Human and machine recognition of Fourier-Bessel filtered face images

Y. Zana, R. M. C. Junior, J. Mena-Chalco
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引用次数: 3

Abstract

Motivated by a recently proposed biologically-inspired face recognition approach, psychophysical experiments have been carried out. We measured recognition performance of polar frequency filtered face images using an 8-alternatives forced-choice method. Test stimuli were generated by converting the images from the spatial to the polar frequency domain using the Fourier-Bessel transformation (FBT), filtering of the resulting coefficients with band-pass filters, and finally taking the inverse FBT of the filtered coefficients. We also evaluated an automatic FBT-based face recognition model. Contrast sensitivity functions of the human observers peaked in the 8-11.3 radial and angular frequency range, with higher peak sensitivity in the former case. The automatic face recognition algorithm presented similar behavior. These results suggest that polar frequency components could be used by the human face processing system and that human performance can be constrained by the polar frequency information content
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傅里叶-贝塞尔滤波人脸图像的人机识别
受到最近提出的一种生物启发的人脸识别方法的激励,心理物理实验已经进行了。我们使用一种8选项强制选择方法来测量极性频率滤波后的人脸图像的识别性能。测试刺激是通过傅里叶-贝塞尔变换(FBT)将图像从空间频域转换到极频域,用带通滤波器滤波得到的系数,最后对滤波后的系数取反FBT来产生的。我们还评估了一个基于fbt的自动人脸识别模型。人类观察者的对比灵敏度函数在8-11.3的径向频率和角频率范围内达到峰值,前者的峰值灵敏度更高。人脸自动识别算法也表现出类似的行为。这些结果表明,极性频率成分可以用于人脸处理系统,并且极性频率信息含量可以约束人类的行为
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