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Maximum bit average entropy based binary SIFT (MBAE_BS) for face recognition with pose variation

机译:基于最大位平均熵的二进制SIFT(MBAE_BS)用于具有姿势变化的人脸识别

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Pose variation is one of challenging problems in face recognition. Complete Pose Binary SIFT(CPBS) [1]has been proposed to extract binary SIFT from face images of five poses. It could resolve the problem of large pose variation. However, in CPBS, each feature is represented as a bit, it possibly brings about information loss. In this paper, we propose maximum bit average entropy algorithm (MBAE) for binarization of CPBS features. And these features are used for face recognition with pose variation. It preserve at most information with the fewer quantization bits. Firstly, the CPBS features are extracted from the gallery images. Secondly, the CPBS features are binarized according to the maximum bit average entropy adaptively. Finally, the distance between a pair of features is computed based on the weighted hamming distance. The compared experimental results on the CMU-PIE and FERET face databases show that our approach is much better than state-of-the-art algorithms.
机译:姿势变化是人脸识别中具有挑战性的问题之一。已提出完全姿势二进制SIFT(CPBS)[1]从五个姿势的面部图像中提取二进制SIFT。它可以解决姿势变化大的问题。但是,在CPBS中,每个特征只是一点点表示,可能会导致信息丢失。在本文中,我们提出了用于CPBS特征二值化的最大比特平均熵算法(MBAE)。这些功能用于具有姿势变化的人脸识别。它以较少的量化位保留最多的信息。首先,从图库图像中提取CPBS特征。其次,根据最大比特平均熵自适应地对CPBS特征进行二值化。最后,基于加权的汉明距离来计算一对特征之间的距离。在CMU-PIE和FERET人脸数据库上比较的实验结果表明,我们的方法比最新的算法要好得多。

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