Algolux Recognized in VSI Labs Market Report for Autonomous Vehicle Perception Software and Development Tools
Montreal, Canada – April 18, 2019 – Algolux has been recognized by VSI Labs in the Autonomous Vehicle Software/Algorithms and Development Tools categories in their recently released autonomous vehicle ecosystem report, titled “AV Ecosystem Analysis: The Building Blocks of Automated Vehicles”. Algolux, the leading provider of software for autonomous vision, was highlighted for their computer vision solutions, which include the Eos Embedded Perception Software and the Atlas Camera Optimization Suite.
VSI Labs Software/Algorithm and Development Tools market analysis highlights Algolux
We are honored to be recognized by VSI Labs as a leading provider of perception software and development tools,” said Allan Benchetrit, President and CEO. “Achieving optimal perception performance is mission-critical for autonomous vehicles and ADAS vision systems to improve safety and this acknowledgment reinforces that the technology Algolux provides is a key solution to those challenges.”
To request a copy of the full report, please request through VSI Labs at
Algolux provides machine learning optimization and embedded software for autonomous vision – empowering cameras to see more clearly and perceive what cannot be sensed with today’s imaging and vision systems. Computer vision is at the heart of autonomous cars, ADAS, mobile devices, security cameras (IoT), AR/VR, robotics, drones, and medical equipment, leading the next wave of market growth and social impact. Developed by an industry-recognized team of researchers, our award-winning machine learning technologies and end-to-end methodology address the complex task of developing optimal imaging and vision systems. This approach improves vehicle safety and system performance while reducing the program risks faced by product development teams, such as cost, time-to-market, and scalability. Learn more by visiting Algolux at https://algolux.com and join the discussion on our LinkedIn and Twitter.
+1 (877) 424-9107