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Recognition of Situations on Set of Moving Objects using Fuzzy Finite State Machines and Dynamic Programming

Authors: Devyatkov V.V., Lychkov I.I. Published: 02.08.2017
Published in issue: #4(115)/2017  
DOI: 10.18698/0236-3933-2017-4-64-78

 
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing  
Keywords: computer vision, moving objects, time series, recognition of situations, dynamic programming

Recognition of situations on set of moving objects is a crucial task for human security in transport and public places. This work improves time series approach to recognition of situations based on the analysis of time series of moving object coordinates. Hidden Markov model, dynamic time warping and finite state machines are the most studied time series methods for recognition of situations. Methods based on hidden Markov model and dynamic time warping were originally developed for recognition of situations in presence of noise in time series; however, they require laborious programming by examples. Methods based on finite state machine are training free, however, they require extra tools for noise eliminations, e.g. filters, and lose accuracy under noisy conditions. This work proposes a new time-series method for recognition of situations which is training free and resistant to faulty readings.

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