Convolutional neural network-support vector machine-based approach for identification of wheat hybrids

被引:0
|
作者
Mesut Ersin Sonmez
Kadir Sabanci
Nevzat Aydin
机构
[1] Karamanoğlu Mehmetbey University,Department of Bioengineering
[2] Karamanoğlu Mehmetbey University,Department of Electrical
来源
关键词
Wheat hybrid selection; MobileNetv2; GoogleNet; SVM classifier;
D O I
暂无
中图分类号
学科分类号
摘要
Selecting wheat hybrids is vital for enhancing crop yield, adapting to changing climates, and ensuring food security. These hybrids align with market demands and sustainable farming practices, contributing to efficient crop management. Traditional methods for wheat hybrid selection, such as molecular techniques, are costly and time-consuming, and are prone to human error. However, advancements in artificial intelligence and machine learning offer non-destructive, objective, and more efficient solutions. This study is explored the classification of wheat varieties and hybrids using two deep learning models, MobileNetv2 and GoogleNet. These models are achieved impressive classification accuracy, with MobileNetv2 reaching 99.26% and GoogleNet achieving 97.41%. In the second scenario, the deep features obtained from these models are classified with Support Vector Machine (SVM). In the classification made with the MobileNetv2-SVM hybrid model, an accuracy of 99.91% is achieved. This study is provided rapid and accurate wheat variety and hybrid identification method, as well as contributing to breeding programs and crop management.
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页码:1353 / 1362
页数:9
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