Instance segmentation of on-line wear debris using deep convolutional neural network with transfer learning
Jingming Li,
Mingzhi Chen
Abstract:Purpose
This study aims to apply deep convolutional neural network Mask-R-CNN algorithm based on transfer learning to realize the segmentation of online wear fragments.
Design/methodology/approach
Wear debris analysis is considered to be one of the most effective methods to maintain the condition of mechanical equipment. In this paper, the friction and wear testing machine was used to design pin-disk rotation, pin-disk reciprocation and four-ball test to produce cutting, sliding, laminar and fatigue debris. A… Show more
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