Rice bacterial leaf streak (BLS) is a serious disease in rice leaves and can seriously affect the quality and quantity of rice growth. Automatic estimation of disease severity is a crucial requirement in agricultural production. To address this, a new method (termed BLSNet) was proposed for rice and BLS leaf lesion recognition and segmentation based on a UNet network in semantic segmentation. An attention mechanism and multi-scale extraction integration were used in BLSNet to improve the accuracy of lesion segmentation. We compared the performance of the proposed network with that of DeepLabv3+ and UNet as benchmark models used in semantic segmentation. It was found that the proposed BLSNet model demonstrated higher segmentation and class accuracy. A preliminary investigation of BLS disease severity estimation was carried out based on our BLS segmentation results, and it was found that the proposed BLSNet method has strong potential to be a reliable automatic estimator of BLS disease severity.
CITATION STYLE
Chen, S., Zhang, K., Zhao, Y., Sun, Y., Ban, W., Chen, Y., … Yang, T. (2021). An approach for rice bacterial leaf streak disease segmentation and disease severity estimation. Agriculture (Switzerland), 11(5). https://doi.org/10.3390/agriculture11050420
Mendeley helps you to discover research relevant for your work.