Simplified machine learning for image-based fruit quality assessment

Authors

  • Babakulov Bekzod Mamatkulovich Jizzakh branch of the National University of Uzbekistan
  • Turapova Shoxsanam Xolmurod Qizi Teacher of the Department of Sports Teaching Methodology, Faculty of Physical Culture, Jizzakh State Pedagogical University
  • Turdikulova Ozoda Mamatkul Qizi Teacher of the special school of Zarbdar district of Jizzakh region
  • Xudoyqulov Diyorbek Shakar O‘G‘Li Jizzakh branch of the National University of Uzbekistan

Keywords:

fruit quality assessment, machine learning, image-based

Abstract

Fruit quality assessment is a crucial task in the fruit industry, traditionally done by human visual inspection. However, this process is subjective and time-consuming. This article proposes a simplified machine-learning approach for image-based fruit quality assessment. Our approach includes data collection, feature extraction using a pre-trained convolutional neural network, and classification using a support vector machine. We achieved an accuracy of 91%, precision of 92%, recall of 90%, and F1-score of 91%. Our approach can be applied to other fruits and integrated into automated fruit sorting systems, reducing the need for human inspection and improving the efficiency of fruit quality assessment.

Downloads

Published

2023-04-17

How to Cite

Babakulov Bekzod Mamatkulovich, Turapova Shoxsanam Xolmurod Qizi, Turdikulova Ozoda Mamatkul Qizi, & Xudoyqulov Diyorbek Shakar O‘G‘Li. (2023). Simplified machine learning for image-based fruit quality assessment. Eurasian Journal of Research, Development and Innovation, 19, 8–12. Retrieved from https://geniusjournals.org/index.php/ejrdi/article/view/3952

Issue

Section

Articles