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Quality control of apples by means of convolutional neural networks - Comparison of bruise detection by color images and near-infrared images

Juan Daniel Arango, Benjamin Staar, Adil Maqsood Baig, Michael Freitag

2021Procedia CIRP21 citationsDOIOpen Access PDF

Abstract

Different stages of logistic process can affect apples, which often results in illusive bruises - making it extremely hard for the personal who has to sort out these fruits quickly before packing. We aim to provide a solution for bruise detection. In this contribution, we use state of the art convolutional neural network architectures for the task. Simultaneous input is taken from color CMOS and near-infrared (with a bandwidth filter) cameras, illuminated with a special light source. We achieved an accuracy above 97% for bruise detection in both cases: Colored and near-infrared images, indicating that both options are equally suitable.

Topics & Concepts

BruiseArtificial intelligencesortConvolutional neural networkColoredComputer visionComputer scienceInfraredFilter (signal processing)Pattern recognition (psychology)OpticsMaterials sciencePhysicsMedicineInformation retrievalSurgeryComposite materialBiometric Identification and Security
Quality control of apples by means of convolutional neural networks - Comparison of bruise detection by color images and near-infrared images | Litcius