Image processing through the implementation of manually coded algorithms has been adopted to detect fruit damage during post-harvest operations. This study tested convolution neural networks with “You Only Look Once” (YOLO) architecture using a commercial online platform to detect physiological disorders and ripening stage in ‘Abbé Fétel’ pear. Disorders such as superficial scald and the starch pattern index (SPI) were assessed. Three different models were trained to detect: I) individual fruit within the boxes; II) superficial scald or senescence scald on pear skin; III) the SPI value of pears was assessed using the Lugol solution. Preliminary statistics show that the model to count the fruit inside the boxes reached 64.70% of true positives with 0.5 intersection over union. The second had less accuracy (up to 20% of true positives) but maintained a good average precision (60%) with different confidence thresholds (40% and 20%). The third showed good performances compared to the Ctifl and Laimburg scales, with an F1 score of 0.36 and 0.59, respectively. The effectiveness of the transfer learning method was demonstrated. However, further image labelling and modelling research is needed to improve the accuracy of the simulations and to develop an application for portable devices for pre- and post-harvest factor mapping. These results could lead to improvements in the management of fruit boxes and thus help ensure good fruit quality for consumers.

Reprint of: A convolutional neural network approach to detecting fruit physiological disorders and maturity in ‘Abbé Fétel’ pears / Bonora A.; Bortolotti G.; Bresilla K.; Grappadelli L.C.; Manfrini L.. - In: BIOSYSTEMS ENGINEERING. - ISSN 1537-5110. - ELETTRONICO. - 223:(2022), pp. 224-232. [10.1016/j.biosystemseng.2022.10.005]

Reprint of: A convolutional neural network approach to detecting fruit physiological disorders and maturity in ‘Abbé Fétel’ pears

Bonora A.;Bortolotti G.;Manfrini L.
2022

Abstract

Image processing through the implementation of manually coded algorithms has been adopted to detect fruit damage during post-harvest operations. This study tested convolution neural networks with “You Only Look Once” (YOLO) architecture using a commercial online platform to detect physiological disorders and ripening stage in ‘Abbé Fétel’ pear. Disorders such as superficial scald and the starch pattern index (SPI) were assessed. Three different models were trained to detect: I) individual fruit within the boxes; II) superficial scald or senescence scald on pear skin; III) the SPI value of pears was assessed using the Lugol solution. Preliminary statistics show that the model to count the fruit inside the boxes reached 64.70% of true positives with 0.5 intersection over union. The second had less accuracy (up to 20% of true positives) but maintained a good average precision (60%) with different confidence thresholds (40% and 20%). The third showed good performances compared to the Ctifl and Laimburg scales, with an F1 score of 0.36 and 0.59, respectively. The effectiveness of the transfer learning method was demonstrated. However, further image labelling and modelling research is needed to improve the accuracy of the simulations and to develop an application for portable devices for pre- and post-harvest factor mapping. These results could lead to improvements in the management of fruit boxes and thus help ensure good fruit quality for consumers.
2022
Reprint of: A convolutional neural network approach to detecting fruit physiological disorders and maturity in ‘Abbé Fétel’ pears / Bonora A.; Bortolotti G.; Bresilla K.; Grappadelli L.C.; Manfrini L.. - In: BIOSYSTEMS ENGINEERING. - ISSN 1537-5110. - ELETTRONICO. - 223:(2022), pp. 224-232. [10.1016/j.biosystemseng.2022.10.005]
Bonora A.; Bortolotti G.; Bresilla K.; Grappadelli L.C.; Manfrini L.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/959910
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