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Edge detection for weed recognition in lawns

机译:草坪上杂草识别的边缘检测

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摘要

The rapid propagation of weeds is a major issue for turfgrass management (both ornamental and sports turf). While pesticides can ensure weed eradication, they pose a risk to human health and the environment. In this context, the early detection of weeds can allow a dramatic reduction in the amount of pesticide required. Here we present the use of edge detection techniques to identify the presence of these invasive plants in ornamental lawns and sports turf. Regarding the former, images from small experimental plots in the facilities of IMIDRA were used while images for the latter were taken on a golf course. Up to 12 different filters for edge detection were tested on the images collected. Aggregation techniques, with a range of cell values, were applied to the results of the three most effective filters (sharpening (I), sharpening (II), and Laplacian) to minimise the number of false positives. After the tests with different cell sizes, two filters were selected for more in-depth analysis. Box plots were selected to define the best cell size and identify the filter with the best performance. The sharpening (I) filter and the aggregation technique with the minimum value and a cell size of 10 offered the best results. Finally, we determined the most appropriate threshold value on the basis of the number of false positives, false negatives, and derived indexes (Precision, Recall, and F1-Score). A threshold of 78 gave the best performance. The results achieved with this methodology differed slightly between ornamental and sports turf.
机译:杂草的快速繁殖是草坪草系管理(观赏和运动草坪)的主要问题。虽然杀虫剂可以确保杂草灭绝,但它们对人类健康和环境构成了风险。在这种情况下,杂草的早期检测可以允许急剧减少所需的农药量。在这里,我们介绍了边缘检测技术,以确定观赏草坪和运动草坪上这些侵入性植物的存在。关于前者,使用IMIDRA的设施中的小实验图的图像,而后者的图像被拍摄于高尔夫球场。在收集的图像上测试最多12个不同的边缘检测过滤器。具有一系列单元值的聚集技术应用于三个最有效的过滤器(锐化(I),锐化(II)和拉普拉斯的结果,以最小化误报的数量。在具有不同电池尺寸的测试之后,选择两个过滤器以进行更深入的分析。选择框图以定义最佳的单元格大小并以最佳性能识别过滤器。锐化(i)滤波器和最小值和10的聚合技术提供了最佳结果。最后,我们基于误报,假否定和派生索引的数量来确定最合适的阈值(精确,召回和F1分数)。 78的阈值给出了最佳性能。通过该方法实现的结果略有不同于观赏和运动草皮之间。

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