Papadopoulos Antonis, Kalivas Dionissios, Theocharopoulos Sid
Department of Phytopathology, Laboratory of Non-Parasitic Diseases, Benaki Phytopathological Institute, 8 St. Delta Str., 14561, Kifissia, Athens, Greece.
Department of Natural Resource Management & Agricultural Engineering, Agricultural University of Athens, 75 Iera Odos Str., 11855, Athens, Greece.
Environ Monit Assess. 2017 Jul;189(7):323. doi: 10.1007/s10661-017-6042-z. Epub 2017 Jun 8.
Multispectral sensor capability of capturing reflectance data at several spectral channels, together with the inherent reflectance responses of various soils and especially plant surfaces, has gained major interest in crop production. In present study, two multispectral sensing systems, a ground-based and an aerial-based, were applied for the multispatial and temporal monitoring of two cotton fields in central Greece. The ground-based system was Crop Circle ACS-430, while the aerial consisted of a consumer-level quadcopter (Phantom 2) and a modified Hero3+ Black digital camera. The purpose of the research was to monitor crop growth with the two systems and investigate possible interrelations between the derived well-known normalized difference vegetation index (NDVI). Five data collection campaigns were conducted during the cultivation period and concerned scanning soil and plants with the ground-based sensor and taking aerial photographs of the fields with the unmanned aerial system. According to the results, both systems successfully monitored cotton growth stages in terms of space and time. The mean values of NDVI changes through time as retrieved by the ground-based system were satisfactorily modelled by a second-order polynomial equation (R 0.96 in Field 1 and 0.99 in Field 2). Further, they were highly correlated (r 0.90 in Field 1 and 0.74 in Field 2) with the according values calculated via the aerial-based system. The unmanned aerial system (UAS) can potentially substitute crop scouting as it concerns a time-effective, non-destructive and reliable way of soil and plant monitoring.
多光谱传感器能够在多个光谱通道捕获反射率数据,再加上各种土壤尤其是植物表面固有的反射率响应,这在作物生产中引起了极大的关注。在本研究中,两种多光谱传感系统,一种是地面系统,一种是航空系统,被用于对希腊中部的两块棉田进行多空间和多时间监测。地面系统是Crop Circle ACS - 430,而航空系统由一台消费级四轴飞行器(幻影2)和一台改装的Hero3 + Black数码相机组成。该研究的目的是用这两种系统监测作物生长,并研究导出的著名归一化植被指数(NDVI)之间可能存在的相互关系。在种植期间进行了五次数据收集活动,包括用地面传感器扫描土壤和植物,以及用无人机系统拍摄田地的航空照片。根据结果,两种系统都成功地在空间和时间上监测了棉花的生长阶段。通过地面系统获取的NDVI随时间变化的平均值,用二阶多项式方程进行了令人满意的建模(在第1块田R = 0.96,在第2块田R = 0.99)。此外,它们与通过航空系统计算得到的相应值高度相关(在第1块田r = 0.90,在第2块田r = 按0.74)。无人机系统(UAS)有可能替代作物田间巡查,因为它是一种省时、无损且可靠的土壤和植物监测方式。