Title
Optimal Histogram-Pair and Prediction-Error Based Reversible Data Hiding for Medical Images.
Abstract
In recent years, with the development of application research on medical images and medical documents, it is urgent to embed data, such as patient’s personal information, diagnostic information and verification information into medical images. Reversible data hiding for medical images is the technique of embedding medical data into medical images. However, most existed schemes of reversible data hiding for medical images could not achieve high performance and high payloads. This paper presents a reversible data hiding scheme for medical images based on histogram-pair and prediction-error. As the prediction-error histogram of medical images, compared with the gray level histogram of medical images, is more in line with quasi-Laplace distribution, histogram-pair and prediction-error based method could achieve high performance. We adjust the following four thresholds for optimal performance: embedding threshold, fluctuation threshold, left- and right-histogram shrinking thresholds. The left- and right-histogram shrinking thresholds are used not only to avoid underflow and/or overflow but also to achieve optimum performance. Compared to previous works, the proposed scheme has significant improvement in embedding capacity and marked image quality for medical images.
Year
Venue
Field
2015
IWDW
Computer vision,Histogram,Mean squared prediction error,Arithmetic underflow,Embedding,Computer science,Information hiding,Image quality,Artificial intelligence,Personally identifiable information,Payload
DocType
Citations 
PageRank 
Conference
1
0.35
References 
Authors
4
5
Name
Order
Citations
PageRank
Xuefeng Tong1956.88
Xin Wang219453.80
Guorong Xuan363851.20
Shumeng Li410.35
Yun Q. Shi52918199.53