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Video-based face recognition by Auto-Associative Elman Neural network

机译:自动联想Elman神经网络基于视频的面部识别

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While classical face recognition (FR) technologies are mainly based on static images, video-based FR is concerned with the matching of two image sets containing facial images captured from each video. Video based FR is supposed to be advantageous as it takes more abundant information in to account to improve accuracy and robustness. Though many methods have been proposed, there still exists a variety of challenges such as the variation in poses and occlusion. In this paper, we proposed a simple video-based face recognition system by proposing an Auto-Associative Elman Network (AAEN) for the comparison of facial image sequences from videos. AAEN is designed to reconstruct its inputs, while compressing the data to a lower-dimensionality in the hidden layer. In the recognition system, faces are first detected by applying the Viola-Jones algorithm and then tracked by exploiting Kalman filtering. We tested our method in two experimental settings, using a webcam for the simulation of video conferencing and a surveillance camera for indoor environments. Experiment results demonstrated that the proposed AAEN model can efficiently handle the temporal face sequences for the recognition task. The average recognition accuracies for the two experimental settings are 90.2% and 86.4% respectively.
机译:传统的人脸识别(FR)技术主要基于静态图像,而基于视频的FR关注包含从每个视频捕获的面部图像的两个图像集的匹配。基于视频的FR被认为是有利的,因为它考虑了更多的信息以提高准确性和鲁棒性。尽管已经提出了许多方法,但是仍然存在各种挑战,例如姿势和遮挡的变化。在本文中,我们通过提出一个自动关联的Elman网络(AAEN)来比较视频中的人脸图像序列,提出了一个基于视频的简单人脸识别系统。 AAEN旨在重构其输入,同时将数据压缩到隐藏层中的较低维度。在识别系统中,首先通过应用Viola-Jones算法检测面部,然后通过利用卡尔曼滤波进行跟踪。我们在两个实验设置中测试了我们的方法,使用了用于视频会议模拟的网络摄像头和用于室内环境的监控摄像头。实验结果表明,提出的AAEN模型可以有效地处理识别任务的人脸时序。两个实验设置的平均识别准确度分别为90.2%和86.4%。

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