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Detecting Outlier Behavior of Game Player Players Using Multimodal Physiology Data

机译:使用多模式生理数据检测游戏玩家的异常行为

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This paper describes an outlier detection system based on a multimodal physiology data clustering algorithm in a PC gaming environment. The goal of this system is to provide information on a game player's abnormal behavior with a bio-signal analysis. Using this information, the game platform can easily identify players with abnormal behavior in specific events. To do this, we propose a mouse device that measures the wearer's skin conductivity, temperature, and motion. We also suggest a Dynamic Time Warping (DTW) based clustering algorithm. The developed system examines the biometric information of 50 players in a bullet dodge game. This paper confirms that a mouse coupled with a physiology multimodal system is useful for detecting outlier behavior of game players in a non-intrusive way.
机译:本文介绍了一种在PC游戏环境中基于多模式生理数据聚类算法的异常值检测系统。该系统的目标是通过生物信号分析提供有关玩家异常行为的信息。使用此信息,游戏平台可以轻松识别在特定事件中行为异常的玩家。为此,我们提出了一种鼠标设备,该设备可测量佩戴者的皮肤电导率,温度和运动。我们还建议基于动态时间规整(DTW)的聚类算法。开发的系统可检查子弹躲避游戏中50名玩家的生物特征信息。本文证实,结合生理学多模式系统的鼠标可用于以非侵入方式检测游戏玩家的异常行为。

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