Print Email Facebook Twitter Non-destructive Infield Quality Estimation of Strawberries using Deep Architectures Title Non-destructive Infield Quality Estimation of Strawberries using Deep Architectures Author Jol, Cees (TU Delft Electrical Engineering, Mathematics and Computer Science; TU Delft Pattern Recognition and Bioinformatics) Contributor Wen, J. (mentor) van Gemert, J.C. (mentor) de Weerdt, M.M. (graduation committee) Degree granting institution Delft University of Technology Programme Computer Science | Bioinformatics Date 2022-11-04 Abstract Strawberries have a short shelf-life time and thus need to be harvested at the right time to reduce waste. To this end, information about quality attributes is useful. Recently, many computer vision methods have been proposed. Most literature analyzes postharvest, which means that strawberries can only be analyzed after harvesting. As a result, these methods cannot be used to find a good timing to harvest. We analyze strawberries preharvest, so that we can analyze until we find a good timing to harvest. We show that predicting ripeness, sweetness, and firmness of strawberries is possible infield. Further, we analyze strawberry size to find a fitting market. Since we analyze size infield, we find two challenges: occlusions and lack of depth information. We perform inpainting to try to recover the original shape. Results are good on artificial occlusions, but varying on real occlusions as it is difficult to adapt to all kinds of occlusions. We use stereo vision and depth estimation to estimate size. Stereo vision improves size estimation slightly. Subject Non-destructiveStrawberryOcclusion ModellingDeep LearningStereo visionArtificial IntelligenceImage inpaintingComputer Vision To reference this document use: http://resolver.tudelft.nl/uuid:e00fa651-2ffb-4020-81a1-78c7e82458f1 Part of collection Student theses Document type master thesis Rights © 2022 Cees Jol Files PDF Cees_Jol_MSc_Thesis_Report.pdf 16.93 MB Close viewer /islandora/object/uuid:e00fa651-2ffb-4020-81a1-78c7e82458f1/datastream/OBJ/view