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Face Features Extraction Based on multi-scale LBP

机译:面部特征基于多尺度LBP提取

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摘要

How to extract the strong features of face image is vital important in the face recognition technology. The extracted features should be robust for variation of illumination and expression. a novel feature extraction algorithm based on wavelet decomposition and LBP is proposed, which makes use of the idea of wavelet multiresolution and local characteristic of LBP. And the features extracted by this way contain holistic and local information that can be robust to identify faces. Experiment results show that the proposed method can effectively be used in face recognition with single training sample per person. The performance is better than PCA and original LBP. And the importance of different level's lower coefficients is also analyzed.
机译:如何提取面部图像的强大特征在人脸识别技术中至关重要。提取的特征对于照明和表达的变化应该是稳健的。提出了一种基于小波分解和LBP的新颖特征提取算法,它利用了LBP的小波多分辨率和局部特征的思想。通过这种方式提取的特征包含可以坚固识别面的整体和本地信息。实验结果表明,该方法可以用每人单一训练样品有效地用于人脸识别。性能优于PCA和原始LBP。还分析了不同水平较低系数的重要性。

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