High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement

Misusing image tampering software makes it easier to manipulate satellite images, leading to a crisis of trust and security concerns in society. This study compares the inconsistencies between heterogeneous images to locate tampered areas and proposes a high-precision heterogeneous satellite image m...

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Published in:Remote Sensing
Main Authors: Ruijie Wu, Wei Guo, Yi Liu, Chenhao Sun
Format: Article
Language:English
Published: MDPI AG 2024-10-01
Subjects:
Online Access:https://www.mdpi.com/2072-4292/16/19/3719
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author Ruijie Wu
Wei Guo
Yi Liu
Chenhao Sun
author_facet Ruijie Wu
Wei Guo
Yi Liu
Chenhao Sun
author_sort Ruijie Wu
collection DOAJ
container_title Remote Sensing
description Misusing image tampering software makes it easier to manipulate satellite images, leading to a crisis of trust and security concerns in society. This study compares the inconsistencies between heterogeneous images to locate tampered areas and proposes a high-precision heterogeneous satellite image manipulation localization (HSIML) framework to distinguish tampered from real landcover changes, such as artificial constructions, and pseudo-changes, such as seasonal variations. The model operates at the patch level and comprises three modules: The heterogeneous image preprocessing module aligns heterogeneous images and filters noisy data. The feature point constraint module mitigates the effects of lighting and seasonal variations in the images by performing feature point matching, applying filtering rules to conduct an initial screening to identify candidate tampered patches. The semantic similarity measurement module designs a classification network to assess RS image feature saliency. It determines image consistency based on the similarity of semantic features and implements IML using predefined classification rules. Additionally, a dataset for IML is constructed based on satellite images. Extensive experiments compared with existing SOTA models demonstrate that our method achieved the highest F1 score in both localization accuracy and robustness tests and demonstrates the capability for handling large-scale areas.
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spelling doaj-art-c6458ecbcc1d41ea8d82d125ef2f10b62025-08-20T01:47:37ZengMDPI AGRemote Sensing2072-42922024-10-011619371910.3390/rs16193719High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity MeasurementRuijie Wu0Wei Guo1Yi Liu2Chenhao Sun3State Key Laboratory of Information Engineering in Surveying, Mapping, and Remote Sensing, Wuhan University, Wuhan 430079, ChinaState Key Laboratory of Information Engineering in Surveying, Mapping, and Remote Sensing, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaMisusing image tampering software makes it easier to manipulate satellite images, leading to a crisis of trust and security concerns in society. This study compares the inconsistencies between heterogeneous images to locate tampered areas and proposes a high-precision heterogeneous satellite image manipulation localization (HSIML) framework to distinguish tampered from real landcover changes, such as artificial constructions, and pseudo-changes, such as seasonal variations. The model operates at the patch level and comprises three modules: The heterogeneous image preprocessing module aligns heterogeneous images and filters noisy data. The feature point constraint module mitigates the effects of lighting and seasonal variations in the images by performing feature point matching, applying filtering rules to conduct an initial screening to identify candidate tampered patches. The semantic similarity measurement module designs a classification network to assess RS image feature saliency. It determines image consistency based on the similarity of semantic features and implements IML using predefined classification rules. Additionally, a dataset for IML is constructed based on satellite images. Extensive experiments compared with existing SOTA models demonstrate that our method achieved the highest F1 score in both localization accuracy and robustness tests and demonstrates the capability for handling large-scale areas.https://www.mdpi.com/2072-4292/16/19/3719image manipulation localizationchange detectionheterogeneous satellite imagesfeature point
spellingShingle Ruijie Wu
Wei Guo
Yi Liu
Chenhao Sun
High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
image manipulation localization
change detection
heterogeneous satellite images
feature point
title High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
title_full High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
title_fullStr High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
title_full_unstemmed High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
title_short High-Precision Heterogeneous Satellite Image Manipulation Localization: Feature Point Rules and Semantic Similarity Measurement
title_sort high precision heterogeneous satellite image manipulation localization feature point rules and semantic similarity measurement
topic image manipulation localization
change detection
heterogeneous satellite images
feature point
url https://www.mdpi.com/2072-4292/16/19/3719
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AT weiguo highprecisionheterogeneoussatelliteimagemanipulationlocalizationfeaturepointrulesandsemanticsimilaritymeasurement
AT yiliu highprecisionheterogeneoussatelliteimagemanipulationlocalizationfeaturepointrulesandsemanticsimilaritymeasurement
AT chenhaosun highprecisionheterogeneoussatelliteimagemanipulationlocalizationfeaturepointrulesandsemanticsimilaritymeasurement