Ash dieback (Hymenoscyphus fraxineus) is an introduced fungal disease that is causing the widespread death of ash trees across Europe. Remote sensing hyperspectral images encode rich structure that has been exploited for the detection of dieback disease in ash trees using supervised machine learning techniques. However, to understand the state of forest health at landscape-scale, accurate unsupervised approaches are needed. This article investigates the use of the unsupervised Diffusion and VCA-Assisted Image Segmentation (D-VIS) clustering algorithm for the detection of ash dieback disease in a forest site near Cambridge, United Kingdom. The unsupervised clustering presented in this work has high overlap with the supervised classification of previous work on this scene (overall accuracy = 71%). Thus, unsupervised learning may be used for the remote detection of ash dieback disease without the need for expert labeling.
翻译:阿什死亡(Hymenoscyphus fraxinus)是一种引入的真菌疾病,正在导致整个欧洲的灰树普遍死亡。遥感超光谱图像组装了丰富的结构,利用监督的机器学习技术在灰树中检测死病。然而,为了了解地貌规模的森林健康状况,需要准确的、不受监督的方法。本文章调查使用未经监督的传播和VCA-辅助图像分割(D-VIS)群集算法来检测英国剑桥附近的森林地点的灰死病。这项工作中出现的未经监督的集成法与以往在现场的工作的监督分类(总体精确度=71%)有很大重叠。因此,可以在无需专家标签的情况下,使用未经监督的学习法远程检测火山死亡疾病。