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Date
2021-11-09Subject
600 Technology 630 Agriculture Convolutional Neural NetworkZuckerrübeSchadenErntemaschineDeep learningFehlererkennungMetadata
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Aufsatz
Sugar Beet Damage Detection during Harvesting Using Different Convolutional Neural Network Models
Abstract
Mechanical damages of sugar beet during harvesting affects the quality of the final products and sugar yield. The mechanical damage of sugar beet is assessed randomly by operators of harvesters and can depend on the subjective opinion and experience of the operator due to the complexity of the harvester machines. Thus, the main aim of this study was to determine whether a digital two-dimensional imaging system coupled with convolutional neural network (CNN) techniques could be utilized to detect visible mechanical damage in sugar beet during harvesting in a harvester machine. In this research, various detector models based on the CNN, including You Only Look Once (YOLO) v4, region-based fully convolutional network (R-FCN) and faster regions with convolutional neural network features (Faster R-CNN) were developed. Sugar beet image data during harvesting from a harvester in different farming conditions were used for training and validation of the proposed models. The experimental results showed that the YOLO v4 CSPDarknet53 method was able to detect damage in sugar beet with better performance (recall, precision and F1-score of about 92, 94 and 93%, respectively) and higher speed (around 29 frames per second) compared to the other developed CNNs. By means of a CNN-based vision system, it was possible to automatically detect sugar beet damage within the sugar beet harvester machine.
Citation
In: Agriculture Volume 11 / Issue 11 (2021-11-09) eissn:2077-0472Sponsorship
Gefördert durch den Publikationsfonds der Universität KasselCitation
@article{doi:10.17170/kobra-202201045358,
author={Nasirahmadi, Abozar and Wilczek, Ulrike and Hensel, Oliver},
title={Sugar Beet Damage Detection during Harvesting Using Different Convolutional Neural Network Models},
journal={Agriculture},
year={2021}
}
0500 Oax 0501 Text $btxt$2rdacontent 0502 Computermedien $bc$2rdacarrier 1100 2021$n2021 1500 1/eng 2050 ##0##http://hdl.handle.net/123456789/13486 3000 Nasirahmadi, Abozar 3010 Wilczek, Ulrike 3010 Hensel, Oliver 4000 Sugar Beet Damage Detection during Harvesting Using Different Convolutional Neural Network Models / Nasirahmadi, Abozar 4030 4060 Online-Ressource 4085 ##0##=u http://nbn-resolving.de/http://hdl.handle.net/123456789/13486=x R 4204 \$dAufsatz 4170 5550 {{Convolutional Neural Network}} 5550 {{Zuckerrübe}} 5550 {{Schaden}} 5550 {{Erntemaschine}} 5550 {{Deep learning}} 5550 {{Fehlererkennung}} 7136 ##0##http://hdl.handle.net/123456789/13486
2022-01-05T12:32:10Z 2022-01-05T12:32:10Z 2021-11-09 doi:10.17170/kobra-202201045358 http://hdl.handle.net/123456789/13486 Gefördert durch den Publikationsfonds der Universität Kassel eng Namensnennung 4.0 International http://creativecommons.org/licenses/by/4.0/ convolutional neural network damage deep learning harvester sugar beet 600 630 Sugar Beet Damage Detection during Harvesting Using Different Convolutional Neural Network Models Aufsatz Mechanical damages of sugar beet during harvesting affects the quality of the final products and sugar yield. The mechanical damage of sugar beet is assessed randomly by operators of harvesters and can depend on the subjective opinion and experience of the operator due to the complexity of the harvester machines. Thus, the main aim of this study was to determine whether a digital two-dimensional imaging system coupled with convolutional neural network (CNN) techniques could be utilized to detect visible mechanical damage in sugar beet during harvesting in a harvester machine. In this research, various detector models based on the CNN, including You Only Look Once (YOLO) v4, region-based fully convolutional network (R-FCN) and faster regions with convolutional neural network features (Faster R-CNN) were developed. Sugar beet image data during harvesting from a harvester in different farming conditions were used for training and validation of the proposed models. The experimental results showed that the YOLO v4 CSPDarknet53 method was able to detect damage in sugar beet with better performance (recall, precision and F1-score of about 92, 94 and 93%, respectively) and higher speed (around 29 frames per second) compared to the other developed CNNs. By means of a CNN-based vision system, it was possible to automatically detect sugar beet damage within the sugar beet harvester machine. open access Nasirahmadi, Abozar Wilczek, Ulrike Hensel, Oliver doi:10.3390/agriculture11111111 Convolutional Neural Network Zuckerrübe Schaden Erntemaschine Deep learning Fehlererkennung publishedVersion eissn:2077-0472 Issue 11 Agriculture Volume 11 false 1111
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