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CycleGAN, a Master of Steganography

About

CycleGAN (Zhu et al. 2017) is one recent successful approach to learn a transformation between two image distributions. In a series of experiments, we demonstrate an intriguing property of the model: CycleGAN learns to "hide" information about a source image into the images it generates in a nearly imperceptible, high-frequency signal. This trick ensures that the generator can recover the original sample and thus satisfy the cyclic consistency requirement, while the generated image remains realistic. We connect this phenomenon with adversarial attacks by viewing CycleGAN's training procedure as training a generator of adversarial examples and demonstrate that the cyclic consistency loss causes CycleGAN to be especially vulnerable to adversarial attacks.

Casey Chu, Andrey Zhmoginov, Mark Sandler• 2017

Related benchmarks

TaskDatasetResultRank
Cloud RemovalSen2_MTC_New (test)
PSNR17.678
38
Cloud RemovalSEN12MS-CR-TS(EA)
PSNR26.467
11
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS N to A phase conversion
SSIM71.9
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS N to V phase conversion
SSIM76.1
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS A to N phase conversion
SSIM71.7
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS A to D phase conversion
SSIM66.6
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS V to N phase conversion
SSIM77.4
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS V to A phase conversion
SSIM69.4
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS V to D phase conversion
SSIM73.9
7
Multi-phase CT EnhancementWAW-TACE, MSD-CT, PECN, JUS D to N phase conversion
SSIM72.1
7
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