What Is ADAS ? All ADAS Features Explained


ADAS detects the environment around the car using sensors such as radar and cameras, and then either gives information to the driver or takes automated action based on what it observes. The word “warning” will almost always appear in the name of an ADAS function that provides information.


ADAS Vehicle
Advanced Driver Assistance Systems (ADAS) are systems that assist drivers in their daily driving tasks. Adaptive Cruise Control (ACC), Intelligent Speed Adaptation (ISA), and Collision Warning Systems are just a few examples of technological solutions (CWS). An ADAS should improve automobile safety and comfort when developed with a safe Human–Machine Interface (HMI).

Ergonomics suggest that designing a safe HMI necessitates considerable consideration. Bruyas et al. (1998), for example, presented rules for displaying information to the driver while driving. In this type of challenge, a lot of time and attention is put into deciding on an efficient and safe approach for displaying data from the vehicle’s perception system or from cooperative perception via communication devices. The driver is receiving information from the warning system in a unique way here. It is up to him to pay attention to the warning signals.

Some ADAS systems work in a completely different way, connecting directly to the vehicle’s control inputs. If the scenario is considered “extremely” risky, obstacle detection systems such as the one provided by Broggi et al. (2002) can make the choice to brake. This type of technology is commonly referred to as “active safety.” This type of ADAS is referred to as “dead driver systems” by certain ergonomists (Hoc and Debernard, 2002).

People have been focusing on systems that operate between these two extremes for some years. These methods are frequently referred to as “cognitive” (Althoff et al., 2007; Heide and Henning, 2006). The challenge here is to find a way for the driver and the machine to work together more closely. The first and most important requirement is to monitor the driver’s behaviors (Murphy-Chutorian and Trivedi, 2010), however the problem extends well beyond that. For example, a cooperation between a person and a machine may be used to change the ADAS’s parameters.

Giving the navigation system the destination address in order to compute a route is a simple example. Collaboration can even happen in the middle of the activity, while driving.


ADAS Advanced Driver Assistance Systems AI
Advanced Driver Assistance Systems (ADAS) are sophisticated systems that remain within the vehicle and provide assistance to the primary driver in a number of ways. These systems might be used to offer critical information about traffic, upcoming road closures and blockades, congestion levels, and alternative routes to avoid congestion, among other things.

These systems may also be used to detect human driver weariness and distraction and issue cautionary signals, as well as to analyze driving performance and offer recommendations. These systems can take over control from humans after identifying a danger, performing simple tasks (like as cruise control) or complex maneuvers (like overtaking and parking).

The most significant benefit of utilizing assistance systems is that they allow for communication between various cars, automotive infrastructure systems, and transportation management centers.

Driver Assistance

Because of the aim to decrease vehicle accidents and fatalities, advanced driver-assistance systems (ADAS) are one of the fastest-growing safety application fields.

Active safety systems, in addition to passive safety systems, play a significant role in decreasing traffic deaths and the financial impact of vehicle accidents. Long- and medium-range radar and vision systems are examples of ADAS systems. For external object detection and classification, developing an ADAS system need cutting-edge yet cost-effective RF technology that can be incorporated in the vehicle.

To make the system efficient, massive computing power is required, but the cost must be very cheap in order for it to be widely adopted in the marketplace.

Adaptive cruise control (ACC) and collision-warning systems with automated steering and braking intervention are examples of active safety systems. A microcontroller-controlled 77 GHz transmitter emits signals reflected from objects ahead, to the side, and behind the car, which are collected by numerous receivers integrated throughout the vehicle in a collision-warning system.

The radar system can detect and track objects in the frequency domain using a high-performance 32-bit single- or dual-core microprocessor with embedded memory and RAM, triggering a driver warning of an impending collision and starting ESC emergency intervention.

Even at night, ADAS camera systems may display what is behind or behind the car on the screen. They can also use video material to determine if automated lane-departure warning systems and high/low-beam headlight adjustment are necessary. Incoming video frames are routed through an image sensor interface to a single- or dual-core architecture with DSP extensions for picture enhancement filtering and edge or spot detection.

An suitable communication interface, an integrated DRAM interface for quick access to external memory, and embedded flash for low system cost are all additional system requirements.

Driver Behaviors

ADAS Advanced Driver Assistance Systems
Driving behavior and driver state analysis are becoming increasingly popular as the need for ADAS grows. Driver behavioral signals, like as head and eye movement, can provide an early indication of the driver’s purpose, unlike CAN bus data. 

The effect of head/eye movement on intention prediction has been studied extensively. The authors of Ref. used pupil information as cognitive cues for predicting lane change intent. In most cases, driver eye movement may be divided into two categories: intention guided and nonintention led.

Intention-guided eye movement can be caused by distractions, but intention-guided eye movement indicates the eye fixation or saccades were done on purpose. When a driver is distracted, his or her visual fixation will no longer follow his or her concentration. 

Eye movement does not represent the driver’s mental intent at this time, therefore the intention prediction result cannot be believed. Intention-oriented eye tracking may be thought of as a cognitive process of acquiring information that can reveal the driver’s mental state before the vehicle parameters.

The cognitive process of action execution includes the identification of driver behavior based on CAN bus data. Furthermore, when compared to the action execution stage, the driver’s purpose at an information-gathering step is less likely to change.

Although distraction can induce head/eye movement, the majority of the time the driver adjusts his or her attention on purpose, making eye movement a helpful signal for intention decoding and inference. Doshi and Trivedi looked at the connection between gaze pattern, traffic information, and driving intent. They presented a mechanism for recognizing intentions based on eye movement reasoning.

They combined eye gazing with a saliency map to see if an eye movement should be attributed to a specific objective or irrelevant stimuli before utilizing eye movement to infer driving intention. Many previous studies have focused on using the eye-tracking approach to estimate driver intention, and it has been proven that include eye movement data improves intention prediction accuracy and reduces false alarm rates.

Furthermore, utilizing eye movement data, a driver’s intention can usually be detected considerably earlier than using vehicle characteristics alone. Eye-tracking systems are divided into two types: invasive glass and nonintrusive camera-based systems.

Cruise Control With Adaptive Settings

What is Adas Features Explained
Adaptive cruise control (ACC) is especially useful on the highway, where it can be difficult for drivers to keep track of their speed and other vehicles for lengthy periods of time. Depending on the activities of other objects in the nearby region, advanced cruise control can automatically accelerate, slow down, and even stop the car.

Glare-Free High Beam And Pixel Light

Glare-free high beam and pixel lighting employs sensors to adapt to darkness and the vehicle’s surroundings without causing a hazard to approaching motorists. This innovative headlight application detects other cars’ lights and redirects the vehicle’s lights away from other road users to avoid them from being briefly blinded.

Adaptive Light Control

Adaptive light control adjusts the headlights of a vehicle to the lighting conditions outside. Depending on the vehicle’s surroundings and darkness, it adjusts the intensity, direction, and rotation of the headlights.

Automatic Parking

Drivers can be alerted to blind areas with automatic parking, allowing them to know when to turn the steering wheel and stop. Traditional side mirrors are inferior to vehicles equipped with rearview cameras, which provide a better picture of the surroundings. By integrating the data of various sensors, some systems may even accomplish parking without the driver’s assistance.

Autonomous Valet Parking

Autonomous valet parking is a new technology that manages autonomous automobiles in parking spaces using vehicle sensor meshing, 5G network connectivity, and cloud services. The vehicle’s sensors give information about its current location, where it needs to travel, and how to get there safely. All of this data is analyzed and used to control the vehicle’s acceleration, braking, and steering until it is securely parked.

Navigation System

On-screen directions and voice prompts are provided by car navigation systems to assist drivers in following a route while focused on the road. Some navigation systems may provide real-time traffic information and, if necessary, design a different route to avoid traffic congestion. Advanced systems may also include Heads-Up Displays (HuD) to help drivers stay focused on the road.

Navigation System

On-screen directions and voice prompts are provided by car navigation systems to assist drivers in following a route while focused on the road. Some navigation systems may provide real-time traffic information and, if necessary, design a different route to avoid traffic congestion. Advanced systems may also include Heads-Up Displays (HuD) to help drivers stay focused on the road.

Night Vision

Drivers can see objects that would otherwise be difficult or impossible to see at night thanks to night vision equipment. Implementations of night vision fall into two categories: Passive night vision systems rely on the thermal energy emitted by automobiles, animals, and other objects, whereas active night vision systems project infrared light.

Blind Spot Monitoring

Sensors are used by blind spot detection systems to supply drivers with critical information that would otherwise be difficult or impossible to obtain. When they identify an item in the driver’s blind zone, such as when the driver tries to move into an occupied lane, some systems sound an alert.

Automatic Emergency Braking

Automatic emergency braking detects if the driver is about to collide with another vehicle or other road obstacles using sensors. This program can detect adjacent vehicles and warn the driver if there is a hazard. To avoid an accident, certain emergency braking systems can perform preventative safety steps including tightening seat belts, decreasing speed, and adaptive steering.

Stabilization in Crosswinds

Adas Features Explained
This new ADAS function assists the car in dealing with severe crosswinds. This system’s sensors may detect high pressure acting on the vehicle while driving and apply brakes to the wheels impacted by crosswinds.

Driver Drowsiness Detection

Driver drowsiness detection detects tiredness or other road distractions and alerts the driver. There are numerous methods to tell if a driver’s concentration is waning. In one example, sensors can examine the driver’s head movement and pulse rate to see whether they indicate sleepiness. Other systems send out driving alerts that are comparable to the lane detecting warning signals.

Driver Monitoring System

Another approach to assess a driver’s attention is to use a driver monitoring system. The video sensors can tell if the driver’s eyes are on the road or if he or she is drifting. Noises, sensations in the steering wheel, or flashing lights can all be used to notify drivers. In certain situations, the automobile will go to the extreme of fully halting the vehicle.

V2X and 5G

This hot new 5G ADAS technology offers V2X communication between the vehicle and other cars or pedestrians, with greater dependability and decreased latency. For real-time navigation, millions of automobiles already link to cellular networks.

This program will increase situational awareness, regulate or propose speed modifications to account for traffic congestion, and refresh GPS maps with real-time updates using current techniques and the cellular network.

V2X is required to provide over-the-air (OTA) software updates for the growing number of software-driven devices in automobiles, including map updates, bug patches, security upgrades, and more.


Leave a Comment