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MDLFace: Memorability augmented deep learning for video face recognition

机译:mdlface:令人难忘的深度学习视频面识别

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Videos have ample amount of information in the form of frames that can be utilized for feature extraction and matching. However, face images in not all of the frames are “memorable” and useful. Therefore, utilizing all the frames available in a video for recognition does not necessarily improve the performance but significantly increases the computation time. In this research, we present a memorability based frame selection algorithm that enables automatic selection of memorable frames for facial feature extraction and matching. A deep learning algorithm is then proposed that utilizes a stack of denoising autoencoders and deep Boltzmann machines to perform face recognition using the most memorable frames. The proposed algorithm, termed as MDLFace, is evaluated on two publicly available video face databases, Youtube Faces and Point and Shoot Challenge. The results show that the proposed algorithm achieves state-of-the-art performance at low false accept rates.
机译:视频具有可用于特征提取和匹配的帧形式的充足的信息。 然而,在并非所有帧中的面部图像是“难忘的”并且有用。 因此,利用视频中可用的所有帧来识别不一定提高性能但显着增加计算时间。 在这项研究中,我们介绍了一种基于难忘的帧选择算法,其能够自动选择面部特征提取和匹配的难忘帧。 然后提出了一种深入的学习算法,该算法利用一堆去噪的自动统计器和深螺栓锤机器使用最难忘的帧进行人脸识别。 所提出的算法称为MDLFace,在两个公开的视频面部数据库中,YouTube面部和点和射击挑战评估。 结果表明,该算法以低假接受速率实现最先进的性能。

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