Mean field variational inference using bregman ADMM for distributed camera network

Behnam Babagholami-Mohamadabadi, Sejong Yoon, V. Pavlovic
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引用次数: 3

Abstract

Bayesian models provide a framework for probabilistic modelling of complex datasets. However, many of such models are computationally demanding especially in the presence of large datasets. On the other hand, in sensor network applications, statistical (Bayesian) parameter estimation usually needs distributed algorithms, in which both data and computation are distributed across the nodes of the network. In this paper we propose a general framework for distributed Bayesian learning using Bregman Alternating Direction Method of Multipliers (B-ADMM). We demonstrate the utility of our framework, with Mean Field Variational Bayes (MFVB) as the primitive for distributed affine structure from motion (SfM).
基于bregman ADMM的分布式摄像机网络平均场变分推理
贝叶斯模型为复杂数据集的概率建模提供了一个框架。然而,许多这样的模型在计算上要求很高,特别是在存在大型数据集的情况下。另一方面,在传感器网络应用中,统计(贝叶斯)参数估计通常需要分布式算法,其中数据和计算分布在网络的各个节点上。本文提出了一种基于Bregman乘法器交替方向法(B-ADMM)的分布式贝叶斯学习通用框架。我们展示了我们的框架的实用性,用平均场变分贝叶斯(MFVB)作为来自运动的分布式仿射结构(SfM)的原语。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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