2024
DOI: 10.1101/2024.04.03.588000
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Rating Pome Fruit Quality Traits Using Deep Learning and Image Processing

Nhan H. Nguyen,
Joseph Michaud,
Rene Mogollon
et al.

Abstract: Quality assessment of pome fruits (i.e.apples and pears) is used not only crucial for determining the optimal harvest time, but also the progression of fruit-quality attributes during storage. Therefore, it is typical to repeatedly evaluate fruits during the course of a postharvest experiment. This evaluation often includes careful visual assessments of fruit for apparent defects and physiological symptoms. A general best practice for quality assessment is to rate fruit using the same individual rater or group… Show more

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