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Incorporating statistical strategy into image analysis to estimate effects of steam and allyl isocyanate on weed control

机译:将统计策略纳入图像分析,以评估蒸汽和异氰酸烯丙酯对防除杂草的影响

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摘要

Weeds are the major limitation to efficient crop production, and effective weed management is necessary to prevent yield losses due to crop-weed competition. Assessments of the relative efficacy of weed control treatments by traditional counting methods is labor intensive and expensive. More efficient methods are needed for weed control assessments. There is extensive literature on advanced techniques of image analysis for weed recognition, identification, classification, and leaf area, but there is limited information on statistical methods for hypothesis testing when data are obtained by image analysis (RGB decimal code). A traditional multiple comparison test, such as the Dunnett-Tukey-Kramer (DTK) test, is not an optimal statistical strategy for the image analysis because it does not fully utilize information contained in RGB decimal code. In this article, a bootstrap method and a Poisson model are considered to incorporate RGB decimal codes and pixels for comparing multiple treatments on weed control. These statistical methods can also estimate interpretable parameters such as the relative proportion of weed coverage and weed densities. The simulation studies showed that the bootstrap method and the Poisson model are more powerful than the DTK test for a fixed significance level. Using these statistical methods, three soil disinfestation treatments, steam, allyl-isothiocyanate (AITC), and control, were compared. Steam was found to be significantly more effective than AITC, a difference which could not be detected by the DTK test. Our study demonstrates that an appropriate statistical method can leverage statistical power even with a simple RGB index.
机译:杂草是作物高效生产的主要限制因素,有效的杂草管理对于防止作物杂草竞争导致的产量损失是必要的。通过传统的计数方法评估杂草防治方法的相对功效是劳动密集型且昂贵的。杂草控制评估需要更有效的方法。关于用于杂草识别,识别,分类和叶面积的先进图像分析技术,已有大量文献,但是当通过图像分析(RGB十进制代码)获得数据时,用于假设检验的统计方法的信息有限。传统的多重比较测试(例如Dunnett-Tukey-Kramer(DTK)测试)不是图像分析的最佳统计策略,因为它不能完全利用RGB十进制代码中包含的信息。在本文中,引导程序方法和Poisson模型被认为结合了RGB十进制代码和像素,以比较杂草控制的多种处理方式。这些统计方法还可以估算可解释的参数,例如杂草覆盖率和杂草密度的相对比例。仿真研究表明,对于固定的显着性水平,自举方法和泊松模型比DTK检验更强大。使用这些统计方法,比较了三种土壤除害处理方法:蒸汽,异硫氰酸烯丙酯(AITC)和对照。发现蒸汽比AITC有效得多,DTK测试无法检测到这种差异。我们的研究表明,即使使用简单的RGB索引,合适的统计方法也可以利用统计能力。

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