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Illumination invariant facial recognition using a piecewise-constant lighting model

机译:使用分段恒定照明模型的照明不变面部识别

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In this paper we demonstrate a simple and novel illumination model that can be used for illumination invariant facial recognition. This model requires no prior knowledge of the illumination conditions and can be used when there is only a single training image per-person. The proposed illumination model separates the effects of illumination over a small area of the face into two components; an additive component modelling the mean illumination and a multiplicative component, modelling the variance within the facial area. Illumination invariant facial recognition is performed in a piecewise manner, by splitting the face image into blocks, then normalizing the illumination within each block based on the new lighting model. The assumptions underlying this novel lighting model have been verified on the YaleB face database. We show that magnitude 2D Fourier features can be used as robust facial descriptors within the new lighting model. Using only a single training image per-person, our new method achieves high (in most cases 100%) identification accuracy on the YaleB, extended YaleB and CMU-PIE face databases.
机译:在本文中,我们演示了可用于照明不变面部识别的简单新颖的照明模型。该模型不需要先验的照明条件知识,并且可以在每人只有一个训练图像时使用。所提出的照明模型将面部小区域的照明效果分为两个部分:模拟平均照度的加性成分和模拟面部区域中的方差的乘性成分。通过将面部图像分为多个块,然后基于新的照明模型对每个块内的照明进行标准化,以分段方式执行照明不变的面部识别。 YaleB人脸数据库已验证了此新颖照明模型的基础假设。我们展示了幅度2D傅里叶特征可在新的照明模型中用作鲁棒的面部描述符。每人仅使用一个培训图像,我们的新方法就可以在YaleB,扩展的YaleB和CMU-PIE人脸数据库上实现较高的识别精度(大多数情况下为100%)。

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