Abu Itohan-Osa, Szantoi Zoltan, Brink Andreas, Robuchon Marine, Thiel Michael
Julius-Maximilians-University of Würzburg, Institute for Geography and Geology, Department of Remote Sensing, Oswald-Külpe-Weg 86, 97074 Würzburg, Germany.
European Commission, Joint Research Centre, 20127 Ispra, Italy.
Ecol Indic. 2021 Oct;129:107863. doi: 10.1016/j.ecolind.2021.107863.
Côte d'Ivoire and Ghana are the largest producers of cocoa in the world. In recent decades the cultivation of this crop has led to the loss of vast tracts of forest areas in both countries. Efficient and accurate methods for remotely identifying cocoa plantations are essential to the implementation of sustainable cocoa practices and for the periodic and effective monitoring of forests. In this study, a method for cocoa plantation identification was developed based on a multi-temporal stack of Sentinel-1 and Sentinel-2 images and a multi-feature Random Forest (RF) algorithm. The Normalized Difference Vegetation Index (NDVI) and second-order texture features were assessed for their importance in an RF classification, and their optimal combination was used as input variables for the RF model to identify cocoa plantations in both countries. The RF model-based cocoa map achieved 82.89% producer's and 62.22% user's accuracy, detecting 3.69 million hectares (Mha) and 2.15 Mha of cocoa plantations for Côte d'Ivoire and Ghana, respectively. The results demonstrate that a combination of an RF model and multi-feature classification can distinguish cocoa plantations from other land cover/use, effectively reducing feature dimensions and improving classification efficiency. The results also highlight that cocoa farms largely encroach into protected areas (PAs), as 20% of the detected cocoa plantation area is located in PAs and almost 70% of the PAs in the study area house cocoa plantations.
科特迪瓦和加纳是世界上最大的可可生产国。在最近几十年里,这种作物的种植导致了这两个国家大片森林地区的丧失。高效且准确的远程识别可可种植园的方法对于实施可持续可可种植实践以及对森林进行定期有效监测至关重要。在本研究中,基于哨兵 - 1和哨兵 - 2图像的多时相堆栈以及多特征随机森林(RF)算法,开发了一种可可种植园识别方法。评估了归一化植被指数(NDVI)和二阶纹理特征在RF分类中的重要性,并将其最优组合用作RF模型的输入变量,以识别两国的可可种植园。基于RF模型的可可种植园地图生产者精度达到82.89%,用户精度达到62.22%,分别检测到科特迪瓦369万公顷和加纳215万公顷的可可种植园。结果表明,RF模型与多特征分类相结合能够将可可种植园与其他土地覆盖/利用类型区分开来,有效降低特征维度并提高分类效率。结果还突出表明,可可农场大量侵占保护区,因为检测到的可可种植园面积中有20%位于保护区内,且研究区域内近70%的保护区都有可可种植园。