Esports Athletes and Players: a Comparative Study

12/07/2018
by   Nikita Khromov, et al.
0

We present a comparative study of the players' and professional athletes' performance in Counter Strike: Global Offensive (CS:GO) discipline. Our study is based on ubiquitous sensing and machine learning which involves the analysis of game telemetry and physiological data. The research provides better understanding why the athletes demonstrate superior performance as compared to other players.

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