Machine Learning Advances aiding Recognition and Classification of
Indian Monuments and Landmarks
- URL: http://arxiv.org/abs/2107.14070v1
- Date: Thu, 29 Jul 2021 15:01:02 GMT
- Title: Machine Learning Advances aiding Recognition and Classification of
Indian Monuments and Landmarks
- Authors: Aditya Jyoti Paul, Smaranjit Ghose, Kanishka Aggarwal, Niketha
Nethaji, Shivam Pal, Arnab Dutta Purkayastha
- Abstract summary: Tourism in India plays a quintessential role in the country's economy with an estimated 9.2% GDP share for the year 2018.
The industry holds a huge potential for being the primary driver of the economy as observed in the nations of the Middle East like the United Arab Emirates.
Machine learning approaches revolving around the usage of monument pictures have been shown to be useful for rudimentary analysis of heritage sights.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Tourism in India plays a quintessential role in the country's economy with an
estimated 9.2% GDP share for the year 2018. With a yearly growth rate of 6.2%,
the industry holds a huge potential for being the primary driver of the economy
as observed in the nations of the Middle East like the United Arab Emirates.
The historical and cultural diversity exhibited throughout the geography of the
nation is a unique spectacle for people around the world and therefore serves
to attract tourists in tens of millions in number every year. Traditionally,
tour guides or academic professionals who study these heritage monuments were
responsible for providing information to the visitors regarding their
architectural and historical significance. However, unfortunately this system
has several caveats when considered on a large scale such as unavailability of
sufficient trained people, lack of accurate information, failure to convey the
richness of details in an attractive format etc. Recently, machine learning
approaches revolving around the usage of monument pictures have been shown to
be useful for rudimentary analysis of heritage sights. This paper serves as a
survey of the research endeavors undertaken in this direction which would
eventually provide insights for building an automated decision system that
could be utilized to make the experience of tourism in India more modernized
for visitors.
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