Title
A Low-Rank Group-Sparse Model For Eliminating Mixed Errors In Data For Srtm1
Abstract
The elimination of mixed errors is a key preprocessing technology for the area of digital elevation model data analysis, which is important for further applying data. We associated group sparsity with the low-rank uniqueness of local transformations of mixing errors to effectively remove mixing errors in data from Shuttle Radar Topography Mission 1 (SRTM 1) based on the sparseness of low-rank groups. First, the stripe-error structure that appeared globally in multiple directions was able to be better represented locally using group-sparse regularization and the uniqueness of the data in the low-rank direction of the local range and using variational ideas to constrain the gradient direction of the data to avoid redundant elimination. Second, the nonlocal self-similarity of the weighted kernel norm was used to remove random noise. Finally, the proposed model for eliminating mixed errors was solved using an algorithm based on the multiplier method of alternating direction. Experiments using simulated and real data found that the proposed low-rank group-sparse method (LRGS) eliminated mixed errors in both visual and quantitative evaluations better than the most recent processing methods and existing dataset products.
Year
DOI
Venue
2021
10.3390/rs13071346
REMOTE SENSING
Keywords
DocType
Volume
digital elevation model, shuttle radar topography mission 1, low-rank, group sparse, self-similarity, mixed errors
Journal
13
Issue
Citations 
PageRank 
7
0
0.34
References 
Authors
0
7
Name
Order
Citations
PageRank
Chenyu Ge100.34
Mengmeng Wang200.34
Hongming Zhang301.69
Huan Chen400.34
Hongguang Sun500.34
Yi Chang600.34
Qinke Yang7176.46