Skip to main content

Artificial intelligence systems for autonomous driving on the rise, says IHS

According to the latest report from market research firm HIS, Automotive Electronics Roadmap Report, as the complexity and penetration of in-vehicle infotainment systems and advanced driver assistance systems (ADAS) increases, there is a growing need for hardware and software solutions that support artificial intelligence, which uses electronics and software to emulate the functions of the human brain. In fact, unit shipments of artificial intelligence (AI) systems used in infotainment and ADAS systems are
June 17, 2016 Read time: 3 mins
According to the latest report from market research firm HIS, Automotive Electronics Roadmap Report, as the complexity and penetration of in-vehicle infotainment systems and advanced driver assistance systems (ADAS) increases, there is a growing need for hardware and software solutions that support artificial intelligence, which uses electronics and software to emulate the functions of the human brain. In fact, unit shipments of artificial intelligence (AI) systems used in infotainment and ADAS systems are expected to rise from just 7 million in 2015 to 122 million by 2025, says IHS. The attach rate of AI-based systems in new vehicles was 8 percent in 2015, and the vast majority were focused on speech recognition. However, that number is forecast to rise to 109 percent in 2025, as there will be multiple AI systems of various types installed in many cars.

According to the report, AI-based systems in automotive applications are relatively rare, but they will grow to become standard in new vehicles over the next five years, especially in: Infotainment human-machine interface, including speech recognition, gesture recognition (including hand-writing recognition), eye tracking and driver monitoring, virtual assistance and natural language interfaces; ADAS and autonomous vehicles, including camera-based machine vision systems, radar-based detection units, driver condition evaluation, and sensor fusion engine control units (ECU).

Specifically in ADAS, deep learning -- which mimics human neural networks -- presents several advantages over traditional algorithms; it is also a key milestone on the road to fully autonomous vehicles. For example, deep learning allows detection and recognition of multiple objects, improves perception, reduces power consumption, supports object classification, enables recognition and prediction of actions, and will reduce development time of ADAS systems.

The hardware required to embed AI and deep learning in safety-critical and high-performance automotive applications at mass-production volume is not currently available due to the high cost and the sheer size of the computers needed to perform these advanced tasks. Even so, elements of AI are already available in vehicles today. In the infotainment human machine interfaces currently installed, most of the speech recognition technologies already rely on algorithms based on neural networks running in the cloud. The 2015 BMW 7 Series is the first car to use a hybrid approach, offering embedded hardware able to perform voice recognition in the absence of wireless connectivity. In ADAS applications, Tesla claims to implement neural network functionality, based on the MobilEye EYEQ3 processor, in its autonomous driving control unit.

Related Content

  • Video developments in automatic incident detection
    May 22, 2012
    David Crawford reviews technological progress with automatic incident detection Highway safety problems are likely to intensify given recent predictions of future traffic growth across the world. In the United States, the National Highway Traffic Safety Administration (NHTSA) reports that currently over 30,000 deaths and 1.5 million injuries occur as the result of accidents on the nation’s roads each year. These figures will increase with the number of kilometres travelled each year in the US expected to gr
  • Connected management mega-trend drives the global wireless M2M market
    August 21, 2014
    According to a new research report from the analyst firm Berg Insight, the number of global mobile network connections used for wireless machine-to-machine (M2M) communication will increase by 21 per cent in 2014 to reach 213.9 million at the year-end. East Asia, Western Europe and North America are the main regional markets, accounting for around 75 per cent of the installed base. In the next five years, the global number of wireless M2M connections is forecasted to grow at a compound annual growth rate
  • Growth of global connected car M2M connections and services market
    December 17, 2014
    The latest research by ReportsnReports.com, Global Connected Car M2M Connections and Services Market indicates that big data analytics and smart phone apps will foster the growth of the global connected car M2M connections and services market, which will see a 32 per cent CAGR for 2014-2019. According to the report, many big data analytic and automobile companies are joining forces with smart app providers to form partnerships to better understand vehicle performance and automotive businesses. Smart apps
  • Technologies to protect connected cars ‘not being utilised’
    August 10, 2016
    A three-year study by IOActive’s Cybersecurity Division has found half of vehicle vulnerabilities could allow cyber attackers to take control of a vehicle - and 71 per cent are ‘easy to exploit’. The research, detailed in a whitepaper, Commonalities in Vehicle Vulnerabilities, is based on real-world security assessments. Technologies which could be exploited include cellular radio, Bluetooth, wi-fi, companion apps, vehicle to vehicle (V2V) radio, onboard diagnostic equipment, infotainment media and Zigbe