2024
DOI: 10.21203/rs.3.rs-3913991/v1
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Degradation Detection in Rice Products via Shape Variations in XCT Simulation-Empowered AI

Miroslav Yosifov,
Thomas Lang,
Virginia Florian
et al.

Abstract: This research explores the process of generating artificial training data for the detection and classification of defective areas in X-ray computed tomography (XCT) scans in the agricultural domain using AI techniques. It aims to determine the minimum detectability limit for such defects through analyses regarding the Probability of Detection based on analytic XCT simulations. For this purpose, the presented methodology introduces randomized shape variations in surface models used as descriptors for specimens … Show more

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