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CNN based key frame extraction for face in video recognition

机译:基于CNN的视频识别中人脸关键帧提取

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摘要

Nowadays we see an increasing demand for face in video recognition. However, in order to overcome the large variations in face quality in video streams, as well as for the purpose of improving the processing speed of face recognition system, frame selection becomes a necessary and essential step prior to performing face recognition. In this paper, we propose a convolutional neural network (CNN) based key-frame extraction (KFE) engine with Graphic Processing Unit (GPU) acceleration, which targets at extracting key-frames with high quality faces correctly and swiftly. We evaluated our method with ChokePoint dataset following NIST standards and compared against several representative key-frame selection approaches. The experimental results show that our CNN-based KFE engine can largely reduce the total processing time for face in video recognition, as well as improves the recognition accuracy of the face recognition back-end. With GPU acceleration, our KFE engine reaches and exceeds real-time processing speed requirement under HD resolution, making it capable of processing multiple video steams on the fly. On top ofthat, our proposed KFE engine is adaptive to different face recognition back-end.
机译:如今,我们看到视频识别中对面部的需求不断增长。然而,为了克服视频流中面部质量的较大变化,并且为了提高面部识别系统的处理速度,在进行面部识别之前,帧选择成为必要且必要的步骤。在本文中,我们提出了一种基于卷积神经网络(CNN)的具有图形处理单元(GPU)加速的关键帧提取(KFE)引擎,旨在正确,快速地提取高质量人脸的关键帧。我们使用符合NIST标准的ChokePoint数据集评估了我们的方法,并与几种代表性的关键帧选择方法进行了比较。实验结果表明,基于CNN的KFE引擎可以大大减少视频识别中人脸的总处理时间,并提高了人脸识别后端的识别精度。通过GPU加速,我们的KFE引擎在高清分辨率下达到并超过了实时处理速度要求,使其能够实时处理多个视频流。最重要的是,我们提出的KFE引擎适用于不同的面部识别后端。

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