Litcius/Paper detail

A System and Method for Fruit Ripeness Prediction Using Transfer Learning and CNN

S. Geerthik, Senthil G. A, K. Jency Oliviya, R. Keerthana

202413 citationsDOI

Abstract

Accurate fruit ripeness prediction is critical for farmers, distributors, and retailers to optimize the food supply chain. Traditional visual inspection methods are subjective, inconsistent, and labor-intensive. This paper proposes a novel system that leverages transfer learning and Convolutional Neural Networks (CNNs) to achieve automated and objective fruit ripeness prediction. Transfer learning significantly reduces training time by utilizing a pre-trained CNN model, which has already learned valuable features from a massive image dataset. CNNs, particularly adept at image recognition, automatically extract relevant features like color, texture, and shapes from fruit images. These features allow the CNN to learn the telltale signs of ripeness and accurately predict the maturity of new fruit images. The proposed system offers several advantages: improved accuracy compared to subjective human assessments, reduced reliance on expert labor, and scalability to handle different fruit types by fine-tuning the model with specific fruit image datasets. Overall, this system utilizing transfer learning and CNNs presents a promising approach for efficient, objective, and cost-effective fruit ripeness prediction in the food supply chain.

Topics & Concepts

RipenessTransfer of learningComputer scienceArtificial intelligenceMachine learningChemistryFood scienceRipeningSmart Agriculture and AISpectroscopy and Chemometric Analyses
A System and Method for Fruit Ripeness Prediction Using Transfer Learning and CNN | Litcius