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An efficient hybrid DWT-fuzzy filter in DCT domain based illumination normalization for face recognition

机译:基于DCT域的照明归一化的高效混合DWT模糊滤波器用于人脸识别

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摘要

This paper presents an efficient hybrid DWT-DCT based illumination normalization technique for face recognition. In a face image, illumination usually changes slowly compared to the reflectance except some casting shadows and specularities on the face. Consequently, illumination variations mainly lie in the low frequency band of the face image. Therefore, in the present work, low frequency coefficients are processed to nullify the effect of illumination variations. Discrete wavelet transform (DWT) is used to decompose the image into frequency domain. It is a sub-band coding technique which decomposes image into four sub-bands: low-low (LL), low-high (LH), high-low (HL) and high-high (HH). As illumination is related to low frequency coefficients, normalization is mainly performed on LL sub-band rather than the whole face. The fuzzy filter is applied on the appropriate number of low frequency discrete Cosine transform (DCT) coefficients of LL sub-band to minimize the variations under different lighting conditions. Also, minor corrections are performed on the rest three sub-bands. After modification, the normalized LL sub-band and rest three sub-bands are combined to generate the normalized face image. The given approach achieves zero error rates on Yale B and CMU PIE face database. Also, good performance results have been achieved on Extended Yale B face database. These results clearly confirm the effectiveness of the given approach of illumination normalization.
机译:本文提出了一种有效的基于DWT-DCT的混合照明标准化技术,用于人脸识别。在人脸图像中,与反射率相比,照明通常变化较慢,除了脸上的某些投射阴影和镜面反射。因此,照度变化主要位于面部图像的低频带。因此,在本工作中,低频系数被处理以消除照明变化的影响。离散小波变换(DWT)用于将图像分解为频域。它是一种子带编码技术,可将图像分解为四个子带:低低(LL),低高(LH),高低(HL)和高高(HH)。由于照明与低频系数有关,因此归一化主要在LL子带上执行,而不是在整个面部上执行。将模糊滤波器应用于LL子带的适当数量的低频离散余弦变换(DCT)系数,以最小化在不同照明条件下的变化。另外,对其余三个子带执行较小的校正。修改后,将归一化的LL子带和其余三个子带组合以生成归一化的面部图像。给定的方法在Yale B和CMU PIE人脸数据库上实现了零错误率。此外,在扩展Yale B人脸数据库上也取得了良好的性能结果。这些结果清楚地证实了给定照明归一化方法的有效性。

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