A Modular Cnn Framework for Hierarchical Mango Grading and Quality Assessment
Journal
3rd Odisha International Conference on Electrical Power Engineering, Communication and Computing Technology, ODICON 2024
Date Issued
2024
Author(s)
Adhikary, Rahul
Pine, Sandipan
Choudhury, Subhra Jyoti
Pradeep Ghantasala, G S
DOI
http://dx.doi.org/10.1109/ODICON62106.2024.10797503
Abstract
Mango fruits are widely recognized for their diverse applications in the food, beverage, and various industries, making them a global commodity of significance. the escalating demand for premium-quality mangoes highlights the necessity for dependable and efficient grading techniques. Traditional mango grading heavily relies on human expertise, often susceptible to subjectivity, errors, and time-intensive procedures. In this study, we introduce a CNN-based mango grading model to automate and enhance the accuracy ofmango quality assessment. Our proposed model employs CNNs in a modular, sequential approach to extract relevant features from mango images and classify them into distinct quality grades. We utilize a comprehensive dataset of mango images with corresponding quality labels for training and validation. Experimental outcomes underscore the effectiveness of the CNN-based method in accurately grading mangoes, presenting a promising solution to improve efficiency and objectivity in mango grading. In conclusion, the CNN-based mango grading model represents a significant step forward in modernizing and optimizing mango quality assessment processes. the combination of machine learning techniques with image analysis offers a robust solution to address longstanding challenges associated with traditional grading methods. As this technology evolves, it has the potential to revolutionize quality control practices in the food industry. This CNN-based approach outperforms other classifiers for this specific mango grading problem. © 2024 IEEE.
