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Using Unsupervised Anomaly Detection to Analyze Physiological Signals for Emotion Recognition

机译:使用无监督异常检测来分析情感识别的生理信号

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An increase in the collection of physiological signals, whether done implicitly in wearable or IoT device or explicitly in experimental and laboratory environments, creates the need for development of smart systems and tools capable of data analysis with limited expert knowledge. Anomaly detection, specifically unsupervised anomaly detection can be used to design a tool or even as a tool to help remedy this issue. This paper will focus on how unsupervised anomaly detection can be utilized for the development of such systems. A systematic, robust, and customizable approach will be presented and preliminary results will be shown that open the door for future research and algorithm development.
机译:生理信号收集的增加,无论是隐含的可穿戴或物联网设备还是明确地在实验和实验室环境中明确地完成,都会创造了能够通过有限的专业知识进行数据分析的智能系统和工具的发展。异常检测,特别是无监督的异常检测可用于设计工具甚至作为帮助解决此问题的工具。本文将重点关注无监督的异常检测如何用于开发这种系统。将提出系统,鲁棒,可定制的方法,并将显示初步结果,为未来的研究和算法开发开门。

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