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Emily_Bartusiak_Master_s_Thesis_Final_Version.pdf (1.55 MB)

An Adversarial Approach to Spliced Forgery Detection and Localization in Satellite Imagery

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thesis
posted on 2019-06-11, 14:59 authored by Emily R BartusiakEmily R Bartusiak
The widespread availability of image editing tools and improvements in image processing techniques make image manipulation feasible for the general population. Oftentimes, easy-to-use yet sophisticated image editing tools produce results that contain modifications imperceptible to the human observer. Distribution of forged images can have drastic ramifications, especially when coupled with the speed and vastness of the Internet. Therefore, verifying image integrity poses an immense and important challenge to the digital forensic community. Satellite images specifically can be modified in a number of ways, such as inserting objects into an image to hide existing scenes and structures. In this thesis, we describe the use of a Conditional Generative Adversarial Network (cGAN) to identify the presence of such spliced forgeries within satellite images. Additionally, we identify their locations and shapes. Trained on pristine and falsified images, our method achieves high success on these detection and localization objectives.

Funding

Defense Advanced Research Projects Agency (DARPA) and Air Force Research Laboratory (AFRL) through agreement number FA8750-16-2-0173

History

Degree Type

  • Master of Science in Electrical and Computer Engineering

Department

  • Electrical and Computer Engineering

Campus location

  • West Lafayette

Advisor/Supervisor/Committee Chair

Dr. Edward J. Delp

Additional Committee Member 2

Dr. Amy R. Reibman

Additional Committee Member 3

Dr. Michael D. Zoltowski