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Audio signal classification in reverberant environments based on fuzzy-clustered ad-hoc microphone arrays

机译:基于模糊聚类自组织麦克风阵列的混响环境中的音频信号分类

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Audio signal classification suffers from the mismatch of environmental conditions when training data is based on clean and anechoic signals and test data is distorted by reverberation and signals from other sources. In this contribution we analyze the classification performance for such a scenario with two concurrently active sources in a simulated reverberant environment. To obtain robust classification results, we exploit the spatial distribution of ad-hoc microphone arrays to capture the signals and extract cepstral features. Based on these features only, we use unsupervised fuzzy clustering to estimate clusters of microphones which are dominated by one of the sources. Finally, signal classification based on clean and anechoic training data is performed for each of the cluster. The probability of cluster membership for each microphone is provided by the fuzzy clustering algorithm and is used to compute a weighted average of the feature vectors. It is shown that the proposed method exceeds the performance of classification based on single microphones.
机译:当训练数据是基于干净和无回声的信号,并且测试数据会因混响和其他来源的信号而失真时,音频信号的分类会遭受环境条件的不匹配。在此贡献中,我们分析了在模拟混响环境中具有两个同时活动源的这种情况下的分类性能。为了获得可靠的分类结果,我们利用临时麦克风阵列的空间分布来捕获信号并提取倒谱特征。仅基于这些功能,我们使用无监督的模糊聚类来估计由信号源之一控制的麦克风的群集。最后,针对每个群集执行基于干净和无回声训练数据的信号分类。每个麦克风的群集成员资格概率由模糊群集算法提供,并用于计算特征向量的加权平均值。结果表明,所提出的方法超过了基于单个麦克风的分类性能。

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