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Early Detection of Mold-Contaminated Peanuts Using Machine Learning and Deep Features Based on Optical Coherence Tomography

Edwin Manhando, Yang Zhou, Fenglin Wang

2021AgriEngineering16 citationsDOIOpen Access PDF

Abstract

Fungal infection is a pre-harvest and post-harvest crisis for farmers of peanuts. In environments with temperatures around 28 °C to 30 °C or relative humidity of approximately 90%, mold-contaminated peanuts have a considerable likelihood to be infected with Aflatoxins. Aflatoxins are known to be highly carcinogenic, posing danger to humans and livestock. In this work, we proposed a new approach for detection of mold-contaminated peanuts at an early stage. The approach employs the optical coherence tomography (OCT) imaging technique and an error-correcting output code (ECOC) based Support Vector Machine (SVM) trained on features extracted using a pre-trained Deep Convolutional Neural Network (DCNN). To this end, mold-contaminated and uncontaminated peanuts were scanned to create a data set of OCT images used for training and evaluation of the ECOC-SVM model. Results showed that the proposed approach is capable of detecting mold-contaminated peanuts with respective accuracies of approximately 85% and 96% after incubation periods of 48 and 96 h.

Topics & Concepts

MoldSupport vector machineConvolutional neural networkContaminationArtificial intelligenceOptical coherence tomographyAflatoxinComputer sciencePattern recognition (psychology)Environmental scienceBiologyFood scienceBotanyOpticsPhysicsEcologyPlant Pathogens and Fungal DiseasesSpectroscopy and Chemometric AnalysesSpectroscopy Techniques in Biomedical and Chemical Research
Early Detection of Mold-Contaminated Peanuts Using Machine Learning and Deep Features Based on Optical Coherence Tomography | Litcius