DragonFruitQualityNet: A Lightweight Convolutional Neural Network for Real-Time Dragon Fruit Quality Inspection on Mobile Devices
Md Zahurul Haquea, Yeahyea Sarker, Muhammed Farhan Sadique Mahi, Syed Jubayer Jaman, Md Robiul Islam

TL;DR
DragonFruitQualityNet is a lightweight CNN designed for real-time dragon fruit quality inspection on mobile devices, achieving high accuracy and facilitating practical, on-field agricultural assessments.
Contribution
We developed a novel lightweight CNN model optimized for mobile devices, enabling real-time dragon fruit quality classification with high accuracy and practical application in agriculture.
Findings
Achieved 93.98% accuracy in fruit classification
Outperformed existing methods in quality assessment
Embedded in a mobile app for on-device inspection
Abstract
Dragon fruit, renowned for its nutritional benefits and economic value, has experienced rising global demand due to its affordability and local availability. As dragon fruit cultivation expands, efficient pre- and post-harvest quality inspection has become essential for improving agricultural productivity and minimizing post-harvest losses. This study presents DragonFruitQualityNet, a lightweight Convolutional Neural Network (CNN) optimized for real-time quality assessment of dragon fruits on mobile devices. We curated a diverse dataset of 13,789 images, integrating self-collected samples with public datasets (dataset from Mendeley Data), and classified them into four categories: fresh, immature, mature, and defective fruits to ensure robust model training. The proposed model achieves an impressive 93.98% accuracy, outperforming existing methods in fruit quality classification. To…
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Taxonomy
TopicsSmart Agriculture and AI · Spectroscopy and Chemometric Analyses · Innovations in Aquaponics and Hydroponics Systems
