Biblio
As the assets of people are growing, security and surveillance have become a matter of great concern today. When a criminal activity takes place, the role of the witness plays a major role in nabbing the criminal. The witness usually states the gender of the criminal, the pattern of the criminal's dress, facial features of the criminal, etc. Based on the identification marks provided by the witness, the criminal is searched for in the surveillance cameras. Surveillance cameras are ubiquitous and finding criminals from a huge volume of surveillance video frames is a tedious process. In order to automate the search process, proposed a novel smart methodology using deep learning. This method takes gender, shirt pattern, and spectacle status as input to find out the object as person from the video log. The performance of this method achieves an accuracy of 87% in identifying the person in the video frame.
The present study's primary objective is to try to determine whether gender, combined with the educational background of the Internet users, have an effect on the way online privacy is perceived and practiced within the cloud services and specifically in social networking, e-commerce, and online banking. An online questionnaire was distributed through e-mail and the social media (Facebook, LinkedIn, and Google+). Our primary hypothesis is that an interrelationship may exist among a user's gender, educational background, and the way an online user perceives and acts regarding online privacy. An analysis of a representative sample of Greek Internet users revealed that there is an effect by gender on the online users' awareness regarding online privacy, as well as on the way they act upon it. Furthermore, we found that a correlation exists, as well regarding the Educational Background of the users and the issue of online privacy.