CLASSIFICATION OF DATES QUALITY USING DEEP LEARNING TECHNOLOGY BASED ON CAPTURED IMAGES
ElHelew, Waleed; Abo-Bbakr, Dalia; Zayan, Sahar; Muhammad Ahmad Mahmoud Mayhoub;
Abstract
Dates are a common fruit in many Middle Eastern and African
nations and have religious and cultural value. one of the key
elements in judging the quality of dates is sorting according to
their health state. Combining rejected dates with accepted ones
causes significant economic losses in both storage and
exportation. Despite being a crucial stage for obtaining highquality dates and reducing losses, this sorting process is still
conducted using traditional methods. Thus, this study aims to
classify date fruit quality (accepted or rejected) with machine
learning technology to reduce cost, time, and improve the quality
of final product. In this study, several Convolutional Neural
Network architectures (Inception-v3, Inception-ResNet-v2,
VGG19) were used to classify three varieties of date fruit
(Mejdool, Saiedi, El-Wadi). These varieties were classified into
accepted and rejected samples to build the dataset im-ages. An
Arduino Automatic mobile camera shutter controller captured the
dataset images. In addition to the Kaggle dataset which was
added to the accepted images. The total dataset consisted of 5,945
images, comprising 3,142 accepted images and 2,803 rejected
images. By comparing the results of different architectures,
Inception-ResNet-v2 demonstrated the best performance,
achieving an accuracy of 98.99% and a loss of 0.0344. Therefore,
it can be concluded that the Inception-ResNet-v2 model could be
utilized to develop a suitable computer vision system, thereby
enhancing the date sorting process and facilitating the packaging
of high-quality dates.
nations and have religious and cultural value. one of the key
elements in judging the quality of dates is sorting according to
their health state. Combining rejected dates with accepted ones
causes significant economic losses in both storage and
exportation. Despite being a crucial stage for obtaining highquality dates and reducing losses, this sorting process is still
conducted using traditional methods. Thus, this study aims to
classify date fruit quality (accepted or rejected) with machine
learning technology to reduce cost, time, and improve the quality
of final product. In this study, several Convolutional Neural
Network architectures (Inception-v3, Inception-ResNet-v2,
VGG19) were used to classify three varieties of date fruit
(Mejdool, Saiedi, El-Wadi). These varieties were classified into
accepted and rejected samples to build the dataset im-ages. An
Arduino Automatic mobile camera shutter controller captured the
dataset images. In addition to the Kaggle dataset which was
added to the accepted images. The total dataset consisted of 5,945
images, comprising 3,142 accepted images and 2,803 rejected
images. By comparing the results of different architectures,
Inception-ResNet-v2 demonstrated the best performance,
achieving an accuracy of 98.99% and a loss of 0.0344. Therefore,
it can be concluded that the Inception-ResNet-v2 model could be
utilized to develop a suitable computer vision system, thereby
enhancing the date sorting process and facilitating the packaging
of high-quality dates.
Other data
| Title | CLASSIFICATION OF DATES QUALITY USING DEEP LEARNING TECHNOLOGY BASED ON CAPTURED IMAGES | Authors | ElHelew, Waleed ; Abo-Bbakr, Dalia; Zayan, Sahar; Muhammad Ahmad Mahmoud Mayhoub | Keywords | AI Techniques; Convolutional Neural Network (CNN); Transfer Learning; Date Fruits Handling; Rejected Fruits. | Issue Date | Jul-2024 | Publisher | Misr Society of Agricultural Engineering (MSAE), Egypt | Journal | Misr Journal of Agricultural Engineering | Volume | 41 | Issue | 3 | Start page | 225 | End page | 242 | ISSN | 2636-3062 | DOI | 10.21608/mjae.2024.286079.1137 |
Attached Files
| File | Description | Size | Format | Existing users please Login |
|---|---|---|---|---|
| MJAE3550261719781200.pdf | Classification of Dates Quality Using Deep Learning Technology Based on Captured Images | 1.05 MB | Adobe PDF | Request a copy |
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