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CLUSTERING ALGORITHM BASED STRAIGHT AND CURVED CROP ROW DETECTION USING COLOR BASED SEGMENTATION

机译:基于彩色分割的基于直链和弯曲作物行检测的聚类算法

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Autonomous navigation of agricultural robot is an essential task in precision agriculture, and success of this task critically depends on accurate detection of crop rows using computer vision methodologies. This is a challenging task due to substantial natural variations in crop row images due to various factors, including, missing crops in parts of a row, high and irregular weed growth between rows, different crop growth stages, different inter-crop spacing, variation in weather condition, and lighting. The processing time of the detection algorithm also needs to be small so that the desired number of image frames from continuous video can be processed in real-time. To cope with all the above mentioned requirements, we propose a crop row detection algorithm consisting of the following three linked stages: (1) color based segmentation for differentiating crop and weed from background, (2) differentiating crop and weed pixels using clustering algorithm and (3) robust line fitting to detect crop rows. We test the proposed algorithm over a wide variety of scenarios and compare its performance against four different types of existing strategies for crop row detection. Experimental results show that the proposed algorithm perform better than the competing algorithms with reasonable accuracy. We also perform additional experiment to test the robustness of the proposed algorithm over different values of the tuning parameters and over different clustering methods, such as, KMeans, MeanShift, Ag-glomerative, and HDBSCAN.
机译:农业机器人的自主导航是精密农业的重要任务,这项任务的成功批判性地取决于使用计算机视觉方法精确地检测作物行。这是一种具有挑战性的任务,由于各种因素,包括各种因素,包括缺少的作物,行,不同作物生长阶段,不同的作物生长阶段,不同群落间距,变异天气状况,照明。检测算法的处理时间也需要很小,使得可以实时处理来自连续视频的所需数量的图像帧。为了应对所有上述要求,我们提出了一种由以下三个链接阶段组成的裁剪行检测算法:(1)基于颜色的分段,用于区分作物和杂草的背景,(2)使用聚类算法区分作物和杂草像素的差异(3)鲁棒线配合以检测裁剪行。我们在各种场景中测试所提出的算法,并将其对四种不同类型的现有策略进行比较,用于裁剪行检测。实验结果表明,该算法比竞争算法更好,具有合理的准确性。我们还执行额外的实验,以测试所提出的算法在调整参数的不同价值和不同的聚类方法中的稳健性,例如kmeans,意思,ag-glomerative和hdbscan。

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