to making human errors.

AI can score very high in areas such as:

Emergency control of the vehicle

• Cross-traffic detection

• Syncing with traffic signals

• Breaking in cases of emergencies

• Active monitoring of blind spots

• Altering the driver in case he or she is distracted

The quantum of processing power needed to drive a vehicle is enormous as you do not have control of your external environment which has countless variables – it needs a lot of learning. There are numerous companies testing AI’s applicability in driving, but the most noteworthy achievements have been made by Waymo and Tesla.

Waymo’s AI algorithms are fed with real-time data from sensors, GPS, radar, lidar, cameras, and cloud services. These data are processed to produce control signals that are used to operate the car.

Curated cloud services targeted for individuals

AI can be used to accurately gauge the physical condition of the vehicle. Data gathered from the usage can be processed for both:

Predictive maintenance

Prescriptive maintenance

This way, drivers will have an easier time finding a car warranty plan that is cost-effective and meets their particular needs, and that also reflects the car’s current condition.

Accurate feed for regulators and insurance companies

Data from automated cars can be used to determine traffic violations and claims. From an insurance perspective, AI can be of help to determine the:

Driver risk assessment – using AI, a driver’s behavior can be accurately gauged and based on the risk profile the premium can be charged

Ease of claim – data from the vehicle and can be used for faster processing of claims in case of accidents. Art Financial’s AI-based video app Dingsunbao 2.0 allows users to access their auto damage.

Monitoring the driver and user behavior

The applicability of AI in autonomous cars is not limited to stricter requirements such as safety but also fills the fun quotient. AI can be used for a host of infotainment features in the car.

AI is helpful to provide customized infotainment during the travel. Based on the data collected over time, AI can predict and prescribe preferences based on user behavior. It could include:

Seat position adjustment

Mirror adjustment

Regulating the air-conditioning

Songs to be played

AI is gaining in prominence with each passing day. Governments too have jumped into the race to woo investors to bring AI-based driverless cars for commercial use.

In August 2018, the British Government unveiled plans for an AI simulator, intended for the purpose of attracting companies as a favorable destination for testing self-driving cars. Named as OmniCAV, the simulator can recreate a virtual version of 32km of Oxfordshire roads.

The world is changing faster than imagined, and AI is getting smarter with every passing day.We are just around the corner to witness the post-Uber era so hold your breath.

About the author

Barbara Jorgensen