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Universidade do Minho - Repositório Institucional >
Escola de Engenharia da Universidade do Minho | School of Engineering of the University of Minho >
Centro de Engenharia Biológica | Centre of Biological Engineering >
CEB - Artigos em Revistas Internacionais/Papers in International Journals >
Please use this identifier to cite or link to this item:
http://hdl.handle.net/1822/6672
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| Title: | Recognition of protozoa and metazoa using image analysis tools, discriminant analysis, neural networks and decision trees |
| Authors: | Ginoris, Y. P. Amaral, A. L. Nicolau, Ana Coelho, M. A. Z. Ferreira, E. C. |
| Keywords: | Discriminant analysis Decision trees Neural networks Protozoa Metazoa Image analysis |
| Issue date: | Jul-2007 |
| Publisher: | Elsevier |
| Citation: | "Analytica chimica acta". ISSN 0003-2670. 595:1-2 (July 2007) 160-169. |
| Abstract: | Protozoa and metazoa are considered good indicators of the treatment quality in activated sludge systems due to the fact that these organisms are fairly sensitive to physical, chemical and operational processes. Therefore, it is possible to establish close relationships between the predominance
of certain species or groups of species and several operational parameters of the plant, such as the biotic indices, namely the Sludge Biotic Index (SBI). This procedure requires the identification, classification and enumeration of the different species, which is usually achieved manually implying both time and expertise availability. Digital image analysis combined with multivariate statistical techniques has proved to be a useful
tool to classify and quantify organisms in an automatic and not subjective way.
Thiswork presents a semi-automatic image analysis procedure for protozoa and metazoa recognition developed in Matlab language. The obtained morphological descriptors were analyzed using discriminant analysis, neural network and decision trees multivariable statistical techniques to identify and classify each protozoan or metazoan. The obtained procedure was quite adequate for distinguishing between the non-sessile protozoa classes and also for the metazoa classes, with high values for the overall species recognition with the exception of sessile protozoa. In terms of the wastewater conditions assessment the obtained results were found to be suitable for the prediction of these conditions. Finally, the discriminant
analysis and neural networks results were found to be quite similar whereas the decision trees technique was less appropriate. |
| Type: | article |
| URI: | http://hdl.handle.net/1822/6672 |
| ISSN: | 0003-2670 |
| Peer-Reviewed: | yes |
| Appears in Collections: | CEB - Artigos em Revistas Internacionais/Papers in International Journals
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