HomeIndustryAutomotiveNavigating urban roads with safety-focused, human-like automated driving experiences

Navigating urban roads with safety-focused, human-like automated driving experiences

Courtesy: Qulacomm

What you should know:

●        Dense urban traffic and highway driving can be complex and often dangerous for road users, but crash avoidance technologies such as ADAS can reduce road incidents.

●        Traditional, rule-based planning methods for controlling ADAS functionality can’t scale to include enough potential scenarios.

●        The Snapdragon Ride platform employs an AI planner to learn and adapt in real-time as well as a traditional planner as a safety guardrail and verifier.

The dense urban traffic at crowded intersections with vehicles, two-wheelers, and pedestrians and highly congested arterial roadways, can be complex and often dangerous for road users. Approximately 1.19 million people died in traffic crashes in 2023. In the U.S., 59% of these road fatalities occurred in urban areas, and 73% were at intersections.

Crash avoidance technologies such as advanced driver assistance systems (ADAS) can reduce road incidents, helping to save lives in these complicated scenarios. For example, automatic emergency braking has been shown to reduce front-to-rear crashes by 50% and pedestrian crashes by 27%.

Achieving these results across cities, countries, and driving styles is no small task. Traditional, rule-based planning methods for controlling ADAS functionality often struggle to negotiate and adapt to real-time sensor data in dense urban driving scenarios. These human-defined, logic-based planners rely on pre-specified rules, which can’t scale to include enough potential scenarios for the planner to react appropriately in any given traffic situation.

AI planner

Introducing an AI-based planner into the system can help to handle the massive amount of input coming into a vehicle as it travels through highly variable and dynamic urban environments. Capable of running large language models while simultaneously processing input from multiple perception systems, an AI planner uses a data-driven approach to learn and adapt in real-time.

Because it is a decision-based transformer, an AI planner understands what information is contextually relevant to the scenario, so the driver assistance system can act upon it quickly and effectively. This ability to quickly and holistically process data allows the planner to solve complex urban traffic problems and achieve a more accurate and human-like driving experience.

Best of both with Snapdragon Ride

To provide a human-like experience, the Snapdragon Ride platform employs a hybrid architecture that blends both types of planning. The AI planner is a fully data-driven, transformer-based model, while the traditional planner serves as a safety guardrail and verifier. The models co-exist on the same heterogeneous system-on-a-chip (SoC), running on separate blocks, so there is no computational interference. The AI planner benefits from AI acceleration in the neural processing unit (NPU) while traditional planners run on the central processing unit (CPU).

Validated in both simulations and real-world scenarios, the AI planner has demonstrated its ability to solve complex traffic scenarios, including unprotected turns, navigating roundabouts, and handling dense traffic merges.

Incorporating both traditional and AI planning gives automakers a robust solution for tackling the challenges posed by dense urban environments, allowing them to fine-tune and customize ADAS features to meet unique market needs. The move toward AI planning will help them to create a more human-like driving experience, potentially revolutionizing urban traffic management.

ELE Times Research Desk
ELE Times Research Deskhttps://www.eletimes.ai
ELE Times provides extensive global coverage of Electronics, Technology and the Market. In addition to providing in-depth articles, ELE Times attracts the industry’s largest, qualified and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build experience, drive traffic, communicate your contributions to the right audience, generate leads and market your products favourably.

Related News

Must Read

Indian Navy awards ADITI 3.0 contract for High Power Microwave System to Tonbo Imaging

Defence technology company Tonbo Imaging receives an award and...

Keysight Partners with SRC for Advance EW Test and Simulation

The initiative that helps defense organizations to modernize EW...

STMicroelectronics Launches Next-Generation Ultralow-Power Image Sensors

STMicroelectronics, a global semiconductor leader serving customers across the...

Microchip Technology Launches Single-Pair Ethernet PHYs with Integrated Time and Security Functions

Microchip’s LAN878x and LAN888x PHY families enable secure, scalable...

Nuvoton Launches NuML Studio: Tool to Build and Deploy AI on Microcontrollers

Nuvoton Technology, a leading global semiconductor provider, has announced...

Rohde & Schwarz Presents its Advance Solutions for Power Electronics Testing at PCIM Expo 2026

Rohde & Schwarz presents its latest test and measurement solutions for...

Next-Gen Upgrade to the Halo Series, NoiseFit Halo 3 brings Presence-Led Design and AI to the Wrist

Noise, India’s leading connected lifestyle brand, announces the launch...