复杂的细胞池和自然图像的统计。

Aapo Hyvärinen, Urs Köster
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引用次数: 67

摘要

在之前的工作中,我们提出了一个自然图像的统计模型,该模型产生的输出类似于初级视觉皮层复杂细胞的接受野。然而,该模型的一个弱点是池化的结构是先验假设的,而不是从自然图像的统计特性中学习的。在这里,我们提出了一个扩展模型,其中池化非线性和子空间的大小是优化的而不是固定的,因此我们对池化的假设要少得多。在自然图像上的结果表明,当子空间的大小相对较大时,形成了最佳的概率表示,并且可能性大大高于没有池化的简单线性模型。进一步,我们证明了池化的最优非线性是平方。我们还强调了对比度增益控制对模型性能的重要性。我们的模型是新颖的,因为它是第一个分析最优子空间大小以及该大小如何受到对比度归一化的影响的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complex cell pooling and the statistics of natural images.

In previous work, we presented a statistical model of natural images that produced outputs similar to receptive fields of complex cells in primary visual cortex. However, a weakness of that model was that the structure of the pooling was assumed a priori and not learned from the statistical properties of natural images. Here, we present an extended model in which the pooling nonlinearity and the size of the subspaces are optimized rather than fixed, so we make much fewer assumptions about the pooling. Results on natural images indicate that the best probabilistic representation is formed when the size of the subspaces is relatively large, and that the likelihood is considerably higher than for a simple linear model with no pooling. Further, we show that the optimal nonlinearity for the pooling is squaring. We also highlight the importance of contrast gain control for the performance of the model. Our model is novel in that it is the first to analyze optimal subspace size and how this size is influenced by contrast normalization.

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