Article ID Journal Published Year Pages File Type
383212 Expert Systems with Applications 2013 8 Pages PDF
Abstract

The automatic characterization of particles in metallographic images has been paramount, mainly because of the importance of quantifying such microstructures in order to assess the mechanical properties of materials common used in industry. This automated characterization may avoid problems related with fatigue and possible measurement errors. In this paper, computer techniques are used and assessed towards the accomplishment of this crucial industrial goal in an efficient and robust manner. Hence, the use of the most actively pursued machine learning classification techniques. In particularity, Support Vector Machine, Bayesian and Optimum-Path Forest based classifiers, and also the Otsu’s method, which is commonly used in computer imaging to binarize automatically simply images and used here to demonstrated the need for more complex methods, are evaluated in the characterization of graphite particles in metallographic images. The statistical based analysis performed confirmed that these computer techniques are efficient solutions to accomplish the aimed characterization. Additionally, the Optimum-Path Forest based classifier demonstrated an overall superior performance, both in terms of accuracy and speed.

► Introduce the importance of efficient characterization of industrial materials. ► First use of OPF, SVM and Bayes based computer classifiers in such characterization. ► Compare the classifiers against the traditional Otsu’s method. ► Assess in detail the experimental findings by visual and statistical means. ► Confirm the availability of computer solutions to realize efficiently such characterization.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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