On using web interfaces to analyze mobile device movements

Igor Petrov, Dmitry Namiot

Abstract


In this paper, we consider the algorithms for using web interfaces for analyzing the movements of mobile devices, and we also developed and implemented an algorithm for such a movement analysis with a user interface. The task is to create some universal JavaScript library that can be used in mobile web applications. The library used web interfaces to access device movement data. to analyze the movement of a mobile device. An algorithm for determining displacements, based on a comparison of the similarity of time series, is proposed and implemented. The analysis of the properties of the proposed algorithm is carried out. At this stage, the algorithm can with high probability detect the movement of the telephone for predefined sets of movements. To implement the algorithm, the latest standards of web programming languages and development technologies were used. Experiments were conducted on a real mobile device and conclusions were drawn on the implementation of the constructed algorithm. Using the web interface will allow you to apply the developed algorithm both in browser applications on mobile phones and in mobile applications that use web technologies in their source code. The developed algorithm does not depend on the platform of a specific mobile device, since the web interfaces used are supported in most existing mobile web platforms.


Full Text:

PDF (Russian)

References


Vremennoj rjad http://www.machinelearning.ru/wiki/index.php?title=%D0%92%D1%80%D0%B5%D0%BC%D0%B5%D0%BD%D0%BD%D0%BE%D0%B9_%D1%80%D1%8F%D0%B4 Retrieved: Apr, 2020

Ghazi Al-Naymat, Sanjay Chawla, Javid Taheri. Sparse DTW: A novel approach to speed up Dynamic Time Warping [Jelektronnyj resurs]. URL: https://arxiv.org/pdf/1201.2969v1.pdf

Eamonn J. Keogh, Michael J. Pazzani. Derivative Dynamic Time Warping, Section 1 [Jelektronnyj resurs]. URL: https://www.cs.rutgers.edu/~pazzani/Publications/sdm01.pdf Retrieved: Apr, 2020

Pavel Senin. Dynamic Time Warping Algorithm Review [Jelektronnyj resurs]. URL: http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.465.4905&rep=rep1&type=pdf Retrieved: Apr, 2020

Lindasalwa Muda, Mumtaj Begam and I. Elamvazuthi. Voice Recognition Algorithms using Mel Frequency Cepstral Coefficient (MFCC) and Dynamic Time Warping (DTW) Techniques // JOURNAL OF COMPUTING, VOLUME 2, ISSUE 3, MARCH 2010, ISSN 2151-9617 [Jelektronnyj resurs]. URL: https://arxiv.org/ftp/arxiv/papers/1003/1003.4083.pdf Retrieved: Apr, 2020

Titus Felix FURTUNĂ. Dynamic Programming Algorithms in Speech Recognition // Revista Informatica Economică nr, 2008 [Jelektronnyj resurs]. URL: http://www.revistaie.ase.ro/content/46/S%20-%20Furtuna.pdf Retrieved: Apr, 2020

Maher Khemakhem and Abdelfettah Belghith. Towards A Distributed Arabic OCR Based on the DTW Algorithm: Performance Analysis // The International Arab Journal of Information Technology, Vol. 6, No. 2, April 2009 [Jelektronnyj resurs]. URL: https://ccis2k.org/iajit/PDF/vol.6,no.2/7TDAOBDAPA153.pdf

W3C Web API https://www.w3.org/2006/webapi/ Retrieved: Apr, 2020

JavaScript Web API https://developer.mozilla.org/en-US/docs/Web/API Retrieved: Apr, 2020

Lin J., Khade R., Li Y. Rotation-invariant similarity in time series using bag-of-patterns representation //Journal of Intelligent Information Systems. – 2012. – T. 39. – #. 2. – S. 287-315.

Lhermitte S. et al. A comparison of time series similarity measures for classification and change detection of ecosystem dynamics //Remote sensing of environment. – 2011. – T. 115. – #. 12. – S. 3129-3152.

Namiot D., Pokusaev O. On mobility patterns in Smart City. – 2019.


Refbacks

  • There are currently no refbacks.


Abava  Absolutech Fruct 2020

ISSN: 2307-8162