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Spider Mite Detection and Canopy Component Mapping in Cotton Using Hyperspectral Imagery and Spectral Mixture Analysis

机译:利用高光谱图像和光谱混合分析技术检测棉花中的蜘蛛螨和冠层成分

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Spectral mixture analysis and hyperspectral remote sensing are analytical and hardware tools new to precision agriculture. They can allow detection and identification of various crop stresses and other plant and canopy characteristics through analysisof their spectral signatures. One stressor in cotton, the strawberry spider mite (Tetranychus turkestani U.N.), feeds on plants causing leaf puckering and reddish discoloration in early stages of infestation and leaf drop later. To determine the feasibility of detecting the damage caused by this pest at the field level, AVIRIS imagery was collected from USDA-ARS cotton research fields at Shafter, CA on 4 dates in 1999. Additionally, cotton plants and soil were imaged in situ in 10 nm increments from 450 to 1050 nm with a liquid-crystal tunable-filter camera system. Mite-damaged areas on leaves, healthy leaves, tilled shaded soil, and tilled sunlit soil were chosen as reference endmembers and used in a constrained linear spectral mixture analysis to unmix the AVIRIS data producing fractional abundance maps. The procedure successfully distinguished between adjacent mite-free and mite-infested cotton fields although shading due to sun angle differences between dates was a complicating factor. The resulting healthy plant, soil, mite-damaged, and shade fraction maps showed the distribution and relative abundance of these endmembers in the fields. These hardware and software technologies can identify the position, spatial extent, and severity of crop stresses for use in precision agriculture.
机译:光谱混合分析和高光谱遥感是精密农业中的分析和硬件工具。它们可以通过分析其光谱特征来检测和识别各种农作物胁迫以及其他植物和冠层特征。棉花中的一种胁迫物,草莓红蜘蛛(Tetranychus turkestani U.N.)以植物为食,在侵染的早期阶段引起叶片起皱和变色,随后叶片掉落。为了确定在田间检测这种害虫造成的损害的可行性,1999年4月,从位于美国加利福尼亚州Shafter的USDA-ARS棉花研究田采集了AVIRIS影像。此外,还对10株棉花和土壤进行了原位成像使用液晶可调滤镜摄像头系统时,nm从450 nm增加到1050 nm。选择叶片,健康叶片,耕种的阴影土壤和耕种的阳光土壤上的螨虫损坏区域作为参考末端成员,并将其用于约束线性光谱混合分析中,以解开产生分数丰度图的AVIRIS数据。尽管由于日期之间的太阳角度差异而产生的阴影是一个复杂的因素,但该程序已成功地区分了相邻的无螨和侵染螨的棉田。生成的健康植物,土壤,螨虫损坏和阴影分数图显示了这些末端成员在田间的分布和相对丰度。这些硬件和软件技术可以确定用于精准农业的作物胁迫的位置,空间范围和严重程度。

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