Compression Based Analysis of Image Artifacts: Application to Satellite Images

This thesis aims at an automatic detection of artifacts in optical satellite images such as aliasing, A/D conversion problems, striping, and compression noise; in fact, all blemishes that are unusual in an undistorted image. Artifact detection in Earth observation images becomes increasingly difficu...

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Bibliographic Details
Main Author: Roman-Gonzalez, Avid
Language:ENG
Published: Telecom ParisTech 2013
Subjects:
NCD
CEM
Online Access:http://tel.archives-ouvertes.fr/tel-00935029
http://tel.archives-ouvertes.fr/docs/00/93/50/29/PDF/Compression_Based_Analysis_of_Image_Artifacts_Application_to_Satellite_Images.pdf
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spelling ndltd-CCSD-oai-tel.archives-ouvertes.fr-tel-009350292014-01-24T03:20:34Z http://tel.archives-ouvertes.fr/tel-00935029 http://tel.archives-ouvertes.fr/docs/00/93/50/29/PDF/Compression_Based_Analysis_of_Image_Artifacts_Application_to_Satellite_Images.pdf Compression Based Analysis of Image Artifacts: Application to Satellite Images Roman-Gonzalez, Avid [SPI:SIGNAL] Engineering Sciences/Signal and Image processing [SPI:SIGNAL] Sciences de l'ingénieur/Traitement du signal et de l'image [INFO:INFO_TS] Computer Science/Signal and Image Processing [INFO:INFO_TS] Informatique/Traitement du signal et de l'image [SPI:OTHER] Engineering Sciences/Other [SPI:OTHER] Sciences de l'ingénieur/Autre Images artifacts detection NCD image quality metrics rate-distortion CEM This thesis aims at an automatic detection of artifacts in optical satellite images such as aliasing, A/D conversion problems, striping, and compression noise; in fact, all blemishes that are unusual in an undistorted image. Artifact detection in Earth observation images becomes increasingly difficult when the resolution of the image improves. For images of low, medium or high resolution, the artifact signatures are sufficiently different from the useful signal, thus allowing their characterization as distortions; however, when the resolution improves, the artifacts have, in terms of signal theory, a similar signature to the interesting objects in an image. Although it is more difficult to detect artifacts in very high resolution images, we need analysis tools that work properly, without impeding the extraction of objects in an image. Furthermore, the detection should be as automatic as possible, given the quantity and ever-increasing volumes of images that make any manual detection illusory. Finally, experience shows that artifacts are not all predictable nor can they be modeled as expected. Thus, any artifact detection shall be as generic as possible, without requiring the modeling of their origin or their impact on an image. Outside the field of Earth observation, similar detection problems have arisen in multimedia image processing. This includes the evaluation of image quality, compression, watermarking, detecting attacks, image tampering, the montage of photographs, steganalysis, etc. In general, the techniques used to address these problems are based on direct or indirect measurement of intrinsic information and mutual information. Therefore, this thesis has the objective to translate these approaches to artifact detection in Earth observation images, based particularly on the theories of Shannon and Kolmogorov, including approaches for measuring rate-distortion and pattern-recognition based compression. The results from these theories are then used to detect too low or too high complexities, or redundant patterns. The test images being used are from the satellite instruments SPOT, MERIS, etc. We propose several methods for artifact detection. The first method is using the Rate-Distortion (RD) function obtained by compressing an image with different compression factors and examines how an artifact can result in a high degree of regularity or irregularity affecting the attainable compression rate. The second method is using the Normalized Compression Distance (NCD) and examines whether artifacts have similar patterns. The third method is using different approaches for RD such as the Kolmogorov Structure Function and the Complexity-to-Error Migration (CEM) for examining how artifacts can be observed in compression-decompression error maps. Finally, we compare our proposed methods with an existing method based on image quality metrics. The results show that the artifact detection depends on the artifact intensity and the type of surface cover contained in the satellite image. 2013-10-02 ENG PhD thesis Telecom ParisTech
collection NDLTD
language ENG
sources NDLTD
topic [SPI:SIGNAL] Engineering Sciences/Signal and Image processing
[SPI:SIGNAL] Sciences de l'ingénieur/Traitement du signal et de l'image
[INFO:INFO_TS] Computer Science/Signal and Image Processing
[INFO:INFO_TS] Informatique/Traitement du signal et de l'image
[SPI:OTHER] Engineering Sciences/Other
[SPI:OTHER] Sciences de l'ingénieur/Autre
Images
artifacts detection
NCD
image quality metrics
rate-distortion
CEM
spellingShingle [SPI:SIGNAL] Engineering Sciences/Signal and Image processing
[SPI:SIGNAL] Sciences de l'ingénieur/Traitement du signal et de l'image
[INFO:INFO_TS] Computer Science/Signal and Image Processing
[INFO:INFO_TS] Informatique/Traitement du signal et de l'image
[SPI:OTHER] Engineering Sciences/Other
[SPI:OTHER] Sciences de l'ingénieur/Autre
Images
artifacts detection
NCD
image quality metrics
rate-distortion
CEM
Roman-Gonzalez, Avid
Compression Based Analysis of Image Artifacts: Application to Satellite Images
description This thesis aims at an automatic detection of artifacts in optical satellite images such as aliasing, A/D conversion problems, striping, and compression noise; in fact, all blemishes that are unusual in an undistorted image. Artifact detection in Earth observation images becomes increasingly difficult when the resolution of the image improves. For images of low, medium or high resolution, the artifact signatures are sufficiently different from the useful signal, thus allowing their characterization as distortions; however, when the resolution improves, the artifacts have, in terms of signal theory, a similar signature to the interesting objects in an image. Although it is more difficult to detect artifacts in very high resolution images, we need analysis tools that work properly, without impeding the extraction of objects in an image. Furthermore, the detection should be as automatic as possible, given the quantity and ever-increasing volumes of images that make any manual detection illusory. Finally, experience shows that artifacts are not all predictable nor can they be modeled as expected. Thus, any artifact detection shall be as generic as possible, without requiring the modeling of their origin or their impact on an image. Outside the field of Earth observation, similar detection problems have arisen in multimedia image processing. This includes the evaluation of image quality, compression, watermarking, detecting attacks, image tampering, the montage of photographs, steganalysis, etc. In general, the techniques used to address these problems are based on direct or indirect measurement of intrinsic information and mutual information. Therefore, this thesis has the objective to translate these approaches to artifact detection in Earth observation images, based particularly on the theories of Shannon and Kolmogorov, including approaches for measuring rate-distortion and pattern-recognition based compression. The results from these theories are then used to detect too low or too high complexities, or redundant patterns. The test images being used are from the satellite instruments SPOT, MERIS, etc. We propose several methods for artifact detection. The first method is using the Rate-Distortion (RD) function obtained by compressing an image with different compression factors and examines how an artifact can result in a high degree of regularity or irregularity affecting the attainable compression rate. The second method is using the Normalized Compression Distance (NCD) and examines whether artifacts have similar patterns. The third method is using different approaches for RD such as the Kolmogorov Structure Function and the Complexity-to-Error Migration (CEM) for examining how artifacts can be observed in compression-decompression error maps. Finally, we compare our proposed methods with an existing method based on image quality metrics. The results show that the artifact detection depends on the artifact intensity and the type of surface cover contained in the satellite image.
author Roman-Gonzalez, Avid
author_facet Roman-Gonzalez, Avid
author_sort Roman-Gonzalez, Avid
title Compression Based Analysis of Image Artifacts: Application to Satellite Images
title_short Compression Based Analysis of Image Artifacts: Application to Satellite Images
title_full Compression Based Analysis of Image Artifacts: Application to Satellite Images
title_fullStr Compression Based Analysis of Image Artifacts: Application to Satellite Images
title_full_unstemmed Compression Based Analysis of Image Artifacts: Application to Satellite Images
title_sort compression based analysis of image artifacts: application to satellite images
publisher Telecom ParisTech
publishDate 2013
url http://tel.archives-ouvertes.fr/tel-00935029
http://tel.archives-ouvertes.fr/docs/00/93/50/29/PDF/Compression_Based_Analysis_of_Image_Artifacts_Application_to_Satellite_Images.pdf
work_keys_str_mv AT romangonzalezavid compressionbasedanalysisofimageartifactsapplicationtosatelliteimages
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