Data Sharing based on Facial Recognition Clusters

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Rajkumar Rajasekaran, Narayanamoorthi M, Rashi Solanki, Veer Sanghavi, Prashna Thapa, Jolly Masih

Abstract

The evolution of computer vision technologies has led to the emergence of novel applications across various sectors, with face detection and recognition systems taking center stage. In this research paper, we present a comprehensive examination and implementation of a face detection project that harnesses the cutting-edge face recognition model. Our primary aim is to create a reliable and effective system that can be seamlessly integrated into functions allowing users to input their image to capture their facial features, subsequently retrieving all images linked to their identity from a database. Our strategy capitalizes on the dlib library and its face recognition model, which com- bines advanced deep learning methods with traditional computer vision techniques to attain highly accurate face detection and recognition. The essential elements of our system encompass face detection, face recognition, and image retrieval. Initially, we employ the face recognition model to detect and pinpoint faces within the captured image. Following that, we employ facial landmarks and feature embeddings to recognize and match the detected face with entries in a database. Finally, we retrieve and present all images connected to the recognized individual. To validate the effectiveness of our system, we conducted extensive experiments on a diverse dataset that encompasses various lighting conditions, poses, and facial expressions. Our findings demonstrate exceptional accuracy and efficiency in both face detection and recognition, rendering our approach suitable for real-world applications. We envision a broad spectrum of potential applications for our system, including access control, event management, and personal media organization.

Article Details

How to Cite
Rajkumar Rajasekaran, et al. (2023). Data Sharing based on Facial Recognition Clusters. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 2351–2359. https://doi.org/10.17762/ijritcc.v11i9.9243
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Articles