Arsenic Ore Mixture Froth Image Generation with Neural Networks and a Language for Declarative Data Validation
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Zamayla, Arnel
Greco, Gianluigi
Alviano, Mario
Dodaro, Carmine
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Università della Calabria. Dipartimento di Matematica e Informatica
Dottorato di Ricerca in Matematica e Informatica. Ciclo XXXIII; Computer vision systems that measure froth flow velocities and stability designed for flotation
froth image analysis are well established in industry, as they are used to control material
recovery. However flotation systems that has limited data has not been explored in the
same fashion bearing the fact that big data tools like deep convolutional neural networks
require huge amounts of data. This lead to the motivation of the research reported in the
first part of this thesis, which is to generate synthetic images from limited data in order to
create a froth image dataset. The image synthesis is possible through the use of generative
adversarial network. The performance of human experts in this domain in identifying the
original and synthesized froth images were then compared with the performance of the
models. The models exhibited better accuracy levels by average on the tests that were
performed. The trained classifier was also compared with some of the established neural
network models in the literature like the AlexNet, VGG16 ang ResNet34. Transfer learning
was used as a method for this purpose. It also showed that these pretrained networks
that are readily available have better accuracy by average comapared to trained experts.
The second part of this thesis reports on a language designed for data validation in
the context of knowledge representation and reasoning. Specifically, the target language is
Answer Set Programming (ASP), a logic-based programming language widely adopted for
combinatorial search and optimization, which however lacks constructs for data validation.
The language presented in this thesis fulfills this gap by introducing specific constructs for
common validation criteria, and also supports the integration of consolidated validation
libraries written in Python. Moreover, the language is designed so to inject data validation
in ordinary ASP programs, so to promote fail-fast techniques at coding time without imposing any lag on the deployed system if data are pretended to be valid.Soggetto
Artificial Intelligence; Machine learning; data validation
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INF/01;