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Inspecting Method for Defective Casting Products with Convolutional Neural Network (CNN)

Title
Inspecting Method for Defective Casting Products with Convolutional Neural Network (CNN)
Author
윤종헌
Keywords
Convolution neural network; Defect inspection; Casting product; Deep learning
Issue Date
2020-02
Publisher
KOREAN SOC PRECISION ENG
Citation
INTERNATIONAL JOURNAL OF PRECISION ENGINEERING AND MANUFACTURING-GREEN TECHNOLOGY, v. 8, no. 2, page. 583-594
Abstract
It is essential to conduct the quality control for gauranteeing sound products after finishing conventional manufacturing processes. Vision-based inpection system has been extensively applied to various industries linked with concept of the smart factory since it does not only enhance the inspecting accuracy, but also decrease the cost for the human inspection, substantially. This paper mainly concerns the development of the inspecting system for the casting products with supported by the convolutional neural network, which makes it possible to detect various types of defects such as blow hole, chipping, crack, and wash automatically. To obtain high accuracy in inspecting system, it does not only require sub-partitioning of the original images, but also apply multiple labeling according to the order of the sub-images and the existence of the defects. Performance of the proposed inspecting algorithm has been validated with the 400 casting products, in which it exhibits substantially high accuracy more than 98%, experimentally.
URI
http://journalprofile.clarivate.com/jif/home/?journal=INT%20J%20PR%20ENG%20MAN-GT&year=2019&editions=SCIE&Init=Yes&SrcApp=IC2LS&PointOfEntry=Impact&SID=H2-ZmnvDgIHF5B6K8vN9BcMH6dHFnbpkfqM-18x2dXSELPRxxb3wYVa0lgrsEC0Qx3Dx3Db00cu1zlIYMRTmWZ964Fmgx3Dx3D-03Ff2gF3hTJGBPDScD1wSwx3Dx3D-cLUx2FoETAVeN3rTSMreq46gx3Dx3D&edition=undefined&pssid=H2-ZmnvDgIHF5B6K8vN9BcMH6dHFnbpkfqM-18x2dXSELPRxxb3wYVa0lgrsEC0Qx3Dx3Db00cu1zlIYMRTmWZ964Fmgx3Dx3D-03Ff2gF3hTJGBPDScD1wSwx3Dx3D-cLUx2FoETAVeN3rTSMreq46gx3Dx3Dhttps://repository.hanyang.ac.kr/handle/20.500.11754/163146
ISSN
2288-6206; 2198-0810
Appears in Collections:
COLLEGE OF ENGINEERING SCIENCES[E](공학대학) > MECHANICAL ENGINEERING(기계공학과) > Articles
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