DIGITAL IMAGE FORENSICS IN THE CONTEXT OF BIOMETRICS
Digital image forensics entails the deduction of the origin, history and authenticity of a digital image. While a number of powerful techniques have been developed for this purpose, much of the focus has been on images depicting natural scenes and generic objects. In this thesis, we direct our focus on biometric images, viz., iris, ocular and face images.Firstly, we assess the viability of using existing sensor identification schemes developed for visible spectrum images on near-infrared (NIR) iris and ocular images. These schemes are based on estimating the multiplicative sensor noise that is embedded in an input image. Further, we conduct a study analyzing the impact of photometric modifications on the robustness of the schemes. Secondly, we develop a method for sensor de-identificaton, where the sensor noise in an image is suppressed but its biometric utility is retained. This enhances privacy by unlinking an image from its camera sensor and, subsequently, the owner of the camera. Thirdly, we develop methods for constructing an image phylogeny tree from a set of near-duplicate images. An image phylogeny tree captures the relationship between subtly modified images by computing a directed acyclic graph that depicts the sequence in which the images were modified. Our primary contribution in this regard is the use of complex basis functions to model any arbitrary transformation between a pair of images and the design of a likelihood ratio based framework for determining the original and modified image in the pair. We are currently integrating a graph-based deep learning approach with sensor-specific information to refine and improve the performance of the proposed image phylogeny algorithm.
Read
- In Collections
-
Electronic Theses & Dissertations
- Copyright Status
- Attribution 4.0 International
- Material Type
-
Theses
- Authors
-
Banerjee, Sudipta
- Thesis Advisors
-
Ross, Arun
- Committee Members
-
Jain, Anil
Aviyente, Selin
Tong, Yiying
- Date Published
-
2020
- Subjects
-
Computer science
- Program of Study
-
Computer Science - Doctor of Philosophy
- Degree Level
-
Doctoral
- Language
-
English
- Pages
- 214 pages
- Permalink
- https://doi.org/doi:10.25335/d9dj-3131