A probabilistic graphical model approach in 30 m land cover mapping with multiple data sources
Jie Wang, Luyan Ji, Xiaomeng Huang, Haohuan Fu, Shiming Xu, Congcong, Li

TL;DR
This paper introduces a probabilistic graphical model approach for 30-meter land cover mapping using multi-source, multi-temporal satellite data, improving accuracy over traditional single-source methods.
Contribution
The study develops a PGM-based method that effectively integrates Landsat and MODIS data for land cover classification, especially when multi-temporal data stacking is not feasible.
Findings
Overall accuracy increased from 74.0% to 81.8% with PGM.
Method improved classification accuracy using multi-source data.
MODIS data's contribution was limited in cloud-free regions.
Abstract
There is a trend to acquire high accuracy land-cover maps using multi-source classification methods, most of which are based on data fusion, especially pixel- or feature-level fusions. A probabilistic graphical model (PGM) approach is proposed in this research for 30 m resolution land-cover mapping with multi-temporal Landsat and MODerate Resolution Imaging Spectroradiometer (MODIS) data. Independent classifiers were applied to two single-date Landsat 8 scenes and the MODIS time-series data, respectively, for probability estimation. A PGM was created for each pixel in Landsat 8 data. Conditional probability distributions were computed based on data quality and reliability by using information selectively. Using the administrative territory of Beijing City (Area-1) and a coastal region of Shandong province, China (Area-2) as study areas, multiple land-cover maps were generated for…
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Taxonomy
TopicsRemote Sensing in Agriculture · Remote Sensing and Land Use · Remote-Sensing Image Classification
MethodsProbability Guided Maxout
