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JURÁNEK, R.; MACHALÍK, S.; ZEMČÍK, P.
Original Title
Analysis Wear Debris Through Classification
English Title
Type
Paper in proceedings outside WoS and Scopus
Original Abstract
This paper introduces a novel method of wear debris analysis through classification of the particles based on machine learning. Wear debris consists of particles of metal found in e.g. lubricant oils used in engineering equipment. Analytical ferrography is one of methods for wear debris analysis and it is very important for early detection or even prevention of failures in engineering equipment, such as combustion engines, gearboxes, etc. The proposed novel method relies on classification of wear debris particles into several classes defined by the origin of such particles. Unlike the earlier methods, the proposed classification approach is based on visual similarity of the particles and supervised machine learning. The paper describes the method itself, demonstrates its experimental results, and draws conclusions.
English abstract
Keywords
Wear, Wear Debris, Classification, AdaBoost, CS-LBP, LBP
Key words in English
Authors
RIV year
2012
Released
22.08.2011
Publisher
Springer Verlag
Location
Heidelberg
ISBN
978-3-642-23686-0
Book
Proceedings of Advanced Concepts of Inteligent Vision Systems (ACIVS 2011)
Edition
Lecture Notes in Computer Science
Volume
6915
Pages from
273
Pages to
283
Pages count
11
BibTex
@inproceedings{BUT76367, author="Roman {Juránek} and Stanislav {Machalík} and Pavel {Zemčík}", title="Analysis Wear Debris Through Classification", booktitle="Proceedings of Advanced Concepts of Inteligent Vision Systems (ACIVS 2011)", year="2011", series="Lecture Notes in Computer Science", volume="6915", pages="273--283", publisher="Springer Verlag", address="Heidelberg", isbn="978-3-642-23686-0" }