Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images
Radar imaging has many advantages. Meanwhile, SAR images suffer from a noise-like phenomenon called speckle. Many despeckling methods have been proposed to date but there is still no common opinion as to what the best filter is and/or what are its parameters (window or block size, thresholds, etc.)....
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2021-05-01
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doaj-0ac80207a863488dbc2937eb327299062021-05-31T23:46:41ZengMDPI AGRemote Sensing2072-42922021-05-01131887188710.3390/rs13101887Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR ImagesOleksii Rubel0Vladimir Lukin1Andrii Rubel2Karen Egiazarian3Department of Information and Communication Technologies, National Aerospace University, 61070 Kharkiv, UkraineDepartment of Information and Communication Technologies, National Aerospace University, 61070 Kharkiv, UkraineDepartment of Information and Communication Technologies, National Aerospace University, 61070 Kharkiv, UkraineComputational Imaging Group, Tampere University, 33720 Tampere, FinlandRadar imaging has many advantages. Meanwhile, SAR images suffer from a noise-like phenomenon called speckle. Many despeckling methods have been proposed to date but there is still no common opinion as to what the best filter is and/or what are its parameters (window or block size, thresholds, etc.). The local statistic Lee filter is one of the most popular and best-known despeckling techniques in radar image processing. Using this filter and Sentinel-1 images as a case study, we show how filter parameters, namely scanning window size, can be selected for a given image based on filter efficiency prediction. Such a prediction can be carried out using a set of input parameters that can be easily and quickly calculated and employing a trained neural network that allows determining one or several criteria of filtering efficiency with high accuracy. The statistical analysis of the obtained results is carried out. This characterizes improvements due to the adaptive selection of the filter window size, both potential and based on prediction. We also analyzed what happens if, due to prediction errors, erroneous decisions are undertaken. Examples for simulated and real-life images are presented.https://www.mdpi.com/2072-4292/13/10/1887image quality assessmentvisual quality metricsneural networksdespecklingSentinel-1 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Oleksii Rubel Vladimir Lukin Andrii Rubel Karen Egiazarian |
spellingShingle |
Oleksii Rubel Vladimir Lukin Andrii Rubel Karen Egiazarian Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images Remote Sensing image quality assessment visual quality metrics neural networks despeckling Sentinel-1 |
author_facet |
Oleksii Rubel Vladimir Lukin Andrii Rubel Karen Egiazarian |
author_sort |
Oleksii Rubel |
title |
Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images |
title_short |
Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images |
title_full |
Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images |
title_fullStr |
Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images |
title_full_unstemmed |
Selection of Lee Filter Window Size Based on Despeckling Efficiency Prediction for Sentinel SAR Images |
title_sort |
selection of lee filter window size based on despeckling efficiency prediction for sentinel sar images |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2021-05-01 |
description |
Radar imaging has many advantages. Meanwhile, SAR images suffer from a noise-like phenomenon called speckle. Many despeckling methods have been proposed to date but there is still no common opinion as to what the best filter is and/or what are its parameters (window or block size, thresholds, etc.). The local statistic Lee filter is one of the most popular and best-known despeckling techniques in radar image processing. Using this filter and Sentinel-1 images as a case study, we show how filter parameters, namely scanning window size, can be selected for a given image based on filter efficiency prediction. Such a prediction can be carried out using a set of input parameters that can be easily and quickly calculated and employing a trained neural network that allows determining one or several criteria of filtering efficiency with high accuracy. The statistical analysis of the obtained results is carried out. This characterizes improvements due to the adaptive selection of the filter window size, both potential and based on prediction. We also analyzed what happens if, due to prediction errors, erroneous decisions are undertaken. Examples for simulated and real-life images are presented. |
topic |
image quality assessment visual quality metrics neural networks despeckling Sentinel-1 |
url |
https://www.mdpi.com/2072-4292/13/10/1887 |
work_keys_str_mv |
AT oleksiirubel selectionofleefilterwindowsizebasedondespecklingefficiencypredictionforsentinelsarimages AT vladimirlukin selectionofleefilterwindowsizebasedondespecklingefficiencypredictionforsentinelsarimages AT andriirubel selectionofleefilterwindowsizebasedondespecklingefficiencypredictionforsentinelsarimages AT karenegiazarian selectionofleefilterwindowsizebasedondespecklingefficiencypredictionforsentinelsarimages |
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