Segmentation of scanning electron microscopy images from natural rubber samples with gold nanoparticles using starlet wavelets
June 12, 2016 Β· Declared Dead Β· π Microscopy research and technique (Print)
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Authors
Alexandre Fioravante de Siqueira, FlΓ‘vio Camargo Cabrera, Aylton Pagamisse, Aldo Eloizo Job
arXiv ID
1606.03671
Category
cs.CV: Computer Vision
Citations
8
Venue
Microscopy research and technique (Print)
Last Checked
3 months ago
Abstract
Electronic microscopy has been used for morphology evaluation of different materials structures. However, microscopy results may be affected by several factors. Image processing methods can be used to correct and improve the quality of these results. In this paper we propose an algorithm based on starlets to perform the segmentation of scanning electron microscopy images. An application is presented in order to locate gold nanoparticles in natural rubber membranes. In this application, our method showed accuracy greater than 85% for all test images. Results given by this method will be used in future studies, to computationally estimate the density distribution of gold nanoparticles in natural rubber samples and to predict reduction kinetics of gold nanoparticles at different time periods.
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