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Assessment of an inter-row weed infestation rate on simulated agronomic images

机译:在模拟农艺图像上评估行间杂草侵染率

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摘要

We present a robust and automatic method for evaluating the accuracy of Crop/Weed discrimination algorithms. The proposed method is based on simulated agronomic images and a Crop/inter-row Weed discrimination algorithm can be divided into the two following steps. Firstly a crop row detection (Hough transform) is performed from the identification of the crop line vanishing point taking the opportunity of the perspective geometry of the scene. Afterwards, the discrimination between crop and weeds is done by a region-based segmentation method using a blob-colouring analysis and an inter-row Weed Infestation Rate (WIR) can be estimated. We propose to test and validate the robustness of this method on simulated images with perspective.To simulate photos taken from a virtual camera, a pinhole camera model is used and the field is modelled according to the spatial periodicity distribution of crop seedlings and the spatial distribution of weed species based on stochastic processes (Poisson process, Neyman-Scott aggregative process or a mixture of both).For each simulated image, the comparison between the initial inter-row WIR and the detected inter-row WIR informs us about the errors made by the algorithm. A pixel classification between the two classes Crop and Weed - is performed in order to identify misclassification errors. This comparison demonstrates an accuracy of better than 85% is possible for inter-row weed detection.
机译:我们提出了一种鲁棒和自动的方法来评估作物/杂草鉴别算法的准确性。所提出的方法基于模拟的农艺图像,并且作物/行间杂草鉴别算法可以分为以下两个步骤。首先,利用场景透视几何的机会,根据对作物线消失点的识别来执行作物行检测(霍夫变换)。然后,使用斑点着色分析通过基于区域的分割方法对作物和杂草进行区分,并可以估算行间杂草侵染率(WIR)。我们建议使用透视图来测试和验证该方法的鲁棒性。为了模拟从虚拟相机拍摄的照片,使用针孔相机模型,并根据作物幼苗的空间周期性分布和空间分布对场进行建模基于随机过程(泊松过程,内曼-斯科特聚合过程或两者的混合)的杂草物种。对于每个模拟图像,初始行间WIR与检测到的行间WIR之间的比较可告知我们所犯的错误通过算法。为了识别误分类错误,对作物和杂草两类进行了像素分类。该比较表明,行间杂草检测的准确度可能高于85%。

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