Banana quality classification using lightweight CNN model with microservice integration system
รหัสดีโอไอ
Creator 1. Vasutorn Chaowalittawin
2. Woranidtha Krungseanmuang
3. Posathip Sathaporn
4. Fuka Morita
5. Tuanjai Archevapanich
6. Boonchana Purahong
Title Banana quality classification using lightweight CNN model with microservice integration system
Publisher Faculty of Engineering, Khon Kaen University
Publication Year 2568
Journal Title Engineering and Applied Science Research
Journal Vol. 52
Journal No. 4
Page no. 430-438
Keyword Banana, CNN, CST-MobileNetV2, Lightweight deep learning model, Microservice architecture
URL Website https://ph01.tci-thaijo.org/index.php/easr/index
Website title Engineering and Applied Science Research
ISSN 2539-6161
Abstract Banana sorting has been performed manually, which often leads to human error due to the high volume and diverse characteristics involved. This paper presents a banana quality classification system using ConsolutechMobileNetV2 (CST-MobileNetV2) to classify banana ripeness into four categories unripe, ripe, overripe, and rotten. A lightweight deep learning model is proposed and integrated with a uniquely designed microservice system to optimize performance while minimizing computational demands. A publicly available dataset containing 13,478 images was used, and the data split into 56% for training, 14% for validation, and 30% for testing. Image normalization and augmentation techniques were applied to enhance the model's robustness. The model's performance was evaluated using a confusion matrix, achieving 98% precision, recall, and F1-score. The proposed model was compared with other deep learning models to benchmark its performance and deployed in different operating systems to evaluate its flexibility and capabilities. The LINE platform was employed as the user interface, enabling practical interaction with users. The system also demonstrated an average response time of 9.25 seconds per image, ensuring efficient processing, delivers high accuracy and scalability making it a practical and efficient solution for automated banana quality classification.
Engineering and Applied Science Research

บรรณานุกรม

EndNote

APA

Chicago

MLA

ดิจิตอลไฟล์

Digital File
DOI Smart-Search
สวัสดีค่ะ ยินดีให้บริการสอบถาม และสืบค้นข้อมูลตัวระบุวัตถุดิจิทัล (ดีโอไอ) สำนักการวิจัยแห่งชาติ (วช.) ค่ะ