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FastStamp: Accelerating Neural Steganography and Digital Watermarking of Images on FPGAs

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arxiv 2209.12391 v1 pith:IPS7OI5J submitted 2022-09-26 cs.CV cs.AIcs.AR

FastStamp: Accelerating Neural Steganography and Digital Watermarking of Images on FPGAs

classification cs.CV cs.AIcs.AR
keywords watermarkingdigitalsteganographydesignfaststampimageimagesmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Steganography and digital watermarking are the tasks of hiding recoverable data in image pixels. Deep neural network (DNN) based image steganography and watermarking techniques are quickly replacing traditional hand-engineered pipelines. DNN based watermarking techniques have drastically improved the message capacity, imperceptibility and robustness of the embedded watermarks. However, this improvement comes at the cost of increased computational overhead of the watermark encoder neural network. In this work, we design the first accelerator platform FastStamp to perform DNN based steganography and digital watermarking of images on hardware. We first propose a parameter efficient DNN model for embedding recoverable bit-strings in image pixels. Our proposed model can match the success metrics of prior state-of-the-art DNN based watermarking methods while being significantly faster and lighter in terms of memory footprint. We then design an FPGA based accelerator framework to further improve the model throughput and power consumption by leveraging data parallelism and customized computation paths. FastStamp allows embedding hardware signatures into images to establish media authenticity and ownership of digital media. Our best design achieves 68 times faster inference as compared to GPU implementations of prior DNN based watermark encoder while consuming less power.

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