1. 中国矿业大学(北京) 地球科学与测绘工程学院,北京 100083 2. School of Geography,University of Nottingham,NG7 2RD, UK
Comparison and Analysis of Hyperspectral Remote Sensing Identifiable Models for Different Vegetation under Waterlogging Stress
JIANG Jin-bao1, Michael D Steven2, HE Ru-yan1, CAI Qing-kong1
1. College of Geoscience and Surveying Engineering, China University of Mine and Technology, Beijing 100083, China 2. School of Geography, University of Nottingham, Nottingham, NG7 2RD, UK
Abstract:With the global climate warming, flooding disasters frequently occurred and its influence scope constantly increased in China. The objective of the present paper was to study the leaf spectral features of vegetation (maize and beetroot) under waterlogging stress and design a hyperspectral remote sensing model to monitor the flooding disasters through a field simulated experiment. The experiment was carried out in the Sutton Bonington Campus of University of Nottingham(52.8°N, 1.2°W) from May to August in 2008, and samples were collected one time every week and spectra were measured in the laboratory. The result showed that the reflectance of the maize and beetroot decreased in the 550 and 800~1 300 nm region, and the reflectance slightly increased in the 680 nm region. This paper chose NDVI, SIPI, PRI, SRPI, GNDVI and R800*R550/R680 to identify the vegetation under waterlogging stress, respectively. The result suggested that the SIPI and R800*R550/R680 was sensitive for maize under waterlogging stress, and then SIPI and PRI and R800*R550/R680 was sensitive for beetroot under waterlogging stress. In order to seek the best identifiable model, the normalized distances between means of control and stressed vegetation indices were calculated and analyzed, the result indicated that the distance of R800*R550/R680 is more than that of indices’ in the early stress stage, illustrated that the index identifiable ability for waterlogging stress is better than other indices, then the index has the strong sensitivity and stability. Therefore, the index R800*R550/R680 could be used to quickly extract flooding disaster area by using hyperspectral remote sensing, and would provide information support for disaster relief decisions.
Key words:Spectral features;Waterlogging stress;Vegetation;Identification model;Normalized distance between means
蒋金豹1, Michael D Steven2, 何汝艳1,蔡庆空1 . 水浸胁迫下植被高光谱遥感识别模型对比分析 [J]. 光谱学与光谱分析, 2013, 33(11): 3106-3110.
JIANG Jin-bao1, Michael D Steven2, HE Ru-yan1, CAI Qing-kong1 . Comparison and Analysis of Hyperspectral Remote Sensing Identifiable Models for Different Vegetation under Waterlogging Stress . SPECTROSCOPY AND SPECTRAL ANALYSIS, 2013, 33(11): 3106-3110.
[1] HU Tian-tian, KANG Shao-zhong(胡田田, 康绍忠). Journal of Fujian Agriculture and Forestry University(福建农林大学学报), 2005, 34(1): 19. [2] Jiang Jinbao,Chen Yunhao,Huang Wenjiang et al. Sensor Letters, 2012,10(1-2):324. [3] Andersen J E, Perry J E. Wetlands, 1996, 16(4): 477. [4] Pickerill J M, Malthus T J. International Journal of Remote Sensing, 1998, 19: 2427. [5] XIE Xiao-hong, WEI Hong, LI Chang-xiao, et al(谢小红, 魏 虹, 李昌晓, 等). Journal of Southwest University·Natural Science Edition(西南大学学报·自然科学版), 2011, 33(4): 93. [6] Wallace J F, Campbell N A, Wheaton G A, et al. International Journal of Remote Sensing, 1993,14: 14: 2731. [7] Dwivedi R S, Sreenivas K. International Journal of Remote Sensing, 2002, 23: 14, 2729. [8] Penuelas J, Baret F, Filella, I. Photosynthetica, 1995, 31: 221. [9] Gamon J A, Penuelas J, Field C B. Remote Sensing Environment, 1992, 41(1): 35. [10] Gitelson A A, Kaufman Y J, Merzlyak M N. Remote Sensing of Environment, 1996, 58: 289. [11] Rouse J W, Haas R H, Schell J A, et al. In: NASA/GSFC Final Report, NASA, Greenbelt, MD, USA, 1974. 1. [12] Penuelas J, Filella I, Biel C, et al. International Journal of Remote Sensing, 1993, 14: 1887. [13] TONG Qing-xi, ZHANG Bing, ZHENG Lan-fen(童庆禧,张 兵,郑兰芬). Hyperspectral Remote Sening(高光谱遥感——原理、技术与应用). Beijing: Higher Education Press(北京:高等教育出版社),2006. [14] Swain P H, Davis S M. Remote Sensing: The Quantitative Approach. New York: McGrowHill Inc. 1978.