Abstract

With the rapid development of cloud storage, an increasing number of users store their images in the cloud. These images contain many business secrets or personal information, such as engineering design drawings and commercial contracts. Thus, users encrypt images before they are uploaded. However, cloud servers have to hide secret data in encrypted images to enable the retrieval and verification of massive encrypted images. To ensure that both the secret data and the original images can be extracted and recovered losslessly, researchers have proposed a method that is known as reversible data hiding in encrypted images (RDHEI). In this paper, a new RDHEI method using median edge detector (MED) and two’s complement is proposed. The MED prediction method is used to generate the predicted values of the original pixels and calculate the prediction errors. The adaptive-length two’s complement is used to encode the most prediction errors. To reserve room, the two’s complement is labeled in the pixels. To record the unlabeled pixels, a label map is generated and embedded into the image. After the image has been encrypted, it can be embedded with the data. The experimental results indicate that the proposed method can reach an average embedding rate of 2.58 bpp, 3.04 bpp, and 2.94 bpp on the three datasets, i.e., UCID, BOSSbase, BOWS-2, which outperforms the previous work.

Highlights

  • Data-hiding technology [1] plays a significant role in image fields such as identification, annotation, and copyright

  • We propose a new reversible data hiding in encrypted images (RDHEI) method based on median edge detector (MED) and two’s complement

  • The MED prediction method is used to predict the pixels in the image

Read more

Summary

Introduction

Data-hiding technology [1] plays a significant role in image fields such as identification, annotation, and copyright. The traditional data-hiding method [2] causes permanent distortion of the original images. Medical, and military fields, each bit of an image is essential, and any distortion in images is unacceptable. This has led to an interest in the reversible data-hiding (RDH) method. RDH methods [3,4,5] can hide data and achieve the lossless recovery of the original images.

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call