Artigo Acesso aberto Revisado por pares

Maize seeds forecasting with hybrid directional and bi‐directional long short‐term memory models

2023; Wiley; Volume: 12; Issue: 2 Linguagem: Inglês

10.1002/fsn3.3783

ISSN

2048-7177

Autores

Hakan Işık, Şakir Taşdemir, Yavuz Selim Taşpınar, Ramazan Kursun, İlkay Çınar, Ali Yaşar, Elham Tahsin Yasin, Murat Köklü,

Tópico(s)

Currency Recognition and Detection

Resumo

The purity of the seeds is one of the important factors that increase the yield. For this reason, the classification of maize cultivars constitutes a significant problem. Within the scope of this study, six different classification models were designed to solve this problem. A special dataset was created to be used in the models designed for the study. The dataset contains a total of 14,469 images in four classes. Images belong to four different maize types, BT6470, CALIPOS, ES_ARMANDI, and HIVA, taken from the BIOTEK company. AlexNet and ResNet50 architectures, with the transfer learning method, were used in the models created for the image classification. In order to improve the classification success, LSTM (Directional Long Short-Term Memory) and BiLSTM (Bi-directional Long Short-Term Memory) algorithms and AlexNet and ResNet50 architectures were hybridized. As a result of the classifications, the highest classification success was obtained from the ResNet50+BiLSTM model with 98.10%.

Referência(s)