Integrity analysis and detection of digital forensic evidences
Abstract
Technology has improved people’s day to day activities like how we communicate
and access information. These days people are equipped with a digital camera
and mobile phone and they tend to record almost everything happening around
them like capturing food they are having or capturing beautiful sceneries around
them. Maintaining image integrity is not crucial in informal situations but it is very
important to maintain for forensics scientists who are dealing with digital forensic
evidence. Recently in our country, a new law has been passed which states that from
now on digital proofs can be used in court as evidence. As we know, digital files can
be modified; hence the authentication of each and every piece of digital evidence has
to be verified manually by experts. There are some researches on this, but could
not find any feasible publicly available datasets to work on tools that can detect
tampered automatically. My target is to build a dataset consisting of copy-move
and cut-paste image forgeries created from the original images; and build a system
with CNN models that will detect and automatically exclude photographs that have
obvious, and medium levels of modification which will ease the pressure on digital
forensics scientists.