In order to apply the recent successes of machine learning and automated plant phenotyping on a large scale using agricultural robotics, efficient and general algorithms must be designed to intelligently split crop fields into small, yet actionable, portions that can then be processed by more complex algorithms. In this paper, we notice a similarity between the current state-of-the-art for separating corn plants and a commonly used density-based clustering algorithm, Quickshift. Exploiting this similarity we propose a number of novel, application-specific algorithms with the goal of producing a general and scalable field segmentation algorithm. The novel algorithms proposed in this work are shown to produce quantitatively better results than the current state-of-the-art while being less sensitive to input parameters and maintaining the same algorithmic time complexity. When incorporated into field-scale phenotyping systems, the proposed algorithms should work as a drop-in replacement that can greatly improve the accuracy of results while ensuring that performance and scalability remain undiminished.
翻译:为了应用最近利用农业机器人大规模进行机器学习和自动化植物造型的成功经验,必须设计高效和通用算法,将作物田明智地分为小的、但又可操作的部分,然后由更复杂的算法处理。在本文中,我们注意到目前分离玉米作物的先进工艺与通常使用的基于密度的集群算法(Quicktreft)之间的相似之处。利用这种相似性,我们提出了若干新的、针对具体应用的算法,目的是产生一种通用的、可伸缩的场分割算法。这项工作中提议的新算法在数量上优于目前的先进算法,同时对输入参数不那么敏感,并保持同样的算法时间复杂性。在纳入实地规模的算法系统时,拟议的算法应作为可大大提高结果的准确性,同时确保性能和伸缩性保持不减损性。