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首页> 外文期刊>Journal of visual communication & image representation >Multi-scale attention guided network for end-to-end face alignment and recognition
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Multi-scale attention guided network for end-to-end face alignment and recognition

机译:用于端到端人脸对齐和识别的多尺度注意力引导网络

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Attention modules embedded in deep networks mediate the selection of informative regions for object recog-nition. In addition, the combination of features learned from different branches of a network can enhance the discriminative power of these features. However, fusing features with inconsistent scales is a less-studied problem. In this paper, we first propose a multi-scale channel attention network with an adaptive feature fusion strategy (MSCAN-AFF) for face recognition (FR), which fuses the relevant feature channels and improves the network's representational power. In FR, face alignment is performed independently prior to recognition, which requires the efficient localization of facial landmarks, which might be unavailable in uncontrolled scenarios such as low-resolution and occlusion. Therefore, we propose utilizing our MSCAN-AFF to guide the Spatial Transformer Network (MSCAN-STN) to align feature maps learned from an unaligned training set in an end-to -end manner. Experiments on benchmark datasets demonstrate the effectiveness of our proposed MSCAN-AFF and MSCAN-STN.
机译:嵌入在深度网络中的注意力模块介导了对象识别信息区域的选择。此外,从网络的不同分支学习的特征的组合可以增强这些特征的判别能力。然而,融合比例不一致的要素是一个研究较少的问题。本文首先提出了一种基于自适应特征融合策略(MSCAN-AFF)的人脸识别(FR)的多尺度信道注意力网络,融合了相关特征信道,提高了网络的表征能力。在FR中,人脸对齐是在识别之前独立进行的,这需要对人脸特征点进行有效的定位,这在低分辨率和遮挡等不受控制的场景中可能无法使用。因此,我们建议利用我们的 MSCAN-AFF 来指导空间转换器网络 (MSCAN-STN) 以端到端的方式对齐从未对齐训练集中学习的特征图。在基准数据集上的实验证明了我们提出的MSCAN-AFF和MSCAN-STN的有效性。

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