面部表情识别需要多少帧?

Kaimin Yu, Zhiyong Wang, Genliang Guan, Qiuxia Wu, Z. Chi, D. Feng
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引用次数: 1

摘要

面部表情分析对于实现多媒体视频内容的社会化智能处理至关重要。大多数面部表情识别算法通常分析表情的整个图像序列,以利用其时间特征。然而,很少有人研究是否有必要利用一个序列的所有帧,因为人类能够从非常短的序列(甚至只有一帧)中捕捉面部表情的动态。在本文中,我们研究了面部表情序列帧数对面部表情识别精度的影响。特别地,我们开发了一种基于关键点的帧表示的关键帧选择方法。在流行的CK面部表情数据集上的实验结果表明,使用一半序列帧的识别精度与使用所有序列帧的识别精度相当。我们的关键帧选择方法可以在不明显影响识别精度的情况下进一步减少帧数。
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How Many Frames Does Facial Expression Recognition Require?
Facial expression analysis is essential to enable socially intelligent processing of multimedia video content. Most facial expression recognition algorithms generally analyze the whole image sequence of an expression to exploit its temporal characteristics. However, it is seldom studied whether it is necessary to utilize all the frames of a sequence, since human beings are able to capture the dynamics of facial expressions from very short sequences (even only one frame). In this paper, we investigate the impact of the number of frames in a facial expression sequence on facial expression recognition accuracy. In particular, we develop a key frame selection method through key point based frame representation. Experimental results on the popular CK facial expression dataset indicate that recognition accuracy achieved with half of the sequence frames is comparable to that of utilizing all the sequence frames. Our key frame selection method can further reduce the number of frames without clearly compromising recognition accuracy.
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