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Pulsed Melodic Affective Processing: Musical structures for increasing transparency in emotional computation

机译:脉冲旋律情感处理:用于增加情感计算透明度的音乐结构

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摘要

Pulsed Melodic Affective Processing (PMAP) is a method for the processing of artificial emotions in affective computing. PMAP is a data stream designed to be listened to, as well as computed with. The affective state is represented by numbers that are analogues of musical features, rather than by a binary stream. Previous affective computation has been done with emotion category indices, or real numbers representing various emotional dimensions. PMAP data can be generated directly by sound (e.g. heart rates or key-press speeds) and turned directly into music with minimal transformation. This is because PMAP data is music and computations done with PMAP data are computations done with music. This is important because PMAP is constructed so that the emotion that its data represents at the computational level will be similar to the emotion that a person "listening" to the PMAP melody hears. Thus, PMAP can be used to calculate "feelings" and the result data will "sound like" the feelings calculated. PMAP can be compared to neural spike streams, but ones in which pulse heights and rates encode affective information. This paper illustrates PMAP in a range of simulations. In a multi-agent simulation, initial results support that an affective multi-robot security system could use PMAP to provide a basic control mechanism for "search-and-destroy". Results of fitting a musical neural network with gradient descent to help solve a text emotional detection problem are also presented. The paper concludes by discussing how PMAP may be applicable in the stock markets, using a simplified order book simulation.
机译:脉冲旋律情感处理(PMAP)是一种在情感计算中处理人工情感的方法。 PMAP是设计用于侦听和计算的数据流。情感状态由与音乐特征类似的数字表示,而不是由二进制流表示。先前的情感计算已使用情感类别索引或代表各种情感维度的实数完成。 PMAP数据可以直接通过声音(例如心律或按键速度)生成,并可以以最小的转换直接转化为音乐。这是因为PMAP数据是音乐,而使用PMAP数据进行的计算是使用音乐进行的计算。这一点很重要,因为构建了PMAP,以便其数据在计算级别上代表的情绪类似于“侦听” PMAP旋律的人所听到的情绪。因此,PMAP可用于计算“感觉”,并且结果数据将“听起来像”所计算的感觉。可以将PMAP与神经峰值流进行比较,但是可以将脉冲高度和速率编码为情感信息。本文在一系列模拟中说明了PMAP。在多主体仿真中,初步结果支持情感多机器人安全系统可以使用PMAP为“搜索与破坏”提供基本控制机制。还介绍了使用梯度下降拟合音乐神经网络以帮助解决文本情感检测问题的结果。本文通过使用简化的订单簿模拟来讨论PMAP如何在股票市场中适用。

著录项

  • 来源
    《Simulation》 |2014年第5期|606-622|共17页
  • 作者

    Alexis Kirke; Eduardo Miranda;

  • 作者单位

    Interdisciplinary Centre for Computer Music Research, School of Humanities, Music and Performing Arts, University of Plymouth, Plymouth, UK,Interdisciplinary Centre for Computer Music Research, Plymouth University, Smeaton Building, Room 206, Drake Circus, Plymouth PL4 8AA, UK;

    Interdisciplinary Centre for Computer Music Research, School of Humanities, Music and Performing Arts, University of Plymouth, Plymouth, UK;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Communications; human-computer interaction; music; affective computing; Boolean logic; neural networks; emotions; multi-agent systems; robotics;

    机译:通讯;人机交互;音乐;情感计算;布尔逻辑;神经网络;情绪多代理系统;机器人技术;

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