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基于伽柏函数的纹理辨别

Texture discrimination by Gabor functions.

作者信息

Turner M R

出版信息

Biol Cybern. 1986;55(2-3):71-82. doi: 10.1007/BF00341922.

Abstract

A 2D Gabor filter can be realized as a sinusoidal plane wave of some frequency and orientation within a two dimensional Gaussian envelope. Its spatial extent, frequency and orientation preferences as well as bandwidths are easily controlled by the parameters used in generating the filters. However, there is an "uncertainty relation" associated with linear filters which limits the resolution simultaneously attainable in space and frequency. Daugman (1985) has determined that 2D Gabor filters are members of a class of functions achieving optimal joint resolution in the 2D space and 2D frequency domains. They have also been found to be a good model for two dimensional receptive fields of simple cells in the striate cortex (Jones 1985; Jones et al. 1985). The characteristic of optimal joint resolution in both space and frequency suggests that these filters are appropriate operators for tasks requiring simultaneous measurement in these domains. Texture discrimination is such a task. Computer application of a set of Gabor filters to a variety of textures found to be preattentively discriminable produces results in which differently textured regions are distinguished by first-order differences in the values measured by the filters. This ability to reduce the statistical complexity distinguishing differently textured region as well as the sensitivity of these filters to certain types of local features suggest that Gabor functions can act as detectors of certain "texton" types. The performance of the computer models suggests that cortical neurons with Gabor like receptive fields may be involved in preattentive texture discrimination.

摘要

二维伽柏滤波器可以被实现为二维高斯包络内具有特定频率和方向的正弦平面波。其空间范围、频率和方向偏好以及带宽可以通过生成滤波器时使用的参数轻松控制。然而,线性滤波器存在一种“不确定性关系”,它限制了在空间和频率上可同时达到的分辨率。多曼(1985年)确定二维伽柏滤波器是在二维空间和二维频率域中实现最优联合分辨率的一类函数的成员。它们还被发现是纹状皮层中简单细胞二维感受野的良好模型(琼斯,1985年;琼斯等人,1985年)。在空间和频率上都具有最优联合分辨率的特性表明,这些滤波器是适用于需要在这些域中同时进行测量的任务的算子。纹理辨别就是这样一项任务。将一组伽柏滤波器应用于各种可通过前注意辨别出来的纹理的计算机应用产生了这样的结果,即不同纹理区域通过滤波器测量值的一阶差异得以区分。这种降低区分不同纹理区域的统计复杂性的能力以及这些滤波器对某些类型局部特征的敏感性表明,伽柏函数可以充当某些“纹理基元”类型的探测器。计算机模型的性能表明,具有类似伽柏感受野的皮层神经元可能参与前注意纹理辨别。

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