Grapevine winter pruning is a complex task, that requires skilled workers to execute it correctly. The complexity of this task is also the reason why it is time consuming. Considering that this operation takes about 80-120 hours/ha to be completed, and therefore is even more crucial in large-size vineyards, an automated system can help to speed up the process. To this end, this paper presents a novel multidisciplinary approach that tackles this challenging task by performing object segmentation on grapevine images, used to create a representative model of the grapevine plants. Second, a set of potential pruning points is generated from this plant representation. We will describe (a) a methodology for data acquisition and annotation, (b) a neural network fine-tuning for grapevine segmentation, (c) an image processing based method for creating the representative model of grapevines, starting from the inferred segmentation and (d) potential pruning points detection and localization, based on the plant model which is a simplification of the grapevine structure. With this approach, we are able to identify a significant set of potential pruning points on the canes, that can be used, with further selection, to derive the final set of the real pruning points.
翻译:Grapevine 冬季剪裁是一项复杂的任务,需要熟练的工人正确执行。 任务的复杂性也是其耗费时间的原因。 考虑到这项操作需要大约80至120小时/公顷的时间才能完成, 因此在大型葡萄园中更为关键, 一个自动化系统可以帮助加快这一过程。 为此, 本文展示了一种新的多学科方法, 通过在葡萄树图像上对葡萄树图像进行物体分割来应对这项具有挑战性的任务, 用于创建葡萄树植物的代表性模型。 其次, 一组潜在的剪切点来自这一植物代表制。 我们将描述 (a) 数据采集和注解的方法, (b) 葡萄树分解的神经网络微调, (c) 一种根据推断分解和(d) 潜在的剪切点检测和本地化方法, 其依据的植物模型是葡萄树结构的简化。 有了这个方法, 我们就可以进一步确定一个巨大的潜在切点的切分集, 并用这个方法来推算所选的根。