Artificial Intelligent Collaborative Synchronous in Realtime using High Speed Verify-Identify Tracking Recognition for E-learning
Main Article Content
Abstract
Collaborative Synchronous e-Learning can provide high levels of interaction for distance learning initiatives. With the rapid evolution of technology, face recognition login and tracking, continuous product evaluation is necessary to ensure optimal methods and resources for connecting students, instructors, and educational content in rich, online learning communities. This article presents the analysis of online, synchronous learning solutions. We are focusing on their abilities to meet technical and pedagogical needs in higher education. To make a solid comparison, the systems were examined in online classrooms with instructors, guest speakers, and students. Relative to usability, instructional needs, technical aspects, and compatibility are outlined for systems. We propose Verify-Identify Tracking Recognition Model for five algorithms. The result of the experiment, (2D)2PCA algorithm can recognize learner’s accuracy for Verify- Identify learner 99.46 percentage for 50 learners.
Article Details
Section
ACTIS Article
It is the policy of ACTISNU to own the copyright to the published contributions on behalf of the interests of ACTISNU, its authors, and their employers, and to facilitate the appropriate reuse of this material by others. To comply with the Copyright Law, authors are required to sign an ACTISNU copyright transfer form before publication. This form, a copy of which appears in this journal (or website), returns to authors and their employers full rights to reuse their material for their own purposes.