Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain

Image self-recovery aims at protecting digital images from partial damage due to accidental or malicious tampering. It is done by generating a reference code that contains the information of the image and embedding the code in the image itself. This code can later be extracted to restore the tampere...

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Main Authors: Mohamed Hamid, Chunyan Wang
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8528419/
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spelling doaj-c9c4db12e2c44bf581e54b273b2c0d6b2021-03-29T20:27:59ZengIEEEIEEE Access2169-35362018-01-016671566716510.1109/ACCESS.2018.28794048528419Adaptive Image Self-Recovery Based on Feature Extraction in the DCT DomainMohamed Hamid0Chunyan Wang1https://orcid.org/0000-0002-4594-8378Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, CanadaDepartment of Electrical and Computer Engineering, Concordia University, Montreal, QC, CanadaImage self-recovery aims at protecting digital images from partial damage due to accidental or malicious tampering. It is done by generating a reference code that contains the information of the image and embedding the code in the image itself. This code can later be extracted to restore the tampered regions of the image. The reference code must contain sufficient information to ensure a satisfactory reconstruction while being short enough to remain invisible when embedded in the image, which requires efficient extraction and adaptive encoding of the image information. To this end, we introduce a method for extracting local features in the DCT domain, in which the locations of the three DCT peaks, i.e., the DCT coefficients with the highest magnitudes, are examined to distinguish 13 texture profiles differing in the number of edges, edge orientations, and combinations of the two. Applying this method, we propose an adaptive image self-recovery algorithm. The DCT peaks are used to identify local texture patterns, and the bit allocation is made adaptive at hierarchical levels: 1) the texture blocks get more bit allocation than the smooth blocks; 2) the blocks having texture patterns appearing more frequently in the image are encoded with more precision; and 3) in each texture block, the highest DCT peak is assigned more bits than the remaining encoded coefficients. Hence, the encoding process is not only adaptive to the levels of variations across blocks but also to the local texture patterns. The proposed algorithm generates a reference code short enough to be embedded very comfortably in a single-least-significant-bit (LSB) plane, compared to 2 ~ 3 LSB planes often found in literature. Since the reference code contains all the critical image information in a compact form, the quality of the reconstructed images is as good as those produced by significantly longer reference codes.https://ieeexplore.ieee.org/document/8528419/Image features extraction and presentationDCT peaksimage self-recoveryadaptive bit allocation
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed Hamid
Chunyan Wang
spellingShingle Mohamed Hamid
Chunyan Wang
Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
IEEE Access
Image features extraction and presentation
DCT peaks
image self-recovery
adaptive bit allocation
author_facet Mohamed Hamid
Chunyan Wang
author_sort Mohamed Hamid
title Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
title_short Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
title_full Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
title_fullStr Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
title_full_unstemmed Adaptive Image Self-Recovery Based on Feature Extraction in the DCT Domain
title_sort adaptive image self-recovery based on feature extraction in the dct domain
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Image self-recovery aims at protecting digital images from partial damage due to accidental or malicious tampering. It is done by generating a reference code that contains the information of the image and embedding the code in the image itself. This code can later be extracted to restore the tampered regions of the image. The reference code must contain sufficient information to ensure a satisfactory reconstruction while being short enough to remain invisible when embedded in the image, which requires efficient extraction and adaptive encoding of the image information. To this end, we introduce a method for extracting local features in the DCT domain, in which the locations of the three DCT peaks, i.e., the DCT coefficients with the highest magnitudes, are examined to distinguish 13 texture profiles differing in the number of edges, edge orientations, and combinations of the two. Applying this method, we propose an adaptive image self-recovery algorithm. The DCT peaks are used to identify local texture patterns, and the bit allocation is made adaptive at hierarchical levels: 1) the texture blocks get more bit allocation than the smooth blocks; 2) the blocks having texture patterns appearing more frequently in the image are encoded with more precision; and 3) in each texture block, the highest DCT peak is assigned more bits than the remaining encoded coefficients. Hence, the encoding process is not only adaptive to the levels of variations across blocks but also to the local texture patterns. The proposed algorithm generates a reference code short enough to be embedded very comfortably in a single-least-significant-bit (LSB) plane, compared to 2 ~ 3 LSB planes often found in literature. Since the reference code contains all the critical image information in a compact form, the quality of the reconstructed images is as good as those produced by significantly longer reference codes.
topic Image features extraction and presentation
DCT peaks
image self-recovery
adaptive bit allocation
url https://ieeexplore.ieee.org/document/8528419/
work_keys_str_mv AT mohamedhamid adaptiveimageselfrecoverybasedonfeatureextractioninthedctdomain
AT chunyanwang adaptiveimageselfrecoverybasedonfeatureextractioninthedctdomain
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