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首页> 外文期刊>IEEE transactions on audio, speech and language processing >Position and Trajectory Learning for Microphone Arrays
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Position and Trajectory Learning for Microphone Arrays

机译:麦克风阵列的位置和轨迹学习

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In this paper, we tackle the problem of source localization by example. We present a methodology that allows a user to train a microphone array system using signals from a set of positions and trajectories and subsequently recall the localization information when presented with new input signals. To do so we present a new statistical model which is capable of accurately describing features from the cross spectra of the microphone signals so as to model the room responses from all positions of interest. We further extend this model to allow modeling of sequences of positions, thereby also enabling the learning and recognition of trajectories. Because of its learning nature this method provides practical advantages in setting up a microphone array, by not requiring favorable room acoustics, careful element positioning or uniformity of sensors. It also introduces an approach to localization which can be extended to other problems requiring models of transfer functions. We present tests on synthetic and real-world data and present the resulting recognition rates for a variety of situations
机译:在本文中,我们通过示例解决了源代码本地化问题。我们提出一种方法,允许用户使用来自一组位置和轨迹的信号训练麦克风阵列系统,并在出现新的输入信号时调用定位信息。为此,我们提出了一个新的统计模型,该模型能够准确地描述麦克风信号互谱中的特征,从而对所有感兴趣位置的房间响应进行建模。我们进一步扩展了该模型,以允许对位置序列进行建模,从而也可以学习和识别轨迹。由于其学习性质,该方法通过不需要有利的室内声学,小心的元件定位或传感器的均匀性而在设置麦克风阵列方面提供了实际的优势。它还介绍了一种本地化方法,该方法可以扩展到需要传递函数模型的其他问题。我们提供了对合成数据和真实数据的测试,并给出了各种情况下的识别率

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