Machine vision is one of the key technologies used to perform intelligent manufacturing. In order to improve the recognition rate of multi-class defects in wheel hubs, an improved Faster R-CNN method was proposed. A data set for wheel hub defects was built. This data set consisted of four types of defects in 2,412 1080 x 1440 pixels images. Faster R-CNN was modified, trained, verified and tested based on this database. The recognition rate for this proposed method was excellent. The proposed method was compared with the popular R-CNN and YOLOv3 methods showing simpler, faster, and more accurate defect detection, which demonstrates the superiority of the improved Faster R-CNN for wheel hub defects.
CITATION STYLE
Sun, X., Gu, J., Huang, R., Zou, R., & Palomares, B. G. (2019). Surface defects recognition of wheel hub based on improved faster R-CNN. Electronics (Switzerland), 8(5). https://doi.org/10.3390/electronics8050481
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