Moussaid Abdellatif, Fkihi Sanaa El, Zennayi Yahya
Information Retrieval and Data Analytics Laboratory, ENSIAS, Mohammed V University in Rabat, Rabat 10100, Morocco.
Embedded Systems and Artificial Intelligence Department, Moroccan Foundation for Advanced Science Innovation and Research (MAScIR), Rabat 10100, Morocco.
J Imaging. 2021 Nov 17;7(11):241. doi: 10.3390/jimaging7110241.
Smart agriculture is a new concept that combines agriculture and new technologies to improve the yield's quality and quantity as well as facilitate many tasks for farmers in managing orchards. An essential factor in smart agriculture is tree crown segmentation, which helps farmers automatically monitor their orchards and get information about each tree. However, one of the main problems, in this case, is when the trees are close to each other, which means that it would be difficult for the algorithm to delineate the crowns correctly. This paper used satellite images and machine learning algorithms to segment and classify trees in overlapping orchards. The data used are images from the Moroccan Mohammed VI satellite, and the study region is the OUARGHA citrus orchard located in Morocco. Our approach starts by segmenting the rows inside the parcel and finding all the trees there, getting their canopies, and classifying them by size. In general, the model inputs the parcel's image and other field measurements to classify the trees into three classes: missing/weak, normal, or big. Finally, the results are visualized in a map containing all the trees with their classes. For the results, we obtained a score of 0.93 F-measure in rows segmentation. Additionally, several field comparisons were performed to validate the classification, dozens of trees were compared and the results were very good. This paper aims to help farmers to quickly and automatically classify trees by crown size, even if there are overlapping orchards, in order to easily monitor each tree's health and understand the tree's distribution in the field.
智慧农业是一个将农业与新技术相结合的新概念,旨在提高产量的质量和数量,并为果农管理果园的诸多任务提供便利。智慧农业的一个关键要素是树冠分割,它有助于果农自动监测果园并获取每棵树的相关信息。然而,在这种情况下,一个主要问题是树木彼此靠近时,这意味着算法难以正确勾勒树冠。本文利用卫星图像和机器学习算法对重叠果园中的树木进行分割和分类。所使用的数据是来自摩洛哥穆罕默德六世卫星的图像,研究区域是位于摩洛哥的瓦尔加柑橘园。我们的方法首先是分割地块内的行并找到那里的所有树木,获取它们的树冠,并按大小对其进行分类。一般来说,该模型输入地块图像和其他田间测量数据,将树木分为三类:缺失/弱小、正常或大型。最后,结果在一张包含所有树木及其类别的地图上可视化。在结果方面,我们在行分割中获得了0.93的F值分数。此外,还进行了几次实地比较以验证分类,比较了几十棵树,结果非常好。本文旨在帮助果农即使在果园重叠的情况下也能快速自动地按树冠大小对树木进行分类,以便轻松监测每棵树的健康状况并了解树木在田间的分布情况。