用流形优化方法求解自然图像混合ICAs模型

Arash Mehrjou, Reshad Hosseini, Babak Nadjar Araabi
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引用次数: 2

摘要

本文提出了一种由多个分量组成的有限混合模型,每个分量由独立源的线性混合来描述。从自然图像数据集中随机选择的斑块构成我们的主数据集。估计了每个混合成分的独立来源和混合矩阵,这有助于我们在没有地面真实数据可用的情况下对算法的性能进行定性检查。该方法扩展了混合高斯模型,使得组件不再局限于高斯。每个源信号都被表示为高斯信号的混合,这增加了它对超高斯和亚高斯源建模的灵活性。所提出的混合模型是一个流形优化问题,具有理想的收敛性。我们认为信息量大的自然信号的非高斯特性使其适合用该方法建模。最后,每个混合成分的学习特征可以为我们提供有用的见解,了解早期感觉通路如何有效地处理信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixture of ICAs model for natural images solved by manifold optimization method
A finite mixture model composed of several components that are each described by a linear mixture of independent sources is proposed in this paper. Randomly selected patches from a dataset of natural images constitute our main dataset. Independent sources and mixing matrix for each mixture component are estimated that help us derive a qualitative inspection about the performance of the algorithm where no ground truth data is available. This method extends the mixture of Gaussians model in a way that components are not restricted to be Gaussian anymore. Each source signal is represented as a mixture of Gaussians which increases its flexibility to model both super- and sub-Gaussian sources. The proposed mixture model is formulated as a manifold optimization problem that gives a desirable convergence behavior. We believe that the non-Gaussian character of informative natural signals, makes them suitable to be modeled by this method. Finally, The learned features in each mixture component can provide us with useful insights into how early sensory pathways process information in an efficient way.
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