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Utility of Multispectral Imagery for Soybean and Weed Species Differentiation

机译:多光谱影像在大豆和杂草物种分化的应用中的效用

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摘要

An experiment was conducted to determine the utility of multispectral imagery for identifying soybean, bare soil, and six weed species commonly found in Mississippi. Weed species evaluated were hemp sesbania, palmleaf morningglory, pitted morningglory, prickly sida, sicklepod, and smallflower morningglory. Multispectral imagery was analyzed using supervised classification techniques based upon 2-class, 3-class, and 8-class systems. The 2-class system was designed to differentiate bare soil and vegetation. The 3-class system was used to differentiate bare soil, soybean, and weed species. Finally, the 8-class system was designed to differentiate bare soil, soybean, and all weed species independently. Soybean classification accuracies classified as vegetation for the 2-class system were greater than 95, and bare soil classification accuracies were greater than 90. In the 3-class system, soybean classification accuracies were 70 or greater. Classification of soybean decreased slightly in the 3-class system when compared to the 2-class system because of the 3-class system separating soybean plots from in the weed plots, which was not done in the 2-class system. Weed classification accuracies increased as weed density or weeks after emergence (WAE) increased. The greatest weed classification accuracies were obtained once weed species were allowed to grow for 10 wk. Palmleaf morningglory and pitted morningglory classification accuracies were greater than 90 for 10 WAE using the 3-class system. Palmleaf morningglory and pitted morningglory at the highest densities of 6 plants/m(2) produced the highest classification accuracies for the 8-class system once allowed to grow for 10 wk. All other weed species generally produced classification accuracies less than 50, regardless of planting density. Thus, multispectral imagery has the potential for weed detection, especially when being used in a management system when individual weed species differentiation is not essential, as in the 2-class or 3-class system. However, weed detection was not obtained until 8 to 10 WAE, which is unacceptable in production agriculture. Therefore, more refined imagery acquisition with higher spatial and/or spectral resolution and more sophisticated analyses need to be further explored for this technology to be used early-season when it would be most valuable.
机译:进行了一项实验,以确定多光谱影像在识别密西西比州常见的大豆、裸露土壤和六种杂草物种方面的效用。评估的杂草种类有大麻、棕榈叶牵牛花、凹陷牵牛花、多刺西达、镰刀足类和小花牵牛花。使用基于 2 类、3 类和 8 类系统的监督分类技术分析多光谱影像。2 级系统旨在区分裸露的土壤和植被。采用三级系统区分裸土、大豆和杂草种类。最后,设计了8类系统,以独立区分裸土、大豆和所有杂草种类。2类系统植被分类的大豆分类准确率大于95%,裸土分类准确率大于90%。在三级系统中,大豆分类准确率为70%或更高。与2类系统相比,3类系统中的大豆分类略有下降,因为3类系统将大豆地块与杂草地块分开,而在2类系统中没有这样做。杂草分类精度随着杂草密度或出苗后周数 (WAE) 的增加而增加。一旦允许杂草物种生长 10 周,就获得了最大的杂草分类精度。使用 3 级系统,10 WAE 的棕榈叶牵牛花和凹坑牵牛花分类准确率大于 90%。棕榈叶牵牛花和凹坑牵牛花的最高密度为6株/m(2),一旦允许生长10周,8级系统就产生了最高的分类精度。所有其他杂草种类的分类准确率通常低于50%,无论种植密度如何。因此,多光谱影像具有检测杂草的潜力,特别是当用于不需要区分单个杂草物种的管理系统时,例如在 2 类或 3 类系统中。然而,直到 8 到 10 WAE 才检测到杂草,这在生产农业中是不可接受的。因此,需要进一步探索具有更高空间和/或光谱分辨率的更精细的图像采集以及更复杂的分析,以便该技术在最有价值的季节早期使用。

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