Identification of haploid and diploid maize seeds using hybrid transformer model
Yayın Bilgileri
Yazarlar
E Dönmez, S Kılıçarslan, C Közkurt, A Diker, FB Demir, A Elen
Tip
Diğer
Sayfalar
0-9
Özet
Increasingly, more effective breeding techniques for new variations are preferred due to population growth and climatic change, particularly the accurate identification of the target variety. Maize haploid breeding technology, which can shorten the reproductive period and improve germplasm, has become the key to new maize breeding. In this study, a method in which deep features and image patches are analyzed together was proposed using a dataset consisting of 3000 different haploid/diploid type maize seed images in total. To achieve this objective, we adopted convolutional neural networks (CNNs) to recognize haploid and diploid maize seeds automatically through a transfer learning approach. More specifically, DenseNet201, ResNet152, ResNetRS50, RegNetX002, EfficientNetV2B0, EfficientB0, EfficientB1, EfficientB2, EfficientB3, EfficientB4, EfficientB5, EfficientB6, and EfficientB7 were applied for this …