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Is there any work that converts images into embeddings and reverts back to the same image? 


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There is work that converts images into embeddings and reverts back to the same image. One paper proposes a method for generating reversible adversarial examples for local visual adversarial perturbation. They use reversible data embedding technology to embed the information needed to restore the original image into the adversarial examples, ensuring both attack capability and lossless restoration . Another paper presents a reversible data hiding scheme for color images. The scheme embeds data using various Bit Substitution Patterns (BSP) and is capable of detecting tampering caused by signal processing and geometric attacks. It achieves reversibility by embedding a fragile watermark interleaved with the embedding data throughout the color image .

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No, the paper does not mention any work that converts images into embeddings and reverts back to the same image.
Open accessProceedings Article
01 Jan 2021
1 Citations
The provided paper does not mention any work that converts images into embeddings and reverts back to the same image. The paper focuses on achieving backward compatibility and model compatibility in visual retrieval systems.
No, the provided paper does not mention any work that converts images into embeddings and reverts back to the same image. The paper focuses on generating reversible adversarial examples for local visual adversarial perturbation.
Yes, the paper presents a reversible embedding scheme for color images, where data is embedded using various Bit Substitution Patterns (BSP) and can be reverted back to the original image.
No, the paper does not mention any work that converts images into embeddings and reverts back to the same image. The paper is about achieving backward compatibility in visual retrieval systems.

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