(Publisher of Peer Reviewed Open Access Journals)

ACCENTS Transactions on Image Processing and Computer Vision (TIPCV)

ISSN (Print):    ISSN (Online):2455-4707
Volume-5 Issue-14 February-2019
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Paper Title : Machine learning applications to smart city
Author Name : Badri Narayan Mohapatra and Prangya Prava Panda
Abstract :

The basic need of human is increasing as they interact with different devices and also, they provide many feedbacks. Many smart devices generate high data and that can be retrieved and reviewed by humans. Applications are not fixed as it increases day to day life. Based on these data generated by different smart devices and smart city applications machine learning approach is the best adaptive solution. Rapid development in software, hardware with high speed internet connection provides large data to this physical world. The key contribution of this paper is a machine learning application survey towards smart city.

Keywords : Smart city, Machine learning, Machine learning algorithm, Smart city application.
Cite this article : Mohapatra BN, Panda PP. Machine learning applications to smart city. ACCENTS Transactions on Image Processing and Computer Vision. 2019; 5 (14): 1-6. DOI:10.19101/TIPCV.2018.412004.
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