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首页> 外文期刊>International Journal of Advanced Robotic Systems >Deep aligned feature extraction for collaborative-representation-based face classification with group dictionary selection
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Deep aligned feature extraction for collaborative-representation-based face classification with group dictionary selection

机译:基于协作的脸部分类的深度对齐特征提取与组字典选择

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Face recognition plays an important role in many robotic and human–computer interaction systems. To this end, in recent years, sparse-representation-based classification and its variants have drawn extensive attention in compress sensing and pattern recognition. For image classification, one key to the success of a sparse-representation-based approach is to extract consistent image feature representations for the images of the same subject captured under a wide spectrum of appearance variations, for example, in pose, expression and illumination. These variations can be categorized into two main types: geometric and textural variations. To eliminate the difficulties posed by different appearance variations, the article presents a new collaborative-representation-based face classification approach using deep aligned neural network features. To be more specific, we first apply a facial landmark detection network to an input face image to obtain its finegrained geometric information in the form of a set of 2D facial landmarks. These facial landmarks are then used to perform 2D geometric alignment across different face images. Second, we apply a deep neural network for facial image feature extraction due to the robustness of deep image features to a variety of appearance variations. We use the term deep aligned features for this two-step feature extraction approach. Last, a new collaborative-representation-based classification method is used to perform face classification. Specifically, we propose a group dictionary selection method for representation-based face classification to further boost the performance and reduce the uncertainty in decision-making. Experimental results obtained on several facial landmark detection and face classification data sets validate the effectiveness of the proposed method.
机译:人脸识别起着许多机器人和人机交互系统中的重要作用。为此,近年来,稀疏表示,基于分类及其变种已引起广泛关注压缩传感和模式识别。用于图像分类,一个关键的基于稀疏的表示方法的成功是提取外观变化的宽光谱下拍摄相同的被摄体,例如的图像一致的图像特征表示,在姿态,表达和照明。这些变化可分为两种主要类型:几何和结构的变化。为了消除不同的外观变化所带来的困难,本文提出了一种新的基于协作表示脸分类方法采用深对准神经网络的功能。更具体地,我们首先应用面部标志检测网络的输入面部图像,以获得一组2D面部界标的形式其细粒度的几何信息。这些面部界标随后被用于执行在不同的面部图像的2D几何对准。其次,我们申请的面部图像特征提取深层神经网络由于深图像特征的稳健性,以多种外观变化。我们使用术语深对齐功能,这两个步骤的特征提取方法。最后,新的基于协作表示分类方法被用于执行脸分类。具体来说,我们建议基于表示面分类的配对词典选择方法,以进一步提升性能,并减少决策的不确定性。在几个面部界标检测和面部分类的数据集获得的实验结果验证了该方法的有效性。

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