
The present inspection course of used by an automotive gear manufacturer in Guelph, Ontario, requires human operators to visually examine all gear produced. In this work, we propose a machine imaginative and prescient system for automating the inspection course of for gears with damaged enamel pop over to these guys defects. The applied inspection system makes use of a faster R-CNN network to establish the defects, and combines domain knowledge to reduce back the handbook inspection of non-defective gears by 66%.

During our metal 3D printing member webinar on May 1, greater than 25 questions had been fielded by Dr. …
