Affiliation:
1. Department of Computer Science and Engineering, IMS Engineering College, AKTU, Lucknow (UP), India.
Abstract
Music occupies a very important space in the heart
and life of common people and it is rather subjective and universal
nature indeed. Music Identifier System is obviously concerned
with providing a very meaningful and personalized
recommendation of items i.e. songs, music, playlist according to
the mood, emotion, interest and preference of the users or
listeners. With the advancement of technologies, rapid
development of internet, it has become very common to use the
streaming services to listen and enjoy music or songs in more
convenient ways. In this paper, an attempt has been made to
perform a comparative analysis, systematic research, empirical
thorough review on various approaches or strategies proposed and
applied by different researchers in the task of designing an
effective system for music identification or recommendation. The
basic theme of the paper includes music identifier system, its
components, and different features along with emphasize on the
methods, metrics, general framework and state-of-art strategies
proposed during the last two decades or so, have been empirically
reviewed. The existing studies were found lacking with systematic
research work on the behaviour, requirements and preferences of
the users plus poor level of extraction of features and limitations
in the area of evaluation of performance of the music identifier
systems. Although, the study reveals that systems based on
effective, social information, emotional-traits, content, context
and knowledge have been widely applied and improved the quality
of identification or recommendation of music to a large extend but
still it is not enough. In future, more in-depth studies or research
work need to be conducted based on enlarging the scope of further
development of personalized contextual awareness based music
identifier system and generating a continuous and automatic top
playlist of music and songs with added tracks matching with
profile, mood, emotional traits, and behaviour of the user in a
mobile environment.
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Management of Technology and Innovation,General Engineering
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