Disaggregation of Remotely Sensed Soil Moisture in Heterogeneous Landscapes using Holistic Structure based Models
Subit Chakrabarti, Jasmeet Judge, Anand Rangarajan, Sanjay, Ranka

TL;DR
This paper introduces a novel machine learning algorithm, SRRM, for disaggregating satellite soil moisture data from coarse to fine resolution using auxiliary data, achieving high accuracy in heterogeneous landscapes.
Contribution
The study presents a new self-regularized regressive model that effectively disaggregates soil moisture, outperforming existing methods in accuracy and computational efficiency.
Findings
Root mean square error (RMSE) less than 0.02 m³/m³ for 96% of pixels.
RMSE reduced by up to 40% during high heterogeneity periods.
Disaggregated estimates have KLD close to 0, indicating high similarity to true soil moisture.
Abstract
In this study, a novel machine learning algorithm is presented for disaggregation of satellite soil moisture (SM) based on self-regularized regressive models (SRRM) using high-resolution correlated information from auxiliary sources. It includes regularized clustering that assigns soft memberships to each pixel at fine-scale followed by a kernel regression that computes the value of the desired variable at all pixels. Coarse-scale remotely sensed SM were disaggregated from 10km to 1km using land cover, precipitation, land surface temperature, leaf area index, and in-situ observations of SM. This algorithm was evaluated using multi-scale synthetic observations in NC Florida for heterogeneous agricultural land covers. It was found that the root mean square error (RMSE) for 96% of the pixels was less than 0.02 . The clusters generated represented the data well and reduced the RMSE…
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