Fake profile detection in social media using image processing and machine learning
Date
2021-06Publisher
Brac UniversityAuthor
Sen, ShuvaIslam, Mohammad Intisarul
Azim, Samiha Sofrana
Norin, Fatema Akhtar
Shuha, Samiha Tasnim
Metadata
Show full item recordAbstract
Almost everybody has a social media presence in today’s technologically advanced
world. As a result, making fake accounts is very easy. The term ”fake profile”
refers to a person who may pretend to be someone else. These accounts are mostly
used to impersonate others and defame them. Furthermore, a fake account can
be used for various reasons, including igniting political feuds, spreading misleading
facts, and disseminating news about current sensitive topics. Since fake profiles
pose such a serious threat to everyone, a model was proposed that might aid in
the reduction of fake profiles. It can assist with identifying accounts that could be
accused of being fraudulent, such as those without a profile photo. To ensure that
each user has a unique profile, machine learning and image recognition was used in
our model. Our model attempted to discourage users from creating accounts using
the photo or knowledge of another person. To do this, One Time Password (OTP)
was implemented so that fake users can not get the chance to create an account
by using another person’s name. Fake accounts needed to identify by using deep
learning from a real dataset of people’s answers. To detect the false results, the
k-means algorithm was implemented on our dataset. When the k-means clustering
algorithm was used on the dataset, it was discovered that our detection accuracy
was 75.30 percent.