Proposed Grade Discrimination Model Combining Classification and Grade Regression

Image processing techniques based on neural networks enable highly accurate discrimination in fruit and vegetable sorting. However, conventional classification models may not be sufficiently accurate for grading based on fine features, such as in the simultaneous output of high estimated probabiliti...

Full description

Saved in:
Bibliographic Details
Published inAgricultural Information Research Vol. 33; no. 2; pp. 109 - 116
Main Authors Iwadate, Kenji, Ninomiya, Kazunori, Ozawa, Katsuya, Suzuki, Ikuo
Format Journal Article
LanguageEnglish
Japanese
Published Japanese Society of Agricultural Informatics 01.07.2024
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Image processing techniques based on neural networks enable highly accurate discrimination in fruit and vegetable sorting. However, conventional classification models may not be sufficiently accurate for grading based on fine features, such as in the simultaneous output of high estimated probabilities for multiple distant grades. Here we propose a classification model combining conventional classification and grade regression for grade discrimination and verified its effectiveness by using the grade discrimination of onion peelings as a test case. The model reduced misclassification to distant grades without decreasing discrimination accuracy, relative to conventional classification and regression models.
ISSN:0916-9482
1881-5219
DOI:10.3173/air.33.109