DocumentCode
790501
Title
Retrieval of crop biomass and soil moisture from measured 1.4 and 10.65 GHz brightness temperatures
Author
Liu, Shou-Fang ; Liou, Yuei-An ; Wang, Wen-Jun ; Wigneron, Jean-Pierre ; Lee, Jann-Bin
Author_Institution
Dept. of Ind. Design, Oriental Inst. of Technol., Taipei, Taiwan
Volume
40
Issue
6
fYear
2002
fDate
6/1/2002 12:00:00 AM
Firstpage
1260
Lastpage
1268
Abstract
Physically based land surface process/radiobrightness (LSP/R) models may characterize well the relationship between radiometric signatures and surface parameters. They can be used to develop and improve the means of sensing surface parameters by microwave radiometry. However, due to a lack in the skill to properly understand the behavior of the data, a statistical approach is often adopted. In this paper, we present the retrieval of wheat plant water content (PWC) and soil moisture content (SMC) profiles from the measured H-polarized and V-polarized brightness temperatures at 1.4 (L-band), and 10.65 (X-band) GHz by an error propagation learning back propagation (EPLBP) neural network. The PWC is defined as the total water content in the vegetation. The brightness temperatures were taken by the PORTOS radiometer over wheat fields through three month growth cycles in 1993 (PORTOS-93) and 1996 (PORTOS-96). Note that, through the neural network, there is no requirement of ancillary information on the complex surface parameters such as vegetation biomass, surface temperature, and surface roughness, etc. During both field campaigns, the L-band radiometer was used to measure brightness temperatures at incident angles from 0 to 50° at L-band and at an incident angle of 50° at X-band. The SMC profiles were measured to the depths of 10 cm in 1993 and 5 cm in 1996. The wheat was sampled approximately once a week in 1993 and 1996 to obtain its dry and wet biomass (i.e., PWC). The EPLBP neural network was trained with observations randomly chosen from the PORTOS-93 data, and evaluated by the remaining data from the same set. The trained neural network is further evaluated with the PORTOS-96 data.
Keywords
agriculture; backpropagation; hydrological techniques; moisture; neural nets; remote sensing; soil; 1.4 GHz; 10.65 GHz; AD 1993; AD 1996; EPLBP neural network; H-polarized brightness temperatures; L-band radiometer; LSP/R models; PORTOS radiometer; PORTOS-93; PORTOS-96; V-polarized brightness temperatures; brightness temperature; crop biomass; error propagation learning back propagation neural network; land surface process/radiobrightness models; microwave radiometry; radiometric signatures; soil moisture; soil moisture content; surface parameters; vegetation; wheat plant water content; Biomass; Brightness temperature; Crops; L-band; Land surface; Microwave radiometry; Moisture measurement; Neural networks; Soil measurements; Soil moisture;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/TGRS.2002.800277
Filename
1020258
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