Wheat spike blast image classification using deep convolutional neural networks
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<p>Wheat blast is a threat to global wheat production, and limited blast-resistant cultivars are available. Current estimations of wheat spike blast severity rely on human assessments, but this technique can have limitations.</p>
<p>Reliable visual disease estimations paired with RGB images of wheat spike blast can be used to train deep convolutional neural networks (CNN) for disease severity classification.</p>
<p>Inter-rater agreement analysis was used to measure the reliability of who collected and classified data obtained under controlled conditions. We then trained CNN models to classify wheat spike blast severity.</p>
<p>Inter-rater agreement analysis showed high accuracy and low bias before model training. Results showed that the CNN models trained provide a promising approach to classify images in the three wheat blast severity categories. However, the models trained without maturing and matured spikes images showed the highest precision, recall, and F1 score when classifying the images. The high classification accuracy could serve as a basis to facilitate wheat spike blast phenotyping in the future.&nbsp;</p>
<p>The provided datasets and trained models are an important contribution to the scientific community.</p>
提供机构:
Purdue University Research Repository
创建时间:
2021-04-28



