使用Yolov5和Python进行高分辨率RGB无人机图像下的玉米种植质量评估

Lucas Casuccio, André Kotze
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引用次数: 2

摘要

摘要在精准农业中,作物行距均匀是最大限度提高产量的一个主要问题,研究表明,这种间距均匀性的变化对生产潜力有不利影响。这种不正常情况需要尽早和尽可能有效地加以评价,以促进有效的决策。传统上,幼苗间距的变化是在现场人工采样的,但是最近的技术发展使这一过程的细化、规模化和自动化成为可能。利用机器学习(ML)目标检测技术,可以在无人机(UAV)获取的高分辨率RGB(红绿蓝)图像中检测植物,并对结果进行处理和几何分析后,可以获得行内植物距离变异性的测量结果。该技术优于传统方法,因为它可以在更短的时间内进行更多的区域采样,并且结果更具代表性和客观性。其主要优点是速度、准确性和降低成本。这项工作旨在证明在任意数量的图像中自动评估播种质量的可行性,使用ML对象检测和Shapely Python库进行几何分析。该原型模型在同一块田的测试数据中可以检测出99.35%的玉米植株,但也检测出1.89%的误报。在测试用例中,我们的几何分析算法在寻找种植行方向和种植间线方面显示出鲁棒性。结果是每个样本图像计算的变异系数(CV),可以在地理上可视化以支持决策。
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Corn planting quality assessment in very high-resolution RGB UAV imagery using Yolov5 and Python
Abstract. Uniform plant spacing along crop rows is a primary concern in maximising yield in precision agriculture, and research has shown that variation in this spacing uniformity has a detrimental effect on productive potential. This irregularity needs to be evaluated as early and efficiently as possible to facilitate effective decision-making. Traditionally, variation in seedling spacing is sampled manually on site, however recent technological developments have made it possible to refine, scale and automate this process. Using machine-learning (ML) object detection techniques, plants can be detected in very high-resolution RGB (redgreen-blue) imagery acquired by an unmanned aerial vehicle (UAV), and after processing and geometric analysis of the results a measurement of the variability in intra-row plant distances can be obtained. This proposed technique is superior to traditional methods since the sampling can be made over more area in less time, and the results are more representative and objective. The main benefits are speed, accuracy and cost reduction. This work aims to demonstrate the feasibility of automatically assessing sowing quality in any number of images, using ML object detection and the Shapely Python library for geometrical analysis. The prototype model can detect 99.35% of corn plants in test data from the same field, but also detects 1.89% false positives. Our geometric analysis algorithm has been shown to be robust in finding planting rows orientation and interplant lines in test cases. The result is a coefficient of variation (CV) calculated per sample image, which can be visualised geographically to support decision-making.
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