Plant-parasitic nematodes cause various diseases that can be fatal to the infected plants.It causes losses to the agricultural industry,such as crop failure and poor crop quality.Developing an accurate nematode classi...Plant-parasitic nematodes cause various diseases that can be fatal to the infected plants.It causes losses to the agricultural industry,such as crop failure and poor crop quality.Developing an accurate nematode classification system is vital for pest identification and control.Deep learning classification techniques can help speed up Nematode identification as it can perform tasks directly from images.In the present study,four state-of-the-art deep learning models(ResNet101v2,CoAtNet-0,Effi-cientNetV2B0,and EfficientNetV2M)were evaluated in plantparasitic nematode classification from microscopic image.The models were trained using a combination of three different optimizers(Adam,SGD,dan RMSProp)and several data augmentation with image transformations,such as image flip,blurring,noise addition,brightness,and contrast adjustment.The performance of the trained models was varied.Regarding test accuracy,EfficientNetV2B0 and EfficientNetV2M using RMSProp and brightness augmentation give the best result of 97.94%However,the overall performance of EfficientNetV2M was superior,with 98.66%mean class accuracy,97.99%F1 score,98.26%average precision,and 97.94%average recall.展开更多
文摘Plant-parasitic nematodes cause various diseases that can be fatal to the infected plants.It causes losses to the agricultural industry,such as crop failure and poor crop quality.Developing an accurate nematode classification system is vital for pest identification and control.Deep learning classification techniques can help speed up Nematode identification as it can perform tasks directly from images.In the present study,four state-of-the-art deep learning models(ResNet101v2,CoAtNet-0,Effi-cientNetV2B0,and EfficientNetV2M)were evaluated in plantparasitic nematode classification from microscopic image.The models were trained using a combination of three different optimizers(Adam,SGD,dan RMSProp)and several data augmentation with image transformations,such as image flip,blurring,noise addition,brightness,and contrast adjustment.The performance of the trained models was varied.Regarding test accuracy,EfficientNetV2B0 and EfficientNetV2M using RMSProp and brightness augmentation give the best result of 97.94%However,the overall performance of EfficientNetV2M was superior,with 98.66%mean class accuracy,97.99%F1 score,98.26%average precision,and 97.94%average recall.