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Published in: Soft Computing 3/2017

09-11-2016 | Focus

Segmentation of carbon nanotube images through an artificial neural network

Authors: María Celeste Ramírez Trujillo, Teresa E. Alarcón, Oscar S. Dalmau, Adalberto Zamudio Ojeda

Published in: Soft Computing | Issue 3/2017

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Abstract

Segmentation of carbon nanotube images is an important task for nanotechnology. The segmentation stage determines the accuracy of the measurement process of nanotube when assessing the quality of nanomaterials. In this work, we propose two segmentation algorithms for carbon nanotube images. Each algorithm includes three stages: preprocessing, segmentation and postprocessing. The first one is applied on images from scanning electron microscopy and employs a matched filter bank in the preprocessing step followed by a neural network in the segmenting phase. The second algorithm uses the Perona–Malik filter for enhancing the nanotube information. The segmentation phase is composed of the relaxed Otsu’s threshold and an artificial neural network. This algorithm is applied on images from transmission electron microscopy. The postprocessing stage, for both algorithms, is based on mathematical morphology. The performance of the proposed algorithms is numerically evaluated by using real image databases, manually segmented by an expert. The algorithm for segmentation of scanning electron microscopy achieved 92.74% of overall accuracy, while the algorithm for segmentation of transmission electron microscopy obtained an accuracy of 73.99% if the whole image is considered. A performance improvement is accomplished if only the region of interest is segmented, arriving to 84.19% of overall accuracy.

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Metadata
Title
Segmentation of carbon nanotube images through an artificial neural network
Authors
María Celeste Ramírez Trujillo
Teresa E. Alarcón
Oscar S. Dalmau
Adalberto Zamudio Ojeda
Publication date
09-11-2016
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 3/2017
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-016-2426-1

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