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Integration of multi-feature fusion and dictionary learning for face recognition

机译:多特征融合与字典学习相结合的人脸识别

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Recent research emphasizes more on analyzing multiple features to improve face recognition (FR) performance. One popular scheme is to extend the sparse representation based classification framework with various sparse constraints. Although these methods jointly study multiple features through the constraints, they just process each feature individually such that they overlook the possible high-level relationship among different features. It is reasonable to assume that the low-level features of facial images, such as edge information and smoothed/ low-frequency image, can be fused into a more compact and more discriminative representation based on the latent high-level relationship. FR on the fused features is anticipated to produce better performance than that on the original features, since they provide more favorable properties. Focusing on this, we propose two different strategies which start from fusing multiple features and then exploit the dictionary learning (DL) framework for better FR performance. The first strategy is a simple and efficient two-step model, which learns a fusion matrix from training face images to fuse multiple features and then learns class-specific dictionaries based on the fused features. The second one is a more effective model requiring more computational time that learns the fusion matrix and the class-specific dictionaries simultaneously within an iterative optimization procedure. Besides, the second model considers to separate the shared common components from class-specified dictionaries to enhance the discrimination power of the dictionaries. The proposed strategies, which integrate multi-feature fusion process and dictionary learning framework for FR, realize the following goals: (1) exploiting multiple features of face images for better FR performances; (2) learning a fusion matrix to merge the features into a more compact and more discriminative representation; (3) learning class-specific dictionaries with consideration of the common patterns for better classification performance. We perform a series of experiments on public available databases to evaluate our methods, and the experimental results demonstrate the effectiveness of the proposed models.
机译:最近的研究更多地侧重于分析多种功能以改善面部识别(FR)性能。一种流行的方案是用各种稀疏约束来扩展基于稀疏表示的分类框架。尽管这些方法通过约束共同研究多个特征,但是它们只是单独处理每个特征,因此它们忽略了不同特征之间可能存在的高级关系。合理地假设,可以基于潜在的高级关系将面部图像的低级特征(例如边缘信息和平滑/低频图像)融合为更紧凑和更具判别性的表示形式。预计融合特征的FR将产生比原始特征更好的性能,因为它们提供了更好的性能。着眼于此,我们提出了两种不同的策略,这些策略从融合多个功能开始,然后利用字典学习(DL)框架以获得更好的FR性能。第一种策略是简单有效的两步模型,该模型从训练的面部图像中学习融合矩阵以融合多个特征,然后基于融合的特征学习特定于类的词典。第二个是需要更多计算时间的更有效的模型,该模型在迭代优化过程中同时学习融合矩阵和特定类词典。此外,第二种模型考虑将共享的公共组件与类别指定的字典分开,以增强字典的区分能力。所提出的将多特征融合过程和字典学习框架相结合的策略实现了以下目标:(1)利用人脸图像的多个特征以获得更好的帧中继性能; (2)学习融合矩阵以将特征合并为更紧凑和更具区分性的表示形式; (3)考虑通用模式以更好地分类,学习特定于类别的词典。我们在公共数据库上进行了一系列实验,以评估我们的方法,实验结果证明了所提出模型的有效性。

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