Techniques for Improving Visual Security |
Author(s): |
| Aswini Prasad , Mount Zion college of Engineering |
Keywords: |
| Visual Security Index, Edge Detection, Texture Features, Human Visual System, Selective Encryption |
Abstract |
|
Visual data security is ensuring that information cannot be seen by unauthorized individuals. This is particularly important when dealing with private or sensitive information, and the threat of a breach has risen enormously with the shift in working practices towards increased mobility, flexibility and shared resources. In the development in recent decades of various efficient image encryption algorithms, such as selective encryption, a great demand has arisen for methods of examining the visual security of encrypted images. Existing solutions usually adopt well-known metrics to measure the quality of encrypted images, but they often show undesired behavior on perceptually encrypted images of low quality. In this paper, we propose a novel visual security index (VSI) based on the human visual system. The proposed VSI evaluates two aspects of the content similarity between plain and encrypted images: the edge similarity extracted via multi-threshold edge detection and the texture similarity measured by means of the co-occurrence matrix. These two components are further integrated to obtain the proposed VSI through adaptive similarity weighting. Extensive experiments were performed on two publicly available image databases. |
Other Details |
|
Paper ID: IJSRDV4I100297 Published in: Volume : 4, Issue : 10 Publication Date: 01/01/2017 Page(s): 782-785 |
Article Preview |
|
|
|
|
