Authors :
Prasham Mehta; Keval Shah; Rohit Raval; Manan Shah
Volume/Issue :
Volume 8 - 2023, Issue 7 - July
Google Scholar :
https://bit.ly/3TmGbDi
Scribd :
https://tinyurl.com/mrpkumc8
DOI :
https://doi.org/10.5281/zenodo.8216733
Abstract :
With the growing popularity of online dating
platforms, concerns regarding user privacy and data
security have become increasingly significant. In this
research paper, we propose a dating web application
that prioritizes user privacy while offering secure data
management. The application incorporates a unique face
recognition system, horoscope-based matching,
compatibility percentage, and location-based filtering to
help users find potential partners with ease. By
employing face verification at regular intervals, the
application ensures that users are personally engaged in
conversations, reducing the possibility of third-party
involvement and increasing transparency[2].
Furthermore, the application employs a comprehensive
registration process, including face registration, to
minimize fake accounts and enhance user authenticity.
Users have the flexibility to customize their profiles by
appending horoscopes, editing bios, and adding
images[1]. The application streamlines the matching
process, allowing users to double-tap to express interest
and swipe left or right to view the next profile. A
bookmarking feature is also provided to facilitate future
interactions or changes in user actions. Notably, the
application eliminates the common practice of charging
users to identify who has liked their profiles, providing
instant access to interested individuals and fostering
prompt communication. To enhance user experience, the
application employs scrolling functionality for profile
browsing and empowers users with the ability to
personalize the application's themes to suit their
preferences[1]. Once mutual interest is established, a
real-time chat messaging feature is activated, enabling
users to engage in meaningful conversations and foster
connections. The backend infrastructure leverages Face
Net and other machine learning models to implement the
proposed functionalities effectively. The process involves
registering the user's face during initial setup, followed
by regular face verification at 60-second intervals. To
optimize storage and processing, a machine learning
model is employed to extract and store only the essential
features from the images, resulting in efficient data
management and improved processing speed[11].
Keywords :
Dating Web Application, Privacy-Preserving, Face Recognition, Compatibility Matching, user Authenticity, Machine Learning, Real-Time Chat Messaging.
With the growing popularity of online dating
platforms, concerns regarding user privacy and data
security have become increasingly significant. In this
research paper, we propose a dating web application
that prioritizes user privacy while offering secure data
management. The application incorporates a unique face
recognition system, horoscope-based matching,
compatibility percentage, and location-based filtering to
help users find potential partners with ease. By
employing face verification at regular intervals, the
application ensures that users are personally engaged in
conversations, reducing the possibility of third-party
involvement and increasing transparency[2].
Furthermore, the application employs a comprehensive
registration process, including face registration, to
minimize fake accounts and enhance user authenticity.
Users have the flexibility to customize their profiles by
appending horoscopes, editing bios, and adding
images[1]. The application streamlines the matching
process, allowing users to double-tap to express interest
and swipe left or right to view the next profile. A
bookmarking feature is also provided to facilitate future
interactions or changes in user actions. Notably, the
application eliminates the common practice of charging
users to identify who has liked their profiles, providing
instant access to interested individuals and fostering
prompt communication. To enhance user experience, the
application employs scrolling functionality for profile
browsing and empowers users with the ability to
personalize the application's themes to suit their
preferences[1]. Once mutual interest is established, a
real-time chat messaging feature is activated, enabling
users to engage in meaningful conversations and foster
connections. The backend infrastructure leverages Face
Net and other machine learning models to implement the
proposed functionalities effectively. The process involves
registering the user's face during initial setup, followed
by regular face verification at 60-second intervals. To
optimize storage and processing, a machine learning
model is employed to extract and store only the essential
features from the images, resulting in efficient data
management and improved processing speed[11].
Keywords :
Dating Web Application, Privacy-Preserving, Face Recognition, Compatibility Matching, user Authenticity, Machine Learning, Real-Time Chat Messaging.