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슈퍼픽셀 DBSCAN 군집 알고리즘을 이용한 용융아연도금 강판의 부식이미지 분석Corrosion image analysis on galvanized steel by using superpixel DBSCAN clustering algorithm

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Corrosion image analysis on galvanized steel by using superpixel DBSCAN clustering algorithm
Authors
김범수김연원이경황양정현
Issue Date
2022
Publisher
한국표면공학회
Keywords
Corrosion; Superpixel; DBSCAN; k-means clustering; HSV color space.
Citation
한국표면공학회지, v.55, no.3, pp.164 - 172
Indexed
KCI
Journal Title
한국표면공학회지
Volume
55
Number
3
Start Page
164
End Page
172
URI
https://scholarworks.bwise.kr/gnu/handle/sw.gnu/2186
ISSN
1225-8024
Abstract
Hot-dip galvanized steel(GI) is widely used throughout the industry as a corrosion resistance material. Corrosion of steel is a common phenomenon that results in the gradual degradation under variousenvironmental conditions. Corrosion monitoring is to track the degradation progress for a long time. Corrosion on steel plate appears as discoloration and any irregularities on the surface. This studydeveloped a quantitative evaluation method of the rust formed on GI steel plate using a superpixelbasedDBSCAN clustering method and k-means clustering from the corroded area in a given image. The superpixel-based DBSCAN clustering method decrease computational costs, reaching automaticsegmentation. The image color of the rusty surface was analyzed quantitatively based on HSV(Hue,Saturation, Value) color space. In addition, two segmentation methods are compared for the particularspatial region using their histograms.
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해양과학대학 > 기계시스템공학과 > Journal Articles

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Yang, Jeong Hyeon
해양과학대학 (기계시스템공학과)
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