Keil Matthias S, Lapedriza Agata, Masip David, Vitria Jordi
Basic Psychology Department, Faculty for Psychology, University of Barcelona, Barcelona, Spain.
PLoS One. 2008 Jul 2;3(7):e2590. doi: 10.1371/journal.pone.0002590.
Psychophysical studies suggest that humans preferentially use a narrow band of low spatial frequencies for face recognition. Here we asked whether artificial face recognition systems have an improved recognition performance at the same spatial frequencies as humans. To this end, we estimated recognition performance over a large database of face images by computing three discriminability measures: Fisher Linear Discriminant Analysis, Non-Parametric Discriminant Analysis, and Mutual Information. In order to address frequency dependence, discriminabilities were measured as a function of (filtered) image size. All three measures revealed a maximum at the same image sizes, where the spatial frequency content corresponds to the psychophysical found frequencies. Our results therefore support the notion that the critical band of spatial frequencies for face recognition in humans and machines follows from inherent properties of face images, and that the use of these frequencies is associated with optimal face recognition performance.
心理物理学研究表明,人类在人脸识别中优先使用窄带低空间频率。在此,我们探讨人工人脸识别系统在与人类相同的空间频率下是否具有更高的识别性能。为此,我们通过计算三种可辨别性度量,即Fisher线性判别分析、非参数判别分析和互信息,来估计一个大型人脸图像数据库上的识别性能。为了研究频率依赖性,可辨别性作为(滤波后的)图像大小的函数进行测量。所有这三种度量在相同的图像大小处都显示出最大值,此时空间频率内容与心理物理学发现的频率相对应。因此,我们的结果支持这样一种观点,即人类和机器中人脸识别的关键空间频率带源自人脸图像的固有属性,并且使用这些频率与最佳人脸识别性能相关。