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视频人脸识别中高效分解卷积与时间金字塔网络研究
引用本文:周书田,颜信,谢镇汕. 视频人脸识别中高效分解卷积与时间金字塔网络研究[J]. 电子科技大学学报(自然科学版), 2021, 50(2): 231-235. DOI: 10.12178/1001-0548.2020319
作者姓名:周书田  颜信  谢镇汕
作者单位:电子科技大学格拉斯哥学院 成都 611731
摘    要:随着大量视频监控和摄像头网络的架设,非受限场景下的连续视频帧人脸识别愈发引人关注.传统的连续视频帧人脸识别方法大多存在识别结果易波动和计算资源消耗密集的问题.因此,该文对比了不同的帧间汇聚方式,采用注意力机制优化帧间汇聚过程,并采用3D分离卷积进行视频人脸建模,有效降低了视频人脸识别的计算消耗,提高了识别准确率.此外,...

关 键 词:卷积神经网络  分解卷积  人脸识别  时间金字塔网络  视频分析
收稿时间:2020-05-30

Efficient Decomposition Convolution and Temporal Pyramid Network for Video Face Recognition
Affiliation:Glasgow Collge, University of Electronic Science and Technology of China Chengdu 61173
Abstract:With a large number of video surveillance and camera networks, face recognition of continuous video frames in unrestricted scenes is becoming more and more attractive. Most of the traditional face recognition methods for continuous video frames have the problem of fluctuating recognition results and intensive computing resources. In this paper, an efficient 3D decomposition convolution is designed, which can effectively reduce the computational consumption of video face recognition and improve the recognition accuracy. Finally, we also propose a temporal pyramid network to further effectively mine complementary information between frames to improve the recognition accuracy. The performance has been tested on YTF and PaSC datasets.
Keywords:
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