Nanofibrous materials produced by electrospinning process may exhibit characteristic localized defects and anomalies (i.e., beads, speck of dust) that make the nanostructure a network of nonhomogeneous nanofibers, unsuitable for industrial production at large scale of the nanoproducts.Ieracitano, Cosimo Therefore, monitoring and controlling the quality of nanomaterials production has become increasingly important and intelligent anomalies detection systems have been emerging. Pantó, Fabiola In this study, we propose an innovative framework based on machine (deep) learning for automatic anomaly detection.Mammone, Nadia Specifically, a deep convolutional neural network (CNN) is proposed to automatically classify scanning electron microscope (SEM) images of homogeneous (HNF) and nonhomogeneous nanofibers (NHNF), interpreted as two different categories.Paviglianiti, Annunziata The proposed approach has been validated on experimental SEM images acquired through SEM images analyzer on polyvinylacetate (PVAc) nanofibers produced by electrospinning process. Frontera, Patrizia Experimental results showed that the designed deep CNN achieved an accuracy rate up to 80% and average precision, recall, F_score of, 78.5, 79, and 78.5%, respectively. These promising results encourage the use of this effective technique in industrial production.Morabito, Francesco Carlo
Toward an Automatic Classification of SEM Images of Nanomaterials via a Deep Learning Approach / Ieracitano, Cosimo; Pantó, Fabiola; Mammone, Nadia; Paviglianiti, Annunziata; Frontera, Patrizia; Morabito, Francesco Carlo - In: Neural Approaches to Dynamics of Signal ExchangesELETTRONICO. - [s.l] : Springer Singapore, 2020. - ISBN 978-981-13-8950-4. - pp. 61-72 [10.1007/978-981-13-8950-4_7]
Toward an Automatic Classification of SEM Images of Nanomaterials via a Deep Learning Approach
Paviglianiti, Annunziata;
2020
Abstract
Nanofibrous materials produced by electrospinning process may exhibit characteristic localized defects and anomalies (i.e., beads, speck of dust) that make the nanostructure a network of nonhomogeneous nanofibers, unsuitable for industrial production at large scale of the nanoproducts.Ieracitano, Cosimo Therefore, monitoring and controlling the quality of nanomaterials production has become increasingly important and intelligent anomalies detection systems have been emerging. Pantó, Fabiola In this study, we propose an innovative framework based on machine (deep) learning for automatic anomaly detection.Mammone, Nadia Specifically, a deep convolutional neural network (CNN) is proposed to automatically classify scanning electron microscope (SEM) images of homogeneous (HNF) and nonhomogeneous nanofibers (NHNF), interpreted as two different categories.Paviglianiti, Annunziata The proposed approach has been validated on experimental SEM images acquired through SEM images analyzer on polyvinylacetate (PVAc) nanofibers produced by electrospinning process. Frontera, Patrizia Experimental results showed that the designed deep CNN achieved an accuracy rate up to 80% and average precision, recall, F_score of, 78.5, 79, and 78.5%, respectively. These promising results encourage the use of this effective technique in industrial production.Morabito, Francesco CarloFile | Dimensione | Formato | |
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https://hdl.handle.net/11583/2759786