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Feature classes for 1D, 2nd order image structure arise from natural image maximum likelihood statistics

机译:一维,二阶图像结构的要素类来自自然图像最大似然统计

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Much is understood of how quantitative aspects of image structure are measured by V1 simple cells, but less about how qualitative structure is determined from these measurements. We review Geometric Texton Theory (GTT) that aims to describe this step from quantitative to qualitative. GTT proposes that qualitative feature categories arise through consideration of the maximum likelihood (ML) explanations of image measurements. It posits that a pair of output vectors of an ensemble of co-localised neurons signal the same feature category if and only if the corresponding ML explanations are qualitatively similar. We present mathematical and empirical results relevant to GTT for the limited case of measurement by 1D filters of up to 2nd order. The mathematical results identify the simplest explanations for measurements by such filters, while the empirical results identify the ML. We find that the ML explanations are not the most simple under any of the definitions of simple that we examined. However, the ML explanations do have properties predicted by GTT. In particular they change rapidly and qualitatively for certain narrow regions of measurement space, while remaining qualitative stable between those transition regions. Three feature categories arise naturally from the data: light bars, dark bars and edges. The results are consistent with GTT.
机译:对于通过V1简单单元如何测量图像结构的定量方面,人们了解得很多,但是对于如何从这些测量中确定定性结构的了解则很少。我们回顾了几何Texton理论(GTT),该理论旨在描述从定量到定性的这一步骤。 GTT建议通过考虑图像测量的最大似然(ML)解释来产生定性特征类别。它假定,当且仅当相应的ML解释在质量上相似时,一对共定位神经元的输出向量对才发出相同的特征类别信号。我们提供了与GTT相关的数学和经验结果,适用于有限的情况(最多2阶1D滤波器)的测量。数学结果确定了使用此类滤波器进行测量的最简单解释,而经验结果确定了ML。我们发现,在我们研究的简单的任何定义下,机器学习的解释都不是最简单的。但是,ML解释的确具有GTT预测的属性。特别是对于某些狭窄的测量空间区域,它们快速而定性地变化,而在这些过渡区域之间保持定性稳定。数据自然产生三个特征类别:亮条,暗条和边缘。结果与GTT一致。

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