videantis processing platform reduces cost, increases flexibility of fail-operational systems

  • With fine-grain scalability and flexible redundancy, the videantis unified processing platform enables fail-operational processing and functional safety up to ASIL D for highly automated driving at reduced cost
  • Both fail-operational sensor-based signal processing as well as central AI inference are supported by the videantis v MP6000UDX unified platform
  • The technology has been validated as part of the € 50 million PRYSTINE research project


Hannover, Germany, October 25, 2021 – Today, videantis, a leading supplier of deep learning, computer vision, image processing and video coding solutions, announced availability of its technological platform for fail-operational processing at reduced cost for both smart sensors as well as highly integrated central ECUs. The concept for this solution was developed within the European PRYSTINE (Programmable Systems for Intelligence in Automobiles) project.
 
For three years, and equipped with a budget of € 50 Million, about 60 project partners were collaborating to build a Fail-operational Urban Surround perceptION (FUSION) based on Radar and LiDAR sensor fusion and control functions, eventually enabling safe automated driving in urban and rural environments.
 
The output of this project helps to address advanced functional safety requirements on embedded videantis-based multiprocessor systems up to ISO26262 ASIL D. Compared to traditional lockstep architectures, more than 50% of the cost can be saved due to the reduction of the silicon area.
 
The cost reduction is achieved by run-time failure detection schemes comprising of core self-test modules and a result monitoring software layer (RMSL) applied to the fine-grain and highly scalable videantis multiprocessor system. With this, faults can be detected during runtime and processing can be continued while excluding any faulty resource, without the need for duplicate hardware. E.g., with a silicon area overhead of only 3%, a multiprocessing system comprising 32 videantis cores can be turned into a fail-operational processing platform.
 
“PRYSTINE covers the most important aspects of autonomous driving: performance, efficiency and especially safety. We're proud to have contributed with our highly versatile processing platform which allows for the most cost-efficient way to implement fail-operational functionality”, says Dr. Hans-Joachim Stolberg, CEO/CTO of videantis.
 
videantis v-MP6000UDX processing platform is highly suited for fail-operational applications such as highly automated driving. With its scalability, it can cover the full range from smart image, Radar, LiDAR sensors (1 to 16 cores) to high-performance AI inference computers (>100 cores). The unified architecture allows the implementation of various functions: video coding, image or graphics processing, computer vision, deep learning using a multitude of network topologies, or even control functions. Utilizing redundancy, self-test and other control mechanisms enables customers to build safe systems according to ISO26262 up to ASIL D, using less silicon space or hardware overhead than conventional lockstep architectures.
 

About videantis
Headquartered in Hannover, Germany, videantis GmbH is a leading supplier of deep learning and computer vision solutions based on its unified processing platform. With its processor IP, hardware/software-based solutions for deep learning, computer vision, image processing and video coding, as well as its development tools, videantis globally supports semiconductor manufacturers, automotive OEMs and tier 1 suppliers together with customers in other high-volume embedded markets. videantis has been recognized with the Red Herring Award and multiple Deloitte Technology Fast 50 Awards as one of the fastest growing technology companies in Germany.
For more information, please visit https://www.videantis.com.

 

About PRYSTINE
PRYSTINE (Programmable Systems for Intelligence in Automobiles) is a research and innovation project which is co-funded by the ECSEL JU (Electronic Components and Systems for European Leadership, Joint Undertaking) and the national governments of the ECSEL member states. Members of the PRYSTINE consortium comprise 60 partners from 14 countries including automotive OEMs, semiconductor manufacturers, technology partners and research institutes. The goal of PRYSTINE is to deliver a fail-operational sensor-fusion architecture, integrated with a safe AI framework for object recognition, scene understanding and decision making, supporting the transition to highly automated vehicles.
For more information, please visit https://prystine.eu.

 

For more information please contact:
Stephan Janouch, Director Marketing
Email: stephan.janouch@videantis.com
Phone: +49 (511) 51 522 335
 
videantis GmbH
Rotermundstraße 11
30165 Hannover
Germany

Featured Video
Editorial
Jobs
Senior Principal Mechanical Engineer for General Dynamics Mission Systems at Canonsburg, Pennsylvania
Mechanical Engineer 2 for Lam Research at Fremont, California
Mechanical Manufacturing Engineering Manager for Google at Sunnyvale, California
Mechanical Engineer 3 for Lam Research at Fremont, California
Manufacturing Test Engineer for Google at Prague, Czechia, Czech Republic
Upcoming Events
Celebrate Manufacturing Excellence at Anaheim Convention Center Anaheim CA - Feb 4 - 6, 2025
3DEXPERIENCE World 2025 at George R. Brown Convention Center Houston TX - Feb 23 - 26, 2025
TIMTOS 2025 at Nangang Exhibition Center Hall 1 & 2 (TaiNEX 1 & 2) TWTC Hall Taipei Taiwan - Mar 3 - 8, 2025
Additive Manufacturing Forum 2025 at Estrel Convention Cente Berlin Germany - Mar 17 - 18, 2025



© 2024 Internet Business Systems, Inc.
670 Aberdeen Way, Milpitas, CA 95035
+1 (408) 882-6554 — Contact Us, or visit our other sites:
AECCafe - Architectural Design and Engineering EDACafe - Electronic Design Automation GISCafe - Geographical Information Services TechJobsCafe - Technical Jobs and Resumes ShareCG - Share Computer Graphic (CG) Animation, 3D Art and 3D Models
  Privacy PolicyAdvertise