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Generative Autoregressive Ensembles for Satellite Imagery Manipulation Detection

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arxiv 2010.03758 v1 pith:WJ3NZ2VN submitted 2020-10-08 cs.CV

Generative Autoregressive Ensembles for Satellite Imagery Manipulation Detection

classification cs.CV
keywords imagemanipulationapplicationsautoregressiveensemblesgenerativeimageryimages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Satellite imagery is becoming increasingly accessible due to the growing number of orbiting commercial satellites. Many applications make use of such images: agricultural management, meteorological prediction, damage assessment from natural disasters, or cartography are some of the examples. Unfortunately, these images can be easily tampered and modified with image manipulation tools damaging downstream applications. Because the nature of the manipulation applied to the image is typically unknown, unsupervised methods that don't require prior knowledge of the tampering techniques used are preferred. In this paper, we use ensembles of generative autoregressive models to model the distribution of the pixels of the image in order to detect potential manipulations. We evaluate the performance of the presented approach obtaining accurate localization results compared to previously presented approaches.

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