paper 5, Detecting Tampered Image Based on Contrast Enhancement of Y Channel
Table of Contents
- Session 1 of Future Computer and Communication 2011
- 1. Integrating Entanglement Swapping into Secure Socket Layer — Handshake Protocol
- Session 2 of Future Computer and Communication 2011
- 11. Scene Change Detection with Temporally Constrained Clustering
- Session 3 of Future Computer and Communication 2011
- 21. Walking Compensation Treadmill Based System: Device, Environment and Testing Method
- Session 4 of Future Computer and Communication 2011
- 31. Hidden Coupling and Its Impact on Software Reliability
- Session 1 of Mathematics in Business and Economics 2011
- 40. Modeling Operational Risk in Financial Institutions: Application and Improvement on EVT
- 44. The Effects of Split Share Structure on Accounting Conservatism—Evidence from Chinese Listed Firms
- Session 1 of Mathematics and Geosciences 2011
- 46. Application of Three-Dimensional Terrain Modeling Technology of Gan Jiang Yuan
- Session 1 of Mathematics and Arts 2011
- 51. Automatic Masked Morphing for 3D Facial Animations
- Session 2 of Mathematics and Arts 2011
- 61. Structural Instability for Solo Piano (2007) by Greek Composer Fani Kosona
- Session 3 of Mathematics and Arts 2011
- 71. The Creation of the Modal through Symmetry in Liviu Glodeanu's Musical Composition
Chapter Contents
- Abstract
- Key Words
- 1. Introduction
- 2. Related Work
- 3. Methodology
- 4. Evalution and Experiments
- 5. Conclusions and Ruture Work
- Acknowledgement
- References
Excerpt
During the image tampering, contrast enhancement operation is often used to highlight some information, weaken or remove some unwanted information in images. However, this operation simultaneously leaves specific fingerprints in the image's pixel value histogram. This paper presents a wavelet analysis method to detect tampering image. We firstly convert the RGB color space into YCbCr color space, and extract the Y monochrome channel image; secondly, the normalized energy is calculated in the wavelet details sub-bands after wavelet transform of image's pixel value histogram of the component; finally, the altered image will be identified according to the normalized energy. The contrast experiment results about wavelet transform and Fourier transform indicate that the former is better than the latter in both false positive rates and time complexity. In addition, the proposed wavelet analysis approach can be applied to detect local contrast enhanced image, too. The results of the experiment show there is an obvious distinction between tampered and unaltered sub-blocks divided.
©2011 ASME


This Publication
Scitation
SPIN
Scitopia
Google Scholar
PubMed