Connect with us
MARE BALTICUM Gaming & TECH Summit 2024

Uncategorized

IDTechEx Summarizes DMS+OMS Integrated Technology and the Driver Behind a US$17 Million Deal

Published

on

idtechex-summarizes-dms+oms-integrated-technology-and-the-driver-behind-a-us$17-million-deal

In-cabin monitoring, comprising both Driver Monitoring System (DMS) and Occupancy Monitoring System (OMS), has experienced significant growth since the start of 2024. Traditionally, DMS relies on 2D infrared cameras, while OMS utilizes 3D sensing modules like 3D time-of-flight (ToF) cameras or radar modules. At CES 2024, Melexis and emotional3D unveiled a 3D ToF-based solution that integrates both DMS and OMS into a single camera. This solution employs Melexis’ automotive-qualified MLX75027, a true VGA ToF imager, along with emotion3D’s CABIN EYE software to simultaneously generate IR and distance images. The MLX75027 imager boasts a maximum FPS (frames per second) of 120 and a 110° field of view, simplifying the traditional setup requiring two cameras. However, IDTechEx observed that it offers lower resolution compared to traditional 2D IR cameras.
IDTechEx summarizes the resolutions of different ToF sensors for in-cabin sensing. Melexis MLX75027 stands out with slightly higher resolution, making it suitable for both DMS and OMS. The cost per ToF sensor varies significantly based on factors such as resolution, order volume, and others. For large-volume orders (1000 units), the cost per ToF sensor typically ranges between US$20 and US$40, with the potential for even lower costs at higher volumes. Cost remains a key consideration for the automotive industry, and IDTechEx’s market report on the topic, “In-Cabin Sensing 2024-2034: Technologies, Opportunities and Markets”, provides insights into the cost per unit of ToF imagers, ToF camera units, and other commonly used DMS/OMS sensors.
Another recent development accelerating the adoption of combined Driver Monitoring System (DMS) and Occupancy Monitoring System (OMS) for the in-cabin sensing market is the projected US$17 million revenue agreement between Smart Eye, a prominent software player in the cabin-sensing sector, and a leading Korean vehicle manufacturer. While the Korean OEM has previously tested Smart Eye’s software on various car models, this deal marks the first instance of Smart Eye delivering its combined DMS and cabin monitoring system (CMS) technology to four new car modules, slated for production between late 2025 and the first half of 2026. IDTechEx suggests that this reinforces the trend of integrating DMS and OMS solutions, particularly at the software level, presenting significant opportunities for hardware manufacturers like image sensor suppliers and camera suppliers. IDTechEx’s research, “In-Cabin Sensing 2024-2034: Technologies, Opportunities and Markets”, analyzes numerous leading hardware and software players, offering insights into their technologies and recent market developments.
The year 2024 emerges as pivotal for the commercial adoption of DMS, as the European Commission mandates specifications for driver and vehicle monitoring in the type approval requirements of General Safety Regulation (GSR) systems for new vehicle registrations. These specifications include the ability to detect driver fatigue or inattention. Traditionally, this is achieved through high-resolution infrared (IR) cameras using wavelengths of 940nm or 850nm to minimize emitted light distraction. While effective in features such as gaze tracking, eyelid closure, and head motion, this technology lacks 3D depth information. With the shift towards electric vehicles, interior features become a distinguishing factor, compelling automotive OEMs, especially mid- to high-end OEMs, to integrate both DMS and OMS technologies into their vehicles. However, employing separate IR cameras and 3D sensors (e.g., radar modules and 3D ToF cameras) can incur high costs and complicate design. Therefore, combining 3D ToF cameras with 2D IR cameras to achieve both DMS and OMS represents a cost-effective solution for vehicle manufacturers, striking a balance between the capabilities of 2D IR cameras and 3D ToF cameras.
IDTechEx also compares the benefits and drawbacks of 2D IR cameras, 3D ToF cameras and their combined solution. More in-depth analysis of the pros and cons of more sensors is included in the “In-Cabin Sensing 2024-2034: Technologies, Opportunities and Markets” report.
In-Cabin Sensing 2024-2034: Technologies, Opportunities and Markets
The Global In-Cabin Sensing Market Will Exceed US$8.5 Billion by 2034
This IDTechEx report provides a comprehensive technical analysis of in-cabin sensors, covering NIR/IR cameras, ToF cameras, radar, capacitive steering sensors, and torque steering sensors designed for in-cabin monitoring (DMS and OMS). It includes 10-year forecasts for volume sales (in millions), revenue (in US$ millions/billions), and sensor unit prices (in US$) across various regions, including China, Europe, the USA, Japan, and the Rest of the World. The document explores recent advancements in high-performance technologies, successful commercial applications, and notable acquisitions and partnerships involving Tier One and Tier Two players. Additionally, the report outlines emerging trends in the future of in-cabin sensors.
 
The post IDTechEx Summarizes DMS+OMS Integrated Technology and the Driver Behind a US$17 Million Deal appeared first on HIPTHER Alerts.

Continue Reading

Uncategorized

Sainsbury’s aims to be an ‘AI-enabled grocer’ with Microsoft AI technology

Published

on

sainsbury’s-aims-to-be-an-‘ai-enabled-grocer’-with-microsoft-ai-technology

 
Sainsbury’s, a prominent UK supermarket chain, is set to leverage Microsoft’s artificial intelligence and machine learning tools to elevate its store operations and provide customers with a more engaging and convenient shopping experience.
As part of its strategic initiative, the ‘Next Level Sainsbury’s strategy’, the supermarket will integrate generative AI, powered by Microsoft Azure, to enhance its online shopping platform and optimize customers’ search experience. By harnessing AI capabilities, Sainsbury’s aims to offer a more interactive and personalized online shopping journey for its millions of customers across the UK.
In addition to enhancing the online shopping experience, Sainsbury’s plans to equip its store colleagues with real-time data and insights to streamline in-store processes such as shelf replenishment. Leveraging multiple data inputs, including shelf-edge cameras, AI technology will guide colleagues on prioritizing restocking activities, thereby improving efficiency and productivity.
Over the next five years, Sainsbury’s will deploy Microsoft Azure to implement these initiatives, integrating data assets with Microsoft 365 collaboration tools to drive innovation and operational excellence.
Clodagh Moriarty, Chief Retail and Technology Officer at Sainsbury’s, expressed confidence in the collaboration with Microsoft, emphasizing its role in accelerating the supermarket’s ambition to become the UK’s leading AI-enabled grocer. Moriarty highlighted the strategic investment in transformative capabilities, aimed at enhancing efficiency, productivity, and customer service while delivering value to shareholders.
Clare Barclay, CEO of Microsoft UK, commended Sainsbury’s visionary approach, noting its commitment to placing AI at the forefront of its business strategy. Barclay expressed enthusiasm for the collaboration, emphasizing its potential to revolutionize the retail experience for both customers and store colleagues.
The partnership between Sainsbury’s and Microsoft signifies a significant step towards ushering in the next generation of retail, powered by innovative AI-driven solutions.
Source: technologyrecord.com
The post Sainsbury’s aims to be an ‘AI-enabled grocer’ with Microsoft AI technology appeared first on HIPTHER Alerts.

Continue Reading

Uncategorized

Researchers build AI-driven sarcasm detector

Published

on

researchers-build-ai-driven-sarcasm-detector

 

Artificial intelligence has made remarkable strides, from passing bar exams to reading bedtime stories with emotion. Yet, despite these feats, it still falls short of matching the intricate nuances of human communication—particularly, the art of sarcasm.
However, researchers in the Netherlands are determined to change that narrative. They have developed an AI-driven sarcasm detector that can discern when sarcasm is being used, a feat previously thought to be exclusive to human cognition.
Matt Coler, from the University of Groningen’s speech technology lab, expresses excitement about the project’s progress. He emphasizes the importance of understanding sarcasm, a pervasive aspect of human discourse, to facilitate seamless communication between humans and machines.
Recognizing sarcasm poses challenges due to its subtlety, especially in text-based interactions where cues like tone and facial expressions are absent. To overcome this, researchers trained their AI using a combination of text, audio, and emotional content from popular sitcoms like Friends and The Big Bang Theory.
The AI, trained on annotated data from these shows, demonstrated an impressive ability to detect sarcasm in unlabelled exchanges from the sitcoms, achieving an accuracy rate of nearly 75%. Further enhancements are underway, including incorporating visual cues like eyebrow movements and smirks, to improve accuracy even more.
Beyond enhancing interactions with AI assistants, this technology holds potential for detecting negative language and identifying instances of abuse or hate speech. However, as AI becomes more adept at understanding sarcasm, questions arise about its potential to wield sarcasm itself.
Coler muses about the implications of machines responding with sarcasm, raising concerns about clarity in communication. Nonetheless, advancements in AI-driven sarcasm detection offer promising prospects for improving human-machine interactions and bridging the gap between artificial and human intelligence.
Source: theguardian.com

The post Researchers build AI-driven sarcasm detector appeared first on HIPTHER Alerts.

Continue Reading

Uncategorized

AI, bias and experiments: how Women in News is tackling tech’s inbuilt stereotypes

Published

on

ai,-bias-and-experiments:-how-women-in-news-is-tackling-tech’s-inbuilt-stereotypes

 

Issues surrounding bias in AI are deeply rooted in the accuracy, trustworthiness, and quality of data, which, if overlooked, can significantly skew outcomes. Lyndsey Jones, an AI author and transformation coach, delves into these concerns, offering valuable insights for newsrooms on monitoring and reviewing data.
Madhumita Murgia, an AI journalist and the first artificial intelligence editor of the Financial Times, sheds light on how women, migrants, precarious workers, and minority groups are disproportionately affected by the technical limitations of Generative AI. Murgia emphasizes the lack of representation of these groups in the development process of AI technologies, highlighting the need for inclusive participation.
WAN-IFRA Women In News workshops on the Age of AI in the newsroom have brought bias effects to the forefront. Through the Digital ABCs training program, media professionals are equipped with skills to navigate the digital landscape and drive organizational change.
A newly launched module focuses on AI, with over 100 participants in eastern Europe taking part, now extended to journalists in parts of Africa, the Middle East, and Southeast Asia. Instances of bias surfaced during the training, such as generating offensive avatars and misinterpretation of accents in AI tools.
Google CEO Sundar Pichai’s acknowledgment of biased AI tools reflects ongoing concerns in the industry. Timnet Gebru’s dismissal from Google for highlighting biases further underscores the need for vigilance in addressing these issues.
Diverse teams in WIN’s Age of AI program are experimenting with various tools like fact-checking and enhancing staff skill sets in AI usage. Projects under consideration for further EU funding include a video lab for content amplification and an AI avatar for journalist safety.
Media companies must ensure diverse staff collaboration when testing AI tools. Quotas for women in AI research and cross-border partnerships may be necessary for smaller media groups to compete effectively.
Journalists can take steps to improve content quality by examining storytelling practices and ensuring diversity in sources and representation. Consistency of data collection across departments and assessing biases in data sets are crucial for ethical AI usage in journalism. Ultimately, AI tools should be used to enhance journalism’s quality and integrity, rather than generating clickbait or misinformation.
Source: wan-ifra.org

The post AI, bias and experiments: how Women in News is tackling tech’s inbuilt stereotypes appeared first on HIPTHER Alerts.

Continue Reading

Trending