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    Corn seed materials of different quality were imaged, and a method for defect detection was developed based on a watershed algorithm combined with a two-pathway convolutional neural network (CNN) model. In this study, RGB and near-infrared (NIR) images were acquired with a multispectral camera to train the model, which was proved to be effective in identifying defective seeds and defect-free seeds, with an averaged accuracy of 95.63%, an averaged recall rate of 95.29%, and an F1 (harmonic average evaluation) of 95.46%. Our proposed method was superior to the traditional method that employs a one-pathway CNN with 3-channel RGB images. At the same time, the influence of different parameter settings on the model training was studied. Finally, the application of the object detection method in corn seed defect detection, which may provide an effective tool for high-throughput quality control of corn seeds, was discussed. Copyright © 2022 Wang, Liu, Zhang, Wang and Fan.

    Citation

    Linbai Wang, Jingyan Liu, Jun Zhang, Jing Wang, Xiaofei Fan. Corn Seed Defect Detection Based on Watershed Algorithm and Two-Pathway Convolutional Neural Networks. Frontiers in plant science. 2022;13:730190


    PMID: 35283875

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