Indonesian Journal of Electrical Engineering and Computer Science
Vol 31, No 3: September 2023

Identification of mango variety using near infrared spectroscopy

Mukesh Kumar Tripathi (Vardhaman College of Engineering)
Praveen Kumar Reddy (Guru Nanak Dev Engineering College)
M. Neelakantappa (Vasavi college of Engineering)
Chetan Vikram Andhare (Government College Of Engineering , Yavatmal)
Shivendra Shivendra (D.K College)



Article Info

Publish Date
01 Sep 2023

Abstract

The structure of the proposed framework is separated into three stages: i) foundation deduction, ii) component extraction, and iii) preparing and characterization. At first, K-implies grouping methods were carried out for foundation de- duction. The second step applies color, texture, and shape-based feature extraction methods. Finally, a “merging” fusion feature is analyzed with a C4.5, support vector machine (SVM), and K-nearest neighbors (KNN). Overall, the recognition system produces an adequate performance accuracy with 97.89, 94.60, and 90.25 percent values by utilizing C4.5, SVM, and KNN, respectively. The experimentation points out that the proposed fusion scheme can significantly support accurately recognizing various fruits and vegetables.

Copyrights © 2023