Abstract
A single exposure optical image watermarking framework based on deep learning (DL) is proposed in this paper, and original watermark image information can be reconstructed from only single-frame watermarked hologram by using an end-to-end network with high-quality. First, the single exposure watermarked hologram is acquired with our presented phase-shifted interferometry based optical image watermarking (PSOIW) frame, and then all holograms and corresponding watermark images are constructed to the train datasets for the learning of an end-to-end conditional generative adversarial network (cGAN), finally retrieved the watermark image well with the trained cGAN network using only one hologram. This DL-based method greatly reduces the recording or transmitting data burden by 1/4 compared with our presented PSOIW technique, and may provide a new way for the real-time 3D image/video security applications. The feasibility and security of the proposed method are demonstrated by the optical experiment results.
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CITATION STYLE
Li, J., Li, Y., Li, J., Zhang, Q., Yang, G., Chen, S., … Li, J. (2021). Single Exposure Optical Image Watermarking Using a cGAN Network. IEEE Photonics Journal, 13(2). https://doi.org/10.1109/JPHOT.2021.3068299
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