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A Multiple Sources Localization Method Based on TDOA Without Association Ambiguity for Near and Far Mixed Field Sources

机译:基于TDOA的多种源定位方法,无关联临近近和远混域源的歧义

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摘要

A new method for multiple sources localization is proposed to eliminate association ambiguity for near and far mixed field sources. A spatial source localization model in the modified polar representation was constructed without the prior knowledge needed if the source is near-field or far-field. The localization model for multiple sources was deduced by using all the possible permutation of the TDOA sequences obtained from the original array by GCC-PHAT and the generalized trust region optimization processing method. In order to eliminate the phantom sources in the multiple sources localization, a set of calibration sub-arrays was constructed by switching the reference microphone in the array. The TDOA sequences of the estimated possible sources and all actual sources to the calibration sub-arrays were calculated separately. A reliability evaluation function was constructed based on the two sets of TDOA sequences, as well as a reliability evaluation between the sources identified by all the calibration sub-arrays. According to the principle of minimization of the reliability evaluation function, the real sources were screened out to solve the association ambiguity. Comparison analyses through simulation and experiment on real speech datasets were carried out under different localization scenarios. The results of simulation are consistent with the experimental results, which show that the proposed method effectively eliminates the phantom sources, and has higher positioning accuracy and robustness than the comparison methods, no matter sources are in the near-field or far-field.
机译:提出了一种用于多个源定位的新方法,以消除近乎和远的混合场源的关联歧义。如果源是近场或远场,则构建修改极性表示中的空间源定位模型。通过使用GCC-PHAT和广义信任区域优化处理方法使用从原始阵列获得的TDOA序列的所有可能的置换来推导到多个源的定位模型。为了消除多个源定位中的幻像源,通过在阵列中切换参考麦克风来构建一组校准子阵列。分别计算估计可能的源的TDOA序列和校准子阵列的所有实际源。基于两组TDOA序列构建可靠性评估功能,以及由所有校准子阵列识别的源之间的可靠性评估。根据可靠性评估功能最小化的原理,筛选了真实来源以解决关联歧义。通过仿真和实验在不同的本地化方案下进行实际语音数据集的比较分析。模拟结果与实验结果一致,表明该方法有效地消除了幻象来源,并且具有比比较方法更高的定位精度和鲁棒性,无论源位于近场或远场。

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