dc.description.abstract |
In the export industry, ensuring consistent fruit quality is crucial for meeting
international standards, satisfying customer expectations, and minimizing food waste.
This study focuses on the classification of two key fruit quality attributes ripeness (raw
or ripe) and freshness (fresh or rotten). The research examines local varieties of papayas,
mangoes, and bananas, which are significant for export markets. By employing
advanced image classification techniques, the study aims to develop a reliable system
that can support quality control in the export process. A Convolutional Neural Network
(CNN) was used as the primary model for image classification. Additionally, other
machine learning algorithms such as Decision Tree, Random Forest, and K-Nearest
Neighbors (KNN) were evaluated for performance comparison. The dataset comprises
over 10,000 images, sourced from both local markets and online databases, with a
particular focus on local papayas. Two training strategies were implemented one using
a larger, online-only dataset and another combining online data with additional samples
from local markets. The CNN model achieved over 95% accuracy in predicting fruit
freshness using both methods. However, for ripeness prediction, the second approach
integrating local market data produced slightly better results than the online-only
dataset. This underlines the importance of including diverse data to build robust models.
The comparison of different algorithms revealed that CNN consistently outperformed
others, especially in freshness detection. These findings provide actionable insights for
improving quality assurance and operational efficiency in the export industry, helping
reduce food waste and increase customer satisfaction through the adoption of advanced
machine learning techniques. |
en_US |