利用航空图像检测甘蔗生产中的弯曲作物行和失败

Sumit Dhariwal, Avani Sharma
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引用次数: 1

摘要

由于对制糖和酒精工业、生物乙醇和生物质生产以及其他制造部门的兴趣,对甘蔗生产的需求不断增加。特别是科学技术的不断进步,优化了农业活动,使甘蔗作物的生产力最大化。从这个意义上说,数字图像处理、计算机视觉技术和机器学习算法已经支持了以前手工执行且成本很高的自动化过程。在这项研究中,我们提出了一种新的方法来检测作物行和测量作物田间隙。我们的方法对于处理弯曲的作物行也具有鲁棒性,这是一个真正的问题,并且在实际应用中实质上限制了许多解决方案。在小型无人机的支持下,利用真实场景图像数据库对该方法进行了评估。实验测试表明,与人工作图相比,该方法在种植区的相对误差较低,约为1.65%,即使在弯曲作物行不成功的地区也是如此。这意味着我们的建议可以准确地识别和测量作物行,从而实现高精度测量的自动检查。
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Aerial Images were used to Detect Curved-Crop Rows and Failures in Sugarcane Production
Sugarcane production is in increasing demand due to the interest in the sugar and alcohol industry, bioethanol and biomass production, as well as other manufacturing sectors. In particular, the constant scientific and technological advances have optimized agricultural activities and maximized the productivity of sugarcane crops. In this sense, digital image processing, computer vision techniques, and machine learning algorithms have supported automated processes that were previously performed manually and at a high cost. In this study, we present a novel method to detect crop rows and measure gaps in crop fields. Our method is also robust to deal with curved crop rows, which is a real problem and substantially limits numerous solutions in practical applications. The proposed method is evaluated using a database of real scene images that was prepared with the support of a small unmanned aerial vehicle (UAV). Experimental tests showed a low relative error of approximately 1.65% compared to manual mapping in the planting regions, even for regions with failures in the curved crop rows. It means that our proposal can identify and measure crop rows accurately, which enables automated inspections with high precision measurements.
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