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Sound collection and visualization system enabled participatory and opportunistic sensing approaches

机译:合唱音响和可视化系统支持参与式和机会主义的传感方法

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This paper presents a sound collection system to visualize environmental sounds that are collected using a crowd-sourcing approach. An analysis of physical features is generally used to analyze sound properties; however, human beings not only analyze but also emotionally connect to sounds. If we want to visualize the sounds according to the characteristics of the listener, we need to collect not only the raw sound, but also the subjective feelings associated with them. For this purpose, we developed a sound collection system using a crowdsourcing approach to collect physical sounds, their statistics, and subjective evaluations simultaneously. We then conducted a sound collection experiment using the developed system on ten participants. We collected 6,257 samples of equivalent loudness levels and their locations, and 516 samples of sounds and their locations. Subjective evaluations by the participants are also included in the data. Next, we tried to visualize the sound on a map. The loudness levels are visualized as a color map and the sounds are visualized as icons which indicate the sound type. Finally, we conducted a discrimination experiment on the sound to implement a function of automatic conversion from sounds to appropriate icons. The classifier is trained on the basis of the GMM-UBM (Gaussian Mixture Model and Universal Background Model) method. Experimental results show that the F-measure is 0.52 and the AUC is 0.79.
机译:本文介绍了一个健全的集合系统,可视化使用人群采购方法收集的环境声音。对物理特征的分析通常用于分析声音特性;然而,人类不仅分析而且在情绪上连接到声音。如果我们想根据侦听器的特征可视化声音,我们不需要收集原始声音,也需要与它们相关的主观感受。为此目的,我们开发了一种使用众群方法,同时收集物理声音,统计数据和主观评估的合作系统。然后,我们在十名参与者上使用开发系统进行了合流收集实验。我们收集了6,257个等效响度水平和位置的样本,以及516个声音样本及其位置。参与者的主观评估也包含在数据中。接下来,我们试图在地图上可视化声音。响度水平被视为彩色图,声音被视为指示声音类型的图标。最后,我们在声音上进行了一个歧视实验,以实现从声音到适当的图标的自动转换的功能。分类器是基于GMM-UBM(高斯混合模型和通用背景模型)方法的培训。实验结果表明,F测量为0.52,AUC为0.79。

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