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Bayesian Regularization and Nonnegative Deconvolution for Room Impulse Response Estimation

机译:房间脉冲响应估计的贝叶斯正则化和非负反卷积

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This paper proposes Bayesian Regularization And Nonnegative Deconvolution (BRAND) for accurately and robustly estimating acoustic room impulse responses for applications such as time-delay estimation and echo cancellation. Similar to conventional deconvolution methods, BRAND estimates the coefficients of convolutive finite-impulse-response (FIR) filters using least-square optimization. However, BRAND exploits the nonnegative, sparse structure of acoustic room impulse responses with nonnegativity constraints and L_(1)-norm sparsity regularization on the filter coefficients. The optimization problem is modeled within the context of a probabilistic Bayesian framework, and expectation-maximization (EM) is used to derive efficient update rules for estimating the optimal regularization parameters. BRAND is demonstrated on two representative examples, subsample time-delay estimation in reverberant environments and acoustic echo cancellation. The results presented in this paper show the advantages of BRAND in high temporal resolution and robustness to ambient noise compared with other conventional techniques.
机译:本文提出了贝叶斯正则化和非负反卷积(BRAND)技术,可以准确,稳健地估算声室冲激响应,以用于时延估计和回声消除等应用。与传统的反卷积方法类似,BRAND使用最小二乘法优化估计卷积有限冲激响应(FIR)滤波器的系数。但是,BRAND利用具有非负约束和对滤波器系数进行L_(1)-范数稀疏正则化的声学房间脉冲响应的非负稀疏结构。在概率贝叶斯框架的上下文中对优化问题进行建模,并使用期望最大化(EM)来导出有效的更新规则,以估计最佳正则化参数。 BRAND在两个代表性示例中得到了证明,即混响环境中的子采样时延估计和声学回声消除。与其他常规技术相比,本文提出的结果表明了BRAND在高时间分辨率和对环境噪声的鲁棒性方面的优势。

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