Title :
Exposing Digital Image Forgeries by Illumination Color Classification
Author :
de Carvalho, T.J. ; Riess, C. ; Angelopoulou, Elli ; Pedrini, Helio ; de Rezende Rocha, A.
Author_Institution :
RECOD Lab., Univ. of Campinas, Campinas, Brazil
Abstract :
For decades, photographs have been used to document space-time events and they have often served as evidence in courts. Although photographers are able to create composites of analog pictures, this process is very time consuming and requires expert knowledge. Today, however, powerful digital image editing software makes image modifications straightforward. This undermines our trust in photographs and, in particular, questions pictures as evidence for real-world events. In this paper, we analyze one of the most common forms of photographic manipulation, known as image composition or splicing. We propose a forgery detection method that exploits subtle inconsistencies in the color of the illumination of images. Our approach is machine-learning-based and requires minimal user interaction. The technique is applicable to images containing two or more people and requires no expert interaction for the tampering decision. To achieve this, we incorporate information from physics- and statistical-based illuminant estimators on image regions of similar material. From these illuminant estimates, we extract texture- and edge-based features which are then provided to a machine-learning approach for automatic decision-making. The classification performance using an SVM meta-fusion classifier is promising. It yields detection rates of 86% on a new benchmark dataset consisting of 200 images, and 83% on 50 images that were collected from the Internet.
Keywords :
Internet; decision making; edge detection; image classification; image colour analysis; image segmentation; image texture; image thinning; learning (artificial intelligence); lighting; photography; security of data; Internet; SVM meta-fusion classiffier; analog pictures; automatic decision-making; benchmark dataset; digital image editing software; digital image forgeries; edge-based features; expert knowledge; illumination color classification; image composition; image illumination; image modification; image splicing; machine learning-based approach; photographic manipulation; photographs; physics-based illuminant estimators; real-world events; space-time events; statistical-based illuminant estimators; tampering decision; texture-based features; user interaction; Cameras; Estimation; Forgery; Image color analysis; Image edge detection; Image segmentation; Lighting; Color constancy; illuminant color; image forensics; machine learning; spliced image detection; texture and edge descriptors;
Journal_Title :
Information Forensics and Security, IEEE Transactions on
DOI :
10.1109/TIFS.2013.2265677