William David J, Rybicki Nancy B, Lombana Alfonso V, O'Brien Tim M, Gomez Richard B
Landscape Ecology Branch, Environmental Sciences Division, U.S. Environmental Protection Agency, 12201 Sunrise Valley Drive, 555 National Center, Reston, VA 20192, USA.
Environ Monit Assess. 2003 Jan-Feb;81(1-3):383-92. doi: 10.1023/a:1021318217654.
The use of airborne hyperspectral remote sensing imagery for automated mapping of submerged aquatic vegetation (SAV) in the tidal Potomac River was investigated for near to real-time resource assessment and monitoring. Airborne hyperspectral imagery and field spectrometer measurements were obtained in October of 2000. A spectral library database containing selected ground-based and airborne sensor spectra was developed for use in image processing. The spectral library is used to automate the processing of hyperspectral imagery for potential real-time material identification and mapping. Field based spectra were compared to the airborne imagery using the database to identify and map two species of SAV (Myriophyllum spicatum and Vallisneria americana). Overall accuracy of the vegetation maps derived from hyperspectral imagery was determined by comparison to a product that combined aerial photography and field based sampling at the end of the SAV growing season. The algorithms and databases developed in this study will be useful with the current and forthcoming space-based hyperspectral remote sensing systems.
为了进行近实时资源评估与监测,对利用航空高光谱遥感影像自动绘制波托马克河潮汐区的沉水水生植被(SAV)图进行了研究。2000年10月获取了航空高光谱影像和野外光谱仪测量数据。开发了一个包含选定地面和航空传感器光谱的光谱库数据库,用于图像处理。该光谱库用于自动化处理高光谱影像,以实现潜在的实时物质识别和绘图。利用该数据库将野外光谱与航空影像进行比较,以识别和绘制两种沉水水生植被(狐尾藻和美洲苦草)。通过与在沉水水生植被生长季节结束时结合航空摄影和野外采样的产品进行比较,确定了从高光谱影像得出的植被图的总体精度。本研究中开发的算法和数据库将对当前及即将出现的天基高光谱遥感系统有用。