贝叶斯概率
序贯估计
计算机科学
差异(会计)
算法
到达方向
到达时间
高斯分布
先验概率
伽马分布
随机变量
到达时间
人工智能
模式识别(心理学)
统计
数学
物理
频道(广播)
随机变量
运输工程
工程类
电信
会计
量子力学
天线(收音机)
业务
计算机网络
作者
Yongsung Park,Florian Meyer,Peter Gerstoft
摘要
This paper presents methods for the estimation of the time-varying directions of arrival (DOAs) of signals emitted by moving sources. Following the sparse Bayesian learning (SBL) framework, prior information of unknown source amplitudes is modeled as a multi-variate Gaussian distribution with zero-mean and time-varying variance parameters. For sequential estimation of the unknown variance, we present two sequential SBL-based methods that propagate statistical information across time to improve DOA estimation performance. The first method heuristically calculates the parameters of an inverse-gamma hyperprior based on the source signal estimate from the previous time step. In addition, a second sequential SBL method is proposed, which performs a prediction step to calculate the prior distribution of the current variance parameter from the variance parameter estimated at the previous time step. The SBL-based sequential processing provides high-resolution DOA tracking capabilities. Performance improvements are demonstrated by using simulated data as well as real data from the SWellEx-96 experiment.
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