Enabling zero-defect manufacturing through edge based visual quality control
The Challenge
Our Approach
We deployed an Edge-based Computer Vision System trained on real production footage. Features included:
Latency and lighting variability were solved via hardware-optimized models running on NVIDIA Jetson devices.
Stats
Defect escape rate cut from 8.2% to 1.3%
The Outcome
Case Study
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