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Semi-Blind Model Adaptation using Piece-wise Energy Decay Curve for Large Reverberant Environments

机译:用于大型混响环境的典型能量衰减曲线的半盲模型适应

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This work presents semi-blind acoustic model adaptation based on a piece-wise energy decay curve. The dual slope representation of the piece-wise curve accurately captures the early and late reflection decay that helps in precisely modeling the smearing effect caused due to reverberation. The slopes are estimated in a semi-blind fashion, late reflection slope is estimated blindly by finding the highest likelihood obtained after matching the test features with Gaussian mixture models trained on reverberant data, while the early reflection slope is empirically computed. Adaptation using piece-wise decay curve, leads to robust acoustic models consequently improving the recognition performance. The approach is tested on connected digits recognition task in a lecture room with various large reverberation times. The performance is compared with the exponential decay approach and incremental MLLR, where the proposed technique is found to be robust and consistent across all the cases.
机译:该工作介绍了基于碎片能量衰减曲线的半盲声学模型适应。片断曲线的双斜率表示精确地捕获早期和后期反射衰减,有助于精确地建模由于混响引起的涂抹效应。斜坡以半盲的方式估计,通过找到在与混响数据培训的高斯混合模型匹配后获得的最高似然来盲目地估计晚期反射斜率,同时经过经验计算早期反射斜率。使用转换器衰减曲线的适应导致强大的声学模型,从而提高了识别性能。该方法在讲座室中的连接数字识别任务上进行了测试,具有各种大的混响时间。将性能与指数衰减方法和增量MLLR进行比较,其中建议的技术被发现在所有情况下具有稳健和一致。

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