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首页> 外文期刊>IEEE sensors journal >Multilevel B-Splines-Based Learning Approach for Sound Source Localization
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Multilevel B-Splines-Based Learning Approach for Sound Source Localization

机译:基于多级B样条曲线的声源定位学习方法

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In this paper, a new learning approach for sound source localization is presented using ad hoc either synchronous or asynchronous distributed microphone networks based on the time differences of arrival (TDOA) estimation. It is first to propose a new concept in which the coordinates of a sound source location are defined as the functions of TDOAs, computing for each pair of microphone signals in the network. Then, given a set of pre-recorded sound measurements and their corresponding source locations, the multilevel B-splines-based learning model is proposed to be trained by the input of the known TDOAs and the output of the known coordinates of the sound source locations. For a new acoustic source, if its sound signals are recorded, the correspondingly computed TDOAs can be fed into the learned model to predict the location of the new source. Superiorities of the proposed method are to incorporate the acoustic characteristics of a targeted environment and even remaining uncertainty of TDOA estimations into the learning model before conducting its prediction and to be applicable for both synchronous or asynchronous distributed microphone sensor networks. The effectiveness of the proposed algorithm in terms of localization accuracy and computational cost in comparisons with the state-of-the-art methods was extensively validated on both synthetic simulation experiments as well as in three real-life environments.
机译:本文使用基于到达时间差异(TDOA)估计的时间差异,使用Ad Hoc或异步分布式麦克风网络呈现了一种新的声源定位学习方法。首先提出一种新的概念,其中声源位置的坐标被定义为TDOAS的功能,网络中的每对麦克风信号的计算。然后,给定一组预先记录的声音测量和它们的相应源位置,提出了由已知的TDOA的输入和声源位置的已知坐标的输出来训练基于多级B样条的学习模型。对于新的声学来源,如果记录其声音信号,则可以将相应计算的TDOAS进入学习模型以预测新来源的位置。所提出的方法的优势是纳入目标环境的声学特性,甚至在进行预测之前将TDOA估计的不确定性留在学习模型中,并且适用于同步或异步分布式麦克风传感器网络。在合成模拟实验以及三个现实生活环境中,广泛验证了所提出的算法在本地化准确性和计算成本方面的有效性。

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