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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Dictionary Learning Algorithm Based on Dictionary Reconstruction and Its Application in Face Recognition
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A Dictionary Learning Algorithm Based on Dictionary Reconstruction and Its Application in Face Recognition

机译:基于词典重构的字典学习算法及其在人脸识别中的应用

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In recent years, dictionary learning has received more and more attention in the study of face recognition. However, most dictionary learning algorithms directly use the original training samples to learn the dictionary, ignoring noise existing in the training samples. For example, there are differences between different images of the same subject due to changes in illumination, expression, etc. To address the above problems, this paper proposes the dictionary relearning algorithm (DRLA) based on locality constraint and label embedding, which can effectively reduce the influence of noise on the dictionary learning algorithm. In our proposed dictionary learning algorithm, first, the initial dictionary and coding coefficient matrix are directly obtained from the training samples, and then the original training samples are reconstructed by the product of the initial dictionary and coding coefficient matrix. Finally, the dictionary learning algorithm is reapplied to obtain a new dictionary and coding coefficient matrix, and the newly obtained dictionary and coding coefficient matrix are used for subsequent image classification. The dictionary reconstruction method can partially eliminate noise in the original training samples. Therefore, the proposed algorithm can obtain more robust classification results. The experimental results demonstrate that the proposed algorithm performs better in recognition accuracy than some state-of-the-art algorithms.
机译:近年来,字典学习在人脸识别研究中得到了越来越多的关注。但是,大多数字典学习算法直接使用原始训练样本来学习词典,忽略训练样本中存在的噪声。例如,由于照明,表达等的变化,在解决上述问题的情况下,在相同的主题的不同图像之间存在差异,本文提出了基于局部约束和标签嵌入的字典复制算法(DRLA),这可以有效地减少噪声对字典学习算法的影响。在我们建议的字典学习算法中,首先,初始字典和编码系数矩阵直接从训练样本获得,然后由初始字典和编码系数矩阵的乘积重建原始训练样本。最后,重新删除字典学习算法以获得新的字典和编码系数矩阵,并且新获得的字典和编码系数矩阵用于后续图像分类。字典重建方法可以部分消除原始训练样本中的噪声。因此,所提出的算法可以获得更强大的分类结果。实验结果表明,所提出的算法在识别精度比某些最先进的算法中表现更好。

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