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DOA Estimation in Heteroscedastic Noise with sparse Bayesian Learning

机译:基于稀疏贝叶斯学习的异方差噪声的DOA估计

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We consider direction of arrival (DOA) estimation from long-term observations in a noisy environment. In such an environment the noise source might evolve, causing the stationary models to fail. Therefore a heteroscedastic Gaussian noise model is introduced where the variance can vary across observations and sensors. The source amplitudes are assumed independent zero-mean complex Gaussian distributed with unknown variances (i.e., source powers), leading to stochastic maximum likelihood (ML) DOA estimation. The DOAs are estimated from multi-snapshot array data using sparse Bayesian learning (SBL) where the noise is estimated across both sensors and snapshots.
机译:我们从嘈杂的环境中的长期观测中考虑到达方向(DOA)估计。在这种环境下,噪声源可能会演变,从而导致固定模型失效。因此,引入了异方差高斯噪声模型,其中方差可以在观测值和传感器之间变化。假定源幅度具有未知方差(即源功率)的独立零均值复高斯分布,从而导致随机最大似然(ML)DOA估计。使用稀疏贝叶斯学习(SBL)从多快照阵列数据中估计DOA,其中在传感器和快照之间估计噪声。

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