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Integrating Early Growth Information to Monitor Winter Wheat Powdery Mildew Using Multi-Temporal Landsat-8 Imagery

机译:利用多时态Landsat-8影像整合早期生长信息以监测冬小麦白粉病

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摘要

Powdery mildew is one of the dominant diseases in winter wheat. The accurate monitoring of powdery mildew is important for crop management and production. Satellite-based remote sensing monitoring has been proven as an efficient tool for regional disease detection and monitoring. However, the information provided by single-date satellite scene is hard to achieve acceptable accuracy for powdery mildew disease, and incorporation of early period contextual information of winter wheat can improve this situation. In this study, a multi-temporal satellite data based powdery mildew detecting approach had been developed for regional disease mapping. Firstly, the Lansat-8 scenes that covered six winter wheat growth periods (expressed in chronological order as periods 1 to 6) were collected to calculate typical vegetation indices (VIs), which include disease water stress index (DSWI), optimized soil adjusted vegetation index (OSAVI), shortwave infrared water stress index (SIWSI), and triangular vegetation index (TVI). A multi-temporal VIs-based k-nearest neighbors (KNN) approach was then developed to produce the regional disease distribution. Meanwhile, a backward stepwise elimination method was used to confirm the optimal multi-temporal combination for KNN monitoring model. A classification and regression tree (CART) and back propagation neural networks (BPNN) approaches were used for comparison and validation of initial results. VIs of all periods except 1 and 3 provided the best multi-temporal data set for winter wheat powdery mildew monitoring. Compared with the traditional single-date (period 6) image, the multi-temporal images based KNN approach provided more disease information during the disease development, and had an accuracy of 84.6%. Meanwhile, the accuracy of the proposed approach had 11.5% and 3.8% higher than the multi-temporal images-based CART and BPNN models’, respectively. These results suggest that the use of satellite images for early critical disease infection periods is essential for improving the accuracy of monitoring models. Additionally, satellite imagery also assists in monitoring powdery mildew in late wheat growth periods.
机译:白粉病是冬小麦的主要病害之一。准确监测白粉病对于作物管理和生产很重要。基于卫星的遥感监测已被证明是用于区域疾病检测和监测的有效工具。然而,单日卫星现场提供的信息很难达到白粉病的可接受的准确度,而结合冬小麦的早期情境信息可以改善这种情况。在这项研究中,已经开发了一种基于多时相卫星数据的白粉病检测方法,用于区域疾病标测。首先,收集涵盖六个冬小麦生育期(按时间顺序从1到6的时间顺序表示)的Lansat-8场景,以计算典型的植被指数(VIs),包括疾病水分胁迫指数(DSWI),优化的土壤调节植被指数(OSAVI),短波红外水分胁迫指数(SIWSI)和三角植被指数(TVI)。然后,开发了一种基于多时相VI的k近邻(KNN)方法,以产生区域疾病分布。同时,采用后向逐步消除法确定了KNN监测模型的最优多时间组合。分类和回归树(CART)和反向传播神经网络(BPNN)方法用于比较和验证初始结果。除1和3以外的所有时期的VI均提供了用于监测冬小麦白粉病的最佳多时间数据集。与传统的单日期(时段6)图像相比,基于多时间图像的KNN方法在疾病发展过程中提供了更多的疾病信息,准确性为84.6%。同时,该方法的准确性分别比基于多时相图像的CART模型和BPNN模型高11.5%和3.8%。这些结果表明,在重大疾病早期感染阶段使用卫星图像对于提高监测模型的准确性至关重要。此外,卫星图像还有助于监测小麦生育后期的白粉病。

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