In semi-supervised classification, class memberships are learnt from a trustworthy set of units. Despite careful data collection, some labels in the learning set could be unreliable (label noise). Further, a proportion of observations might depart from the main structure of the data (outliers) and new groups may appear in the test set, which were not encountered earlier in the training phase (unobserved classes). Therefore, we present here a robust and adaptive version of the Discriminant Analysis rule, capable of handling situations in which one or more of the aforementioned problems occur. The proposed approach is successfully employed in performing anomaly and novelty detection on geometric features recorded from X-ray photograms of grain kernels from different varieties.

Cappozzo, A., Greselin, F., Brendan Murphy, T., Robust Model-Based Learning to Discover New Wheat Varieties and Discriminate Adulterated Kernels in X-Ray Images, Comunicazione, in Statistical Learning and Modeling in Data Analysis, (Cassino, 11-13 September 2019), Springer, Cassino 2021: 29-36. 10.1007/978-3-030-69944-4_4 [https://hdl.handle.net/10807/309191]

Robust Model-Based Learning to Discover New Wheat Varieties and Discriminate Adulterated Kernels in X-Ray Images

Cappozzo, Andrea;
2021

Abstract

In semi-supervised classification, class memberships are learnt from a trustworthy set of units. Despite careful data collection, some labels in the learning set could be unreliable (label noise). Further, a proportion of observations might depart from the main structure of the data (outliers) and new groups may appear in the test set, which were not encountered earlier in the training phase (unobserved classes). Therefore, we present here a robust and adaptive version of the Discriminant Analysis rule, capable of handling situations in which one or more of the aforementioned problems occur. The proposed approach is successfully employed in performing anomaly and novelty detection on geometric features recorded from X-ray photograms of grain kernels from different varieties.
2021
Inglese
Statistical Learning and Modeling in Data Analysis
Scientific Meeting of the Classification and Data Analysis Group of the Italian Statistical Society
Cassino
Comunicazione
11-set-2019
13-set-2019
9783030699437
Springer
Cappozzo, A., Greselin, F., Brendan Murphy, T., Robust Model-Based Learning to Discover New Wheat Varieties and Discriminate Adulterated Kernels in X-Ray Images, Comunicazione, in Statistical Learning and Modeling in Data Analysis, (Cassino, 11-13 September 2019), Springer, Cassino 2021: 29-36. 10.1007/978-3-030-69944-4_4 [https://hdl.handle.net/10807/309191]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/309191
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