In this project, we are developing an advanced media player which plays and pauses the video by detecting the users face
looking at screen or not. System monitors whether the user is looking at the screen or not using a web camera. If yes then doesn't
interrupts the video and allows it to play. In case if the user is not looking at the or say the system couldn't detect the users face then it
immediately stops the video. We are trying to add a feature of controlling other features of media player such as noise detection.
Published In:IJCSN Journal Volume 6, Issue 3
Date of Publication : June 2017
Pages : 392-394
Figures :03
Tables : --
Suraj Mane : Computer Department, Savitribai Phule Pune University(SPPU),
Sinhgad Academy Of Engineering, Pune 411038.
Aaditya Shah : Computer Department, Savitribai Phule Pune University(SPPU),
Sinhgad Academy Of Engineering, Pune 411038.
Nirmit Shrivastava : Computer Department, Savitribai Phule Pune University(SPPU),
Sinhgad Academy Of Engineering, Pune 411038.
Ankit Srivastava : Computer Department, Savitribai Phule Pune University(SPPU),
Sinhgad Academy Of Engineering, Pune 411038.
Bhushan Thakare : Computer Department, Savitribai Phule Pune University(SPPU),
Sinhgad Academy Of Engineering, Pune 411038.
Media Player
The main concern of this project is to assist the user to
get best experience of using a media player. We have
tried to realize this goal by automating the media player
in a very wide extent. We do this by implementing face
detection and noise detection for dominant variety of
options of the media player such as pausing and again
and again when the user is not monitoring the screen.
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[8] Nirmit Shrivastava, Ankit Srivastava, Suraj D Mane,
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detection and algorithms.” (IJAERD) 2017
http://ijaerd.com/PapersDetails.php?rqds=73287
http://ijaerd.com/papers/finished_papers/A%20survey
%20of%20voice%20detection%20and%20recognitio
n%20algorithms-IJAERDV04I0273287.pdf