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Identifying Pine Wood Nematode Disease Using UAV Images and Deep Learning Algorithms

机译:使用UAV图像和深度学习算法识别松木线虫疾病

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摘要

Pine nematode is a highly contagious disease that causes great damage to the world’s pine forest resources. Timely and accurate identification of pine nematode disease can help to control it. At present, there are few research on pine nematode disease identification, and it is difficult to accurately identify and locate nematode disease in a single pine by existing methods. This paper proposes a new network, SCANet (spatial-context-attention network), to identify pine nematode disease based on unmanned aerial vehicle (UAV) multi-spectral remote sensing images. In this method, a spatial information retention module is designed to reduce the loss of spatial information; it preserves the shallow features of pine nematode disease and expands the receptive field to enhance the extraction of deep features through a context information module. SCANet reached an overall accuracy of 79% and a precision and recall of around 0.86, and 0.91, respectively. In addition, 55 disease points among 59 known disease points were identified, which is better than other methods (DeepLab V3+, DenseNet, and HRNet). This paper presents a fast, precise, and practical method for identifying nematode disease and provides reliable technical support for the surveillance and control of pine wood nematode disease.
机译:Pine Nematode是一种高度传染性的疾病,对世界的松树林资源造成了巨大损害。及时,准确地识别松线虫病可以帮助控制它。目前,少数关于松线虫疾病鉴定的研究,并且难以通过现有方法在单一的杉木中准确地识别和定位线虫病。本文提出了一种新的网络,Scanet(空间 - 注意网络),以识别基于无人的空中车辆(UAV)多光谱遥感图像的松线虫病。在该方法中,空间信息保留模块旨在降低空间信息的损失;它保留了松线虫病的浅发,并扩大了通过上下文信息模块提升深度特征的提取。 Scanet分别达到79%的总精度,精度和召回约为0.86和0.91。此外,鉴定了59个已知疾病点中的55个疾病点,这比其他方法更好(Deeplab V3 +,Densenet和Hrnet)。本文介绍了鉴定线虫疾病的快速,精确和实用的方法,为松木线虫病的监测和控制提供可靠的技术支持。

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