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Parallel Wavelet-based Bayesian Compressive Sensing based on Gibbs Sampling

机译:基于吉布斯采样的基于并行小波的贝叶斯压缩感知

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Bayesian compressive sensing (BCS) helps address ill-posed signal recovery problems using the Bayesian estimation framework. Gibbs sampling is a technique used in Bayesian estimation that iteratively draws samples from conditional posterior distributions. However, Gibbs sampling is inherently sequential and existing parallel implementations focus on reducing the communication between computing units at the cost of increase in recovery error. In this work, we propose a two-stage parallel coefficient update scheme for wavelet-based Bayesian compressive sensing, where the first stage approximates the real distributions of the wavelet coefficients and the second stage computes the final estimate of the coefficients. While in the first stage the parallel computing units share information with each other, in the second stage, the parallel units work independently. We propose a new coefficient update scheme that updates coefficients in both stages based on data generated a few rounds ago. Such a scheme helps in relaxing the timing constraints for communication in the first stage and computations in the second stage. We design the corresponding parallel architecture and synthesize it in 7 nm technology node. We show that in a system with 8 computing units, our method helps reduce the execution time by 17.4× compared to a sequential implementation without any increase in the signal recovery error.
机译:贝叶斯压缩感测(BCS)使用贝叶斯估计框架帮助解决不适定信号恢复问题。吉布斯采样是贝叶斯估计中使用的一种技术,它从条件后验分布中迭代地提取样本。但是,Gibbs采样本质上是顺序的,并且现有的并行实现方式着重于减少计算单元之间的通信,但要以增加恢复误差为代价。在这项工作中,我们提出了一种基于小波的贝叶斯压缩感知的两阶段并行系数更新方案,其中第一阶段近似小波系数的实际分布,第二阶段计算系数的最终估计。在第一阶段,并行计算单元彼此共享信息,而在第二阶段,并行计算单元独立工作。我们提出了一种新的系数更新方案,该方案可根据几轮前生成的数据在两个阶段更新系数。这样的方案有助于减轻第一阶段中的通信和第二阶段中的计算的时序约束。我们设计了相应的并行架构,并在7 nm技术节点中对其进行了合成。我们证明,在具有8个计算单元的系统中,与顺序实现相比,我们的方法可将执行时间减少17.4倍,而信号恢复误差不会增加。

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