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Intrinsic two-dimensional features as textons

机译:固有的二维特征作为纹理

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摘要

We suggest that intrinsic two-dimensional (i2D) features, computationally defined as the outputs of nonlinear operators that model the activity of end-stopped neurons, play a role in preattentive texture discrimination. We first show that for discriminable textures with identical power spectra the predictions of traditional models depend on the type of nonlinearity and fail for energy measures. We then argue that the concept of intrinsic dimensionality, and the existence of end-stopped neurons, can help us to understand the role of the nonlinearities. Furthermore, we show examples in which models without strong i2D selectivity fail to predict the correct ranking order of perceptual segregation. Our arguments regarding the importance of i2D features resemble the arguments of Julesz and co-workers regarding textons such as terminators and crossings. However, we provide a computational framework that identifies textons with the outputs of nonlinear operators that are selective to i2D features. # 1998 Optical Society of America [S0740-3232(98)02607-6] OCIS codes: 330.4050, 330.7310, 100.2960.
机译:我们建议将固有的二维(i2D)功能(在计算上定义为对端部终止神经元活动进行建模的非线性算子的输出)在注意力集中的纹理识别中发挥作用。我们首先表明,对于具有相同功率谱的可分辨纹理,传统模型的预测取决于非线性的类型,并且无法进行能量测量。然后,我们认为内在维数的概念以及端部终止神经元的存在可以帮助我们理解非线性的作用。此外,我们展示了一些示例,其中没有强大i2D选择性的模型无法预测感知隔离的正确排序顺序。我们关于i2D功能重要性的争论类似于Julesz及其同事关于诸如终止子和交叉等文本的争论。但是,我们提供了一个计算框架,该框架可使用对i2D功能具有选择性的非线性运算符的输出来标识文本。 #1998美国光学学会[S0740-3232(98)02607-6] OCIS代码:330.4050、330.7310、100.2960。

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