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A METHOD TO QUANTIFY WEED DISTRIBUTION FOR RELATING TO PATCH SPRAYING SYSTEMS

机译:与杂草喷洒系统有关的杂草分布的量化方法

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摘要

A method of processing weed maps to quantify the spatial distribution of weeds in a field was developed using distance transform image analysis. Distance transform analysis involved the calculation of the distance of every non-weed pixel from the nearest weed pixel or vice versa. An exponential association function was fitted to the cumulative distance distribution curve describing the distance-transformed image histogram, and parameters were used to group fields with similar weed distribution patterns. Nine significantly different (p < 0.001) classes of weed map were established. Those with large weed patches were evaluated as being most suitable for patch spraying, but a secondary analysis using image dilation and erosion indicated that fields with small, fragmented weed patches could also benefit from patch spraying by up to 30% reduction in wasted chemical In conjunction with knowledge of sprayer properties and costs, sprayer selection can now be based on machine performance, operational costs, and the type of weed pattern, to give the most appropriate performance for a specific field or farm. The method was developed using maps of grass weeds in cereal fields, but It could be used for any patchy weed problem. It could also be used to specify sprayer design criteria or applied to quantification of field spatial patterns for other precision agriculture applications.
机译:利用距离变换图像分析技术开发了一种处理杂草图以量化田间杂草空间分布的方法。距离变换分析涉及计算每个非杂草像素到最近的杂草像素的距离,反之亦然。将指数关联函数拟合到描述距离转换的图像直方图的累积距离分布曲线,并使用参数对具有相似杂草分布模式的田野进行分组。建立了九种显着不同(p <0.001)的杂草图类。杂草斑块较大的那些被评估为最适合斑块喷雾,但使用图像膨胀和腐蚀的二次分析表明,杂草斑块较小,破碎的田地也可从斑块喷雾中受益,最多可减少30%的化学药品浪费。了解喷雾器的特性和成本后,现在可以根据机器性能,运行成本和杂草类型的类型来选择喷雾器,从而为特定的田地或农场提供最合适的性能。该方法是使用谷物田中的杂草图开发的,但可用于解决任何杂草问题。它也可以用于指定喷雾器设计标准,或用于其他精确农业应用的田间空间格局量化。

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