References
- Fung AK. 1994. Microwave scattering and emission models and their applications. Norwood (MA): Artech House.
- Gao BC, Goetz AFH. 1995. Retrieval of equivalent water thickness and information related to biochemical components of vegetation canopies from AVIRIS data. Remote Sens Environ. 52(3):155–162.
- Haldar D, Chakraborty M, Manjunath KR, Parihar JS. 2014. Role of polarimetric SAR data for discrimination/biophysical parameters of crops based on canopy architecture. ISPRS Archives.
- Haldar D, Rana P, Yadav M, Hooda RS, Chakraborty M. 2016. Time Series analysis of co-polarization phase difference (PPD) for winter field crops using polarimetric C-band SAR data. Int J Remote Sens. 37(16):3753–3770.
- Huang Y, Walker JP, Gao Y, Wu X, Monerris A. 2015. Estimation of vegetation water content from the Radar Vegetation Index at L-band. IEEE Trans Geosci Remote Sens. 54(2):981–989.
- Inoue Y, Kurosu T, Maeno H, Uratsuka S, Kozu T, Dabrowska-Zielinska K, Qi J. 2002. Season-long daily measurements of multifrequency (Ka, Ku, X, C, and L) and full-polarization backscatter signatures over paddy rice field and their relationship with biological variables. Remote Sens Environ. 81(2–3):194–204.
- Jackson TJ, Schmugge TJ. 1991. Vegetation effects on the microwave emission of soils. Remote Sens Environ. 36(3):203–212.
- Jin YQ, Liu C. 1997. Biomass retrieval from high-dimensional active/passive remote sensing data by using artificial neural networks. Int J Remote Sens. 18(4):971–979.
- Kim Y, Jackson T, Bindlish R, Lee H, Hong S. 2012. Radar Vegetation Index for estimating the vegetation water content of rice and soybean. IEEE Geosci Remote Sens Lett. 9(4):564–568.
- Kim Y, Van Zyl J. 2001. Comparison of forest parameter estimation techniques using SAR data. Proc. IGARSS. 3:1395–1397.
- Kim YJ, Van Zyl J. 2009. A time-series approach to estimate soil moisture using polarimetric radar data. IEEE Trans Geosci Remote Sens. 47(8):2519–2527.
- Maity S, Patnaik C, Chakraborty M, Panigrahy S. 2004. Analysis of temporal backscattering of cotton crops using a semi-empirical model. IEEE Trans Geosci Remote Sens. 42(3):577–587.
- Mohan S, Haldar D, Das A. 2013. Classification of crops and land use features using multi-frequency SAR data. APSAR Conference.
- Oh YS, Hong SY, Kim YJ, Hong JY, Kim YH. 2009. Polarimetric backscattering coefficients of flooded rice fields at L- and C-bands: measurements, modeling, and data analysis. IEEE Trans Geosci Remote Sens. 47(8):2714–2721.
- Prévot L, Champion I, Guyot G. 1993. Estimating surface soil moisture and Leaf Area Index of a wheat canopy using a dual-frequency (C and X bands) scatterometer. Remote Sens Environ. 46(3):331–339.
- Srivastava PK, Neil PO, Cosh M, Lang R, Joseph A. 1990. Evaluation of radar vegetation indices for vegetation water content estimation using data from a ground-based SMAP simulator, p. 31–43.
- Tucker CJ. 1979. Red and photographic infrared linear combinations for monitoring vegetation. Remote Sens Environ. 8(2):127–150.
- Ulaby FT, Moore RK, Fung AK. 1986. Microwave remote sensing, active and passive. Vol. 3. Norwood (MA): Artech House.
- Wigneron JP, Ferrazzoli P, Olioso A, Bertuzzi P, Chanzy A. 1999. A simple approach to monitor crop biomass from C-band radar data. Remote Sens Environ. 69(2):179–188.
- Yamada Y. 2015. Preliminary study on the Radar Vegetation Index (RVI) application to actual paddy fields by ALOS/PALSAR full-polarimetry SAR data. The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XL-7/W3. 36th International Symposium on Remote Sensing of Environment, 11–15 May 2015, Berlin, Germany.