Title :
Measuring soil moisture with imaging radars
Author :
Dubois, Pascale C. ; Van Zyl, Jakob ; Engman, Ted
Author_Institution :
Jet Propulsion Lab., California Inst. of Technol., Pasadena, CA, USA
fDate :
7/1/1995 12:00:00 AM
Abstract :
An empirical algorithm for the retrieval of soil moisture content and surface root mean square (RMS) height from remotely sensed radar data was developed using scatterometer data. The algorithm is optimized for bare surfaces and requires two copolarized channels at a frequency between 1.5 and 11 GHz. It gives best results for kh⩽2.5, μυ⩽35%, and θ⩾30°. Omitting the usually weaker hv-polarized returns makes the algorithm less sensitive to system cross-talk and system noise, simplifies the calibration process and adds robustness to the algorithm in the presence of vegetation. However, inversion results indicate that significant amounts of vegetation (NDVI>0.4) cause the algorithm to underestimate soil moisture and overestimate RMS height. A simple criteria based on the σhv0/σvv0 ratio is developed to select the areas where the inversion is not impaired by the vegetation. The inversion accuracy is assessed on the original scatterometer data sets but also on several SAR data sets by comparing the derived soil moisture values with in-situ measurements collected over a variety of scenes between 1991 and 1994. Both spaceborne (SIR-C) and airborne (AIRSAR) data are used in the test. Over this large sample of conditions, the RMS error in the soil moisture estimate is found to be less than 4.2% soil moisture
Keywords :
geophysical techniques; hydrological techniques; moisture measurement; radar applications; remote sensing by radar; soil; 1.5 to 11 GHz; UHF SHF microwave; airborne radar; dual frequency method; empirical algorithm; hydrology; imaging radar; measurement technique; remote sensing; scatterometer; soil moisture; spaceborne radar; Content based retrieval; Information retrieval; Moisture measurement; Radar imaging; Radar measurements; Radar remote sensing; Soil measurements; Soil moisture; Spaceborne radar; Vegetation mapping;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on