Title :
In Search of the Statistical Properties of High-Resolution Polarimetric SAR Data for the Measurements of Forest Biomass Beyond the RCS Saturation Limits
Author :
Wang, Haipeng ; Ouchi, Kazuo ; Watanabe, Manabu ; Shimada, Masanobu ; Tadono, Takeo ; Rosenqvist, Ake ; Romshoo, Shakil Ahmad ; Matsuoka, Masayuki ; Moriyama, Toshifumi ; Uratsuka, Seiho
Author_Institution :
Dept. of Environ. Syst. Eng., Kochi Univ.
Abstract :
The purpose of this letter is to present the results on the study of searching effective parameters that describe the relation between high-resolution synthetic aperture radar (SAR) images and forest parameters. The study is based on the non-Gaussian texture analysis of the polarimetric airborne Pi-SAR data over coniferous forests in Hokkaido, Japan. The radar cross section (RCS) in terms of a forest biomass is first analyzed. It is found that the L-band RCS increases steadily with the biomass and saturates at approximately 40 tons/ha. These results are similar to the previous studies. The probability density function of the image amplitude is then investigated, and among Rayleigh, log-normal, Weibull, and K-distributions, the K-distribution is found to fit best to the L-band data of all polarizations, although the Weibull distribution fits equally well. Further, the correlation between the tree biomass and the order parameter of the K-distribution in the cross-polarization images is found to be very high, and the order parameter increases consistently with the biomass to approximately 100 tons/ha, which is well beyond the saturation limit of the L-band RCS. Thus, the order parameter of the K-distribution can be a promising new parameter to estimate the forest biomass from high-resolution polarimetric SAR data in a much wider range than the conventional RCS method
Keywords :
radar polarimetry; statistical distributions; synthetic aperture radar; vegetation mapping; Hokkaido; Japan; K-distribution; L-band RCS; RCS saturation limits; Rayleigh distribution; SAR images; Weibull distribution; coniferous forests; forest biomass; high-resolution polarimetric SAR data; log-normal distribution; nonGaussian texture analysis; polarimetric airborne Pi-SAR data; probability density function; radar cross section; statistical properties; Aerospace engineering; Biomass; Communications technology; Image texture analysis; L-band; Parameter estimation; Polarization; Probability density function; Radar cross section; Synthetic aperture radar; Forest biomass; non-Gaussian statistics; polarimetric high-resolution data; synthetic aperture radar (SAR);
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2006.878299