1 Bryant R B, Moran M S. Determining crop water stress from crop temperature variability. In: Proceedings of the Fourth International Airborne Remote Sensing Conference and Exhibition/The 21st Canadian Symposium on Remote Sensing, Ottawa, Canada, 21–24 June 1999. Ann Arbor, MI: ERIM International Inc, 1999: 289–296.2 West J S, Bravo C, Oberit R, Lemaire D, Moshou D, McCartney H A. The potential of optical canopy measurement for targeted control of field crop diseases. Annu Rev Phytopathol, 2003, 41: 593–614.3 Jackson R D. Remote sensing of biotic and abiotic plant stress. Annu Rev Phytopathol, 1986, 24: 265–287.4 Kobayashi T, Kanda E, Kitada K, Ishiguro K, Torigoe Y. Detection of rice panicle blast with multispectral radiometer and the potential of using airborne multispectral scanners. Phytopathology, 2001, 91:316–323.5 Nilsson H E. Remote sensing and image analysis in plant pathology. Annu Rev Phytopathol, 1995, 15: 489–527.6 Penuelas J, Filella L. Visible and near-infrared reflectance techniques for diagnosing plant physiological status. Trends Plant Sci, 1998, 3(4): 151–156.7 Colwell R N. Determining the prevalence of certain cereal crop diseases by means of aerial photography. Hilgardia, 1956, 26: 223–286. 8 Brenchley G H. Aerial photography for the study of plant diseases. Annu Rev Phytopathol, 1968, 6: 1–22.9 Kanemasu E T, Niblett C L, Manges H, Lenhert D, Newman M A. Wheat: Its growth and disease severity as deduced from ERTS-1. Remote Sensing Environ, 1974, 3: 255–260.10 Kanemasu E T, Schimmelpfennig H, Choy E C, Eversmeyer M G, Lenhert D. ERTS-1 data collection systems used to predict wheat disease severities. Remote Sensing Environ, 1974, 3: 93–97.11 Coops N, Stanford M, Old K, Dudzinski M, Culvenor D, Stone C. Assessment of Dothistroma needle blight of Pinus radiate using airborne hyperspectral imagery. Phytopathology, 2003, 93: 1524–1532.12 Everiu J H, Escobar D E, Villarreal R, Noricga J R, Davis M R. Airborne video systems for agricultural assessment. Remote Sensing Environ, 1991, 35: 231–242.13 Jackson H R, Wallen V R. Microdensitometer measurements of sequential aerial photographs of field beans infected with bacterial blight. Phytopathology, 1975, 65: 961–968.14 Nagarajan S, Seibold G, Kranz J, Saari E E, Joshi L M. Monitoring wheat rust epidemics with the Landsat-2 satellite. Phytopathology, 1984, 74: 585–587.15 Malthus T J, Madeira A C. High resolution spectro-radiometry: Spectral reflectance of field bean leaves infected by Botrytis fabae. Remote Sensing Environ, 1993, 45: 107–116.16 Steddom K, Heidel G, Gones D, Rush C M. Remote detection of Rhizomania in sugar beets. Phytopathology, 2003, 93: 720– 726.17 Muhammed H H, Larsolle A. Feature vector based analysis of hyperspectral crop reflectance data for discrimination and quantification of fungal disease severity in wheat. Biosystems Eng, 2003, 86(2): 125–134.18 Abou-ismail O, Huang J F, Wang R C. Rice yield estimation by integrating remote sensing with rice growth simulation model. Pedosphere, 2004, 14(4): 519–526.19 Tang Y L, Wang R C, Huang J F. Relations between red edge characteristics and agronomic parameters of crops. Pedosphere, 2004, 14(4): 467–474.20 Carter G A. Ratios of leaf reflectance in narrow wavebands as indicators of plant stress. Int J Remote Sensing, 1994, 15: 697–703.21 Carter G A. Primary and secondary effects of water content on the spectral reflectance of leaves. Am J Bot, 1991, 78: 916–924.22 Huang W J, Liu L Y, Huang M Y, Wang J H, Wang J D, Wan H W. Monitoring of wheat yellow rust with dynamic hyperspectral data. IEEE International Geoscience and Remote Sensing Symposium Proceedings. Vol. 6. Anchorage, Alaska, USA, 20–24 September, 2004. Piscataway, NJ: IEEE, 2004: 4056– 4058. [2007-04-25]. http://ieeexplore.ieee.org/Xplore/login.jsp?url=/ iel5/9436/29950/01370021.pdf?arnumber=1370021.23 Demetriades-Shah T H, Steven M D, Clark J A. High resolution derivative spectra in remote sensing. Remote Sensing Environ, 1990, 33: 55–64.24 Riedell W E, Blackmer T M. Leaf reflectance spectra of cereal aphid-damaged wheat. Crop Sci, 1999, 39: 1835–1840.25 Iqbal N, Ashraf M Y, Javed F, Ashraf M, Hameed S. Cotton leaf curl virus: Ionic status of leaves and symptom development. J Integ Plant Biol, 2006, 48: 558–562.26 Zhang M, Liu X, O’Neill M. Spectral discrimination of Phytophthora infestans infection on tomatoes based on principal component and cluster analyses. Int J Remote Sensing, 2002, 23: 1095–1107.27 Horler D N H, Dockray M, Barber J. The red edge of plant reflectance. Int J Remote Sensing, 1983, 4: 273–288.28 Li Y, Demetriades-Shah T H, Kanemasu E T, Shutis J K, Kirkham M B. Use of second derivatives for monitoring prairie vegetation over different soil backgrounds. Remote Sensing Environ, 1993, 44: 81–87.29 Philpot W D. The derivative ratio algorithm: Avoiding atmospheric effects in remote sensing. IEEE Trans Geosci Remote Sensing, 1991, 43: 1541–1552.30 Steven M D, Malthus T H, Demetriades-Shah T H, Danson F M, Clark J A. High spectral resolution indices for crop stress. In: Steven M D, Clark J A. Application of Remote Sensing in Agriculture. London: Butterworths, 1990: 209–228.31 Chappelle E W, Kim M S, McMurtrey J E. Ratio analysis of reflectance spectra (RARS): An algorithm for the remote estimation of the concentrations of chlorophyll a, chlorophyll b, and carotenoids in soybean leaves. Remote Sensing Environ, 1992, 39: 239–247.32 Liu Z Y, Huang J F. Wang F M, Wang Y. Adjusted-normalized difference vegetation index for estimating leaf area index of rice. Acta Agron Sin. (in press) (in Chinese with English abstract) |