Liu Zhiming, Liu Chengjun
IEEE Trans Image Process. 2008 Oct;17(10):1975-80. doi: 10.1109/TIP.2008.2002837.
This correspondence presents a novel hybrid Color and Frequency Features (CFF) method for face recognition. The CFF method, which applies an Enhanced Fisher Model (EFM), extracts the complementary frequency features in a new hybrid color space for improving face recognition performance. The new color space, the RIQ color space, which combines the R component image of the RGB color space and the chromatic components I and Q of the YIQ color space, displays prominent capability for improving face recognition performance due to the complementary characteristics of its component images. The EFM then extracts the complementary features from the real part, the imaginary part, and the magnitude of the R image in the frequency domain. The complementary features are then fused by means of concatenation at the feature level to derive similarity scores for classification. The complementary feature extraction and feature level fusion procedure applies to the I and Q component images as well. Experiments on the Face Recognition Grand Challenge (FRGC) version 2 Experiment 4 show that i) the hybrid color space improves face recognition performance significantly, and ii) the complementary color and frequency features further improve face recognition performance.
这篇通信文章提出了一种用于人脸识别的新型混合颜色与频率特征(CFF)方法。CFF方法应用了增强型Fisher模型(EFM),在一个新的混合颜色空间中提取互补频率特征,以提高人脸识别性能。新的颜色空间,即RIQ颜色空间,它结合了RGB颜色空间的R分量图像和YIQ颜色空间的色度分量I和Q,由于其分量图像的互补特性,在提高人脸识别性能方面表现出显著能力。然后,EFM在频域中从R图像的实部、虚部和幅度中提取互补特征。接着,通过在特征级别进行串联融合互补特征,以得出用于分类的相似度分数。互补特征提取和特征级别融合过程也适用于I和Q分量图像。在人脸识别大挑战(FRGC)版本2实验4上的实验表明:i)混合颜色空间显著提高了人脸识别性能;ii)互补颜色和频率特征进一步提高了人脸识别性能。