A Smart Security System with Face Recognition
This work addresses home security for residents, but it is incremental as it builds on existing deep learning frameworks.
The paper tackles home security by proposing a face recognition system that grants access to authenticated users, achieving incremental accuracy improvement through adaptive learning and human interaction.
Web-based technology has improved drastically in the past decade. As a result, security technology has become a major help to protect our daily life. In this paper, we propose a robust security based on face recognition system (SoF). In particular, we develop this system to giving access into a home for authenticated users. The classifier is trained by using a new adaptive learning method. The training data are initially collected from social networks. The accuracy of the classifier is incrementally improved as the user starts using the system. A novel method has been introduced to improve the classifier model by human interaction and social media. By using a deep learning framework - TensorFlow, it will be easy to reuse the framework to adopt with many devices and applications.