Strong Conor J, Burnside Niall G, Llewellyn Dan
Ecosystem and Environmental Management Research Group, School of Environment & Technology, University of Brighton, Brighton, United Kingdom.
LDP LLC, Carlstadt, New Jersey, United States of America.
PLoS One. 2017 Oct 12;12(10):e0186193. doi: 10.1371/journal.pone.0186193. eCollection 2017.
The loss of unimproved grassland has led to species decline in a wide range of taxonomic groups. Agricultural intensification has resulted in fragmented patches of remnant grassland habitat both across Europe and internationally. The monitoring of remnant patches of this habitat is critically important, however, traditional surveying of large, remote landscapes is a notoriously costly and difficult task. The emergence of small-Unmanned Aircraft Systems (sUAS) equipped with low-cost multi-spectral cameras offer an alternative to traditional grassland survey methods, and have the potential to progress and innovate the monitoring and future conservation of this habitat globally. The aim of this article is to investigate the potential of sUAS for rapid detection of threatened unimproved grassland and to test the use of an Enhanced Normalized Difference Vegetation Index (ENDVI). A sUAS aerial survey is undertaken at a site nationally recognised as an important location for fragmented unimproved mesotrophic grassland, within the south east of England, UK. A multispectral camera is used to capture imagery in the visible and near-infrared spectrums, and the ENDVI calculated and its discrimination performance compared to a range of more traditional vegetation indices. In order to validate the results of analysis, ground quadrat surveys were carried out to determine the grassland communities present. Quadrat surveys identified three community types within the site; unimproved grassland, improved grassland and rush pasture. All six vegetation indices tested were able to distinguish between the broad habitat types of grassland and rush pasture; whilst only three could differentiate vegetation at a community level. The Enhanced Normalized Difference Vegetation Index (ENDVI) was the most effective index when differentiating grasslands at the community level. The mechanisms behind the improved performance of the ENDVI are discussed and recommendations are made for areas of future research and study.
未改良草地的丧失导致了广泛分类群物种数量的减少。农业集约化已造成欧洲乃至全球范围内残余草地栖息地破碎化。对这种栖息地的残余斑块进行监测至关重要,然而,对大型偏远景观进行传统调查是一项成本高昂且困难的任务。配备低成本多光谱相机的小型无人机系统(sUAS)的出现为传统草地调查方法提供了一种替代方案,并且有潜力在全球范围内推动和创新对这种栖息地的监测及未来保护工作。本文旨在研究小型无人机系统在快速检测受威胁的未改良草地方面的潜力,并测试增强型归一化差异植被指数(ENDVI)的应用。在英国英格兰东南部一个全国公认的重要地点进行了一次小型无人机系统航空调查,该地点有破碎化的未改良中营养草地。使用多光谱相机在可见光和近红外光谱范围内拍摄图像,计算ENDVI并将其判别性能与一系列更传统的植被指数进行比较。为了验证分析结果,进行了地面样方调查以确定存在的草地群落类型。样方调查在该地点识别出三种群落类型;未改良草地、改良草地和灯芯草牧场。测试的所有六种植被指数都能够区分草地和灯芯草牧场这两种广泛的栖息地类型;而只有三种能够在群落水平上区分植被。在群落水平上区分草地时,增强型归一化差异植被指数(ENDVI)是最有效的指数。文中讨论了ENDVI性能提升背后的机制,并对未来研究领域提出了建议。