System-on-Module Platforms Accelerate Machine Vision Development

The need for machine vision is growing across a range of applications, including security, traffic and city cameras, retail analytics, automated inspection, process control, and vision-guided robotics. Machine vision is complex to implement and requires the integration of diverse technologies and sub-systems, including high-performance hardware and advanced artificial intelligence/machine learning (AI/ML) software. This can be a complex, costly, and time-consuming process that is exposed to numerous opportunities for cost overruns and schedule delays.


Uploading: 131000 of 1029344 bytes uploaded.


Instead of starting from scratch, designers can turn to well-curated, high-performance development platforms that speed time to market, control cost, and reduce development risks while supporting high degrees of application flexibility and performance. A system-on-module (SOM) based development platform can provide an integrated hardware and software environment, enabling developers to focus on application customization and save up to nine months of development time. In addition to the development environment, the same SOM architecture is available in production-optimized configurations for commercial and industrial environments, enhancing application reliability and quality, further reducing risks, and speeding time to market.


#WorldResearchAwards #ResearchAwards #AcademicAwards #ScienceAwards #GlobalResearchAwards #scientists #researchers #computerscience #softwareengineering #artificialintelligence #machinelearning #datascience #programming#MachineVision #SOM #AI #EdgeComputing #ComputerVision #Automation #Innovation #EmbeddedSystems #VisionAI #IndustrialAutomation

Comments

Popular posts from this blog

AI Tunes into Emotions: The Rise of Affective Computing