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Self-localization of dynamic user-worn microphones from observed speech

机译:根据观察到的语音对动态用户佩戴的麦克风进行自定位

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The increase of mobile devices and most recently wearables has raised the interest to utilize their sensors for various applications such as indoor localization. We present the first acoustic self-localization scheme that is passive, and is capable of operating when sensors are moving, and possibly unsynchronized. As a result, the relative microphone positions are obtained and therefore an ad hoc microphone array has been established. The proposed system takes advantage of the knowledge that a device is worn by its user e.g. attached to his/her clothing. A user here acts as a sound source and the sensor is the user-worn microphone. Such an entity is referred to as a node. Node-related spatial information is obtained from Time Difference of Arrival (TDOA) estimated from audio captured by the nodes. Kalman filtering is used for node tracking and prediction of spatial information during periods of node silence. Finally, the node positions are recovered using multidimensional scaling (MDS). The only information required by the proposed system is observations of sounds produced by the nodes such as speech to localize the moving nodes. The general framework for acoustic self-localization is presented followed by an implementation to demonstrate the concept. Real data collected by off-the-shelf equipment is used to evaluate the positioning accuracy of nodes in contrast to image based method. The presented system achieves an accuracy of approximately 10 cm in an acoustic laboratory. (C) 2016 Elsevier Ltd. All rights reserved.
机译:移动设备和最近可穿戴设备的增长引起了人们的兴趣,将其传感器用于各种应用,例如室内定位。我们提出了第一个无源声学自定位方案,该方案能够在传感器移动且可能不同步时运行。结果,获得了麦克风的相对位置,因此已经建立了自组织麦克风阵列。所提出的系统利用了设备例如其用户佩戴设备的知识。附在他/她的衣服上。用户在这里充当声源,传感器是用户佩戴的麦克风。这样的实体称为节点。节点相关的空间信息是从到达时间差(TDOA)中获得的,该时间差是根据节点捕获的音频估算的。卡尔曼滤波用于节点静默期间的节点跟踪和空间信息预测。最后,使用多维缩放(MDS)恢复节点位置。提出的系统所需的唯一信息是对节点产生的声音(例如语音)的观察,以定位移动节点。提出了声学自定位的一般框架,然后介绍了该概念的实现。与基于图像的方法相比,使用现成的设备收集的真实数据来评估节点的定位精度。所提出的系统在声学实验室中可达到约10 cm的精度。 (C)2016 Elsevier Ltd.保留所有权利。

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