Olive Fruit Selection through AI Algorithms and RGB Imaging.
Simone FigorilliSimona ViolinoLavinia MoscoviniLuciano OrtenziGiorgia SalvucciSimone VastaFrancesco TocciCorrado CostaPietro ToscanoFederico PallottinoPublished in: Foods (Basel, Switzerland) (2022)
(1) Background: Extra virgin olive oil production is strictly influenced by the quality of fruits. The optical selection allows for obtaining high quality oils starting from batches with different qualitative characteristics. This study aims to test a CNN algorithm in order to assess its potential for olive classification into several quality classes for industrial purposes, specifically its potential integration and sorting performance evaluation. (2) Methods: The acquired samples were all subjected to visual analysis by a trained operator for the distinction of the products in five classes related to the state of external veraison and the presence of visible defects. The olive samples were placed at a regular distance and in a fixed position on a conveyor belt that moved at a constant speed of 1 cm/s. The images of the olives were taken every 15 s with a compact industrial RGB camera mounted on the main frame in aluminum to allow overlapping of the images, and to avoid loss of information. (3) Results: The modelling approaches used, all based on AI techniques, showed excellent results for both RGB datasets. (4) Conclusions: The presented approach regarding the qualitative discrimination of olive fruits shows its potential for both sorting machine performance evaluation and for future implementation on machines used for industrial sorting processes.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- machine learning
- heavy metals
- wastewater treatment
- high resolution
- quality improvement
- primary care
- systematic review
- optical coherence tomography
- resistance training
- health information
- current status
- body composition
- rna seq
- photodynamic therapy
- single cell
- low cost