基于自适应流形滤波的平均场近似有效推理(机器学习与数据挖掘)

Sara Ershadi Nasab, Sadegh Ramezanpur, S. Kasaei, E. Sanaei
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引用次数: 1

摘要

提出了一种加速全连通图平均场近似中最大后验边际近似推理的新方法。图边的权值是通过高斯核的混合来测量的。这种全连通图用于图像数据的分割。平均场近似推理的瓶颈是在消息传递步骤中需要类似的双边滤波来更新边缘。为了提高推理速度,采用了自适应流形高维高斯滤波器。由于其时间复杂度为0(ND),导致消息传递步骤的边缘更新速度加快。它的时间复杂度与图节点的维数和数量呈线性关系。为了提高分割的精度,采用非局部均值滤波代替双边滤波。与现有的推理方法相比,所提出的推理方法更准确,计算量更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient inference in meanfield approximation by adaptive manifold filtering (Machine learning & data mining)
A new method for speeding up the approximate maximum posterior marginal (MPM) inference in meanfield approximation of a fully connected graph is introduced. Weight of graph edges is measured by mixture of Gaussian kernels. This fully connected graph is used for segmentation of image data. The bottleneck of the inference in meanfield approximation is where the similar bilateral filtering is needed for updating the marginal in the message passing step. To speed up the inference, the adaptive manifold high dimensional Gaussian filter is used. As its time complexity is 0(ND), it leads to accelerating the marginal update in the message passing step. Its time complexity is linear and relative to the dimension and number of graph nodes. To improve the accuracy of segmentation, instead of the bilateral filter, the non-local mean filter is used. The proposed inference method is more accurate and needs less computations when compared to other existing methods.
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