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WATCH ON-DEMAND WEBINAR:

Computer Vision for Ergonomic Assessments: Bridging the Gap in Workplace Safety

Workplace ergonomics is at a turning point. Limited access to qualified ergonomists, time-consuming manual assessments, and subjective evaluations pose significant challenges, especially in remote or resource-constrained environments.

In this webinar, we’ll explore how computer vision technology is transforming musculoskeletal disorder (MSD) risk assessments. Learn how computer vision-based full-body and hand-pose estimation provides objective, scalable, and efficient insights, without the need for body-worn sensors.
 
We’ll compare accuracy, discuss real-world applications, and showcase how solutions like Ergo Copilot are making ergonomic evaluations faster, more consistent, and more accessible than ever.
 
You will learn:
  • How computer vision enables automated full-body and hand-pose tracking for ergonomic analysis.
  • The differences between single-camera and multi-camera pose estimation methods.
  • How CV-based systems compare to traditional REBA and RULA assessments.
  • Real-world applications from manufacturing and warehouse environments.
  • How AI copilots can help reduce assessment time by up to 7× while improving consistency.
 

Webinar Speaker:

Aprameya Manjunath-edit

Aprameya Manjunath, Director of Solutions Architecture, Retrocausal

Aprameya Manjunath is the Director of Solutions Architecture at Retrocausal, where he leads the development of Ergo Copilot, an AI-powered ergonomics analysis tool. Over the past few years, he has worked with top U.S. manufacturers to transform manual ergonomic assessments into automated, AI-driven solutions. Earlier in his career, he served as a manufacturing engineer at a leading automotive company, collaborating with EHS teams on posture analysis and workplace safety. With a unique blend of expertise in ergonomics and computer vision technology, Aprameya brings both practitioner-level insight and product innovation experience, bridging the gap between traditional ergonomic practices and next-generation AI solutions.