Occlusion face recognition based on improved attention mechanism

Mai Fu, Zhihui Wang, Daoerji Fan, Huijuan Wu
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Abstract

Due to the new crown and other epidemic diseases that make people wear masks to travel, the accuracy of the original face recognition system is affected. To address this challenge, a mask-wearing face recognition system based on an improved attention mechanism is proposed. First, Adding a maximum pooling operation to the CA (Coordinate Attention) attention module, then, placing attention module in the residual unit to form a feature extraction network. LResNet18E-IR is selected as the backbone network. Finally, the ArcFace loss and occlusion probability loss are combined to establish a multi-task network, which further promotes the accuracy of occluded face recognition. The results demonstrate that the system effectively increases the recognition accuracy of masked face and maintains almost the same accuracy as the original model on the unmasked dataset.
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基于改进注意机制的遮挡人脸识别
由于新冠等传染病让人们戴着口罩出行,原有人脸识别系统的准确性受到影响。为了解决这一问题,提出了一种基于改进注意机制的戴面具人脸识别系统。首先对CA (Coordinate Attention)注意模块进行最大池化操作,然后将注意模块置于残差单元中,形成特征提取网络。选择LResNet18E-IR作为骨干网。最后,结合ArcFace损失和遮挡概率损失建立多任务网络,进一步提高了遮挡人脸识别的准确性。结果表明,该系统有效地提高了被蒙面人脸的识别精度,并在未蒙面数据集上保持与原始模型基本相同的精度。
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