Coupling Denoising to Detection for SAR Imagery
Detecting objects in synthetic aperture radar (SAR) imagery has received much attention in recent years since SAR can operate in all-weather and day-and-night conditions. Due to the prosperity and development of convolutional neural networks (CNNs), many previous methodologies have been proposed for...
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doaj-eaa4534f1bd64f02855dd2fa29134e122021-07-01T00:20:13ZengMDPI AGApplied Sciences2076-34172021-06-01115569556910.3390/app11125569Coupling Denoising to Detection for SAR ImagerySujin Shin0Youngjung Kim1Insu Hwang2Junhee Kim3Sungho Kim4Agency for Defense Development, Institute of Defense Advanced Technology Research, Daejeon 34186, KoreaAgency for Defense Development, Institute of Defense Advanced Technology Research, Daejeon 34186, KoreaAgency for Defense Development, Institute of Defense Advanced Technology Research, Daejeon 34186, KoreaAgency for Defense Development, Institute of Defense Advanced Technology Research, Daejeon 34186, KoreaAgency for Defense Development, Institute of Defense Advanced Technology Research, Daejeon 34186, KoreaDetecting objects in synthetic aperture radar (SAR) imagery has received much attention in recent years since SAR can operate in all-weather and day-and-night conditions. Due to the prosperity and development of convolutional neural networks (CNNs), many previous methodologies have been proposed for SAR object detection. In spite of the advance, existing detection networks still have limitations in boosting detection performance because of inherently noisy characteristics in SAR imagery; hence, separate preprocessing step such as denoising (despeckling) is required before utilizing the SAR images for deep learning. However, inappropriate denoising techniques might cause detailed information loss and even proper denoising methods does not always guarantee performance improvement. In this paper, we therefore propose a novel object detection framework that combines unsupervised denoising network into traditional two-stage detection network and leverages a strategy for fusing region proposals extracted from both raw SAR image and synthetically denoised SAR image. Extensive experiments validate the effectiveness of our framework on our own object detection datasets constructed with remote sensing images from TerraSAR-X and COSMO-SkyMed satellites. Extensive experiments validate the effectiveness of our framework on our own object detection datasets constructed with remote sensing images from TerraSAR-X and COSMO-SkyMed satellites. The proposed framework shows better performances when we compared the model with using only noisy SAR images and only denoised SAR images after despeckling under multiple backbone networks.https://www.mdpi.com/2076-3417/11/12/5569denoisingdetectionSAR imageryfusing region proposals |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sujin Shin Youngjung Kim Insu Hwang Junhee Kim Sungho Kim |
spellingShingle |
Sujin Shin Youngjung Kim Insu Hwang Junhee Kim Sungho Kim Coupling Denoising to Detection for SAR Imagery Applied Sciences denoising detection SAR imagery fusing region proposals |
author_facet |
Sujin Shin Youngjung Kim Insu Hwang Junhee Kim Sungho Kim |
author_sort |
Sujin Shin |
title |
Coupling Denoising to Detection for SAR Imagery |
title_short |
Coupling Denoising to Detection for SAR Imagery |
title_full |
Coupling Denoising to Detection for SAR Imagery |
title_fullStr |
Coupling Denoising to Detection for SAR Imagery |
title_full_unstemmed |
Coupling Denoising to Detection for SAR Imagery |
title_sort |
coupling denoising to detection for sar imagery |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2021-06-01 |
description |
Detecting objects in synthetic aperture radar (SAR) imagery has received much attention in recent years since SAR can operate in all-weather and day-and-night conditions. Due to the prosperity and development of convolutional neural networks (CNNs), many previous methodologies have been proposed for SAR object detection. In spite of the advance, existing detection networks still have limitations in boosting detection performance because of inherently noisy characteristics in SAR imagery; hence, separate preprocessing step such as denoising (despeckling) is required before utilizing the SAR images for deep learning. However, inappropriate denoising techniques might cause detailed information loss and even proper denoising methods does not always guarantee performance improvement. In this paper, we therefore propose a novel object detection framework that combines unsupervised denoising network into traditional two-stage detection network and leverages a strategy for fusing region proposals extracted from both raw SAR image and synthetically denoised SAR image. Extensive experiments validate the effectiveness of our framework on our own object detection datasets constructed with remote sensing images from TerraSAR-X and COSMO-SkyMed satellites. Extensive experiments validate the effectiveness of our framework on our own object detection datasets constructed with remote sensing images from TerraSAR-X and COSMO-SkyMed satellites. The proposed framework shows better performances when we compared the model with using only noisy SAR images and only denoised SAR images after despeckling under multiple backbone networks. |
topic |
denoising detection SAR imagery fusing region proposals |
url |
https://www.mdpi.com/2076-3417/11/12/5569 |
work_keys_str_mv |
AT sujinshin couplingdenoisingtodetectionforsarimagery AT youngjungkim couplingdenoisingtodetectionforsarimagery AT insuhwang couplingdenoisingtodetectionforsarimagery AT junheekim couplingdenoisingtodetectionforsarimagery AT sunghokim couplingdenoisingtodetectionforsarimagery |
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