基于动态和主动视觉信息融合的图像序列面部表情理解

Yongmian Zhang, Q. Ji
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引用次数: 43

摘要

本文探讨了使用多感官信息融合技术与动态贝叶斯网络(dbn)来建模和理解图像序列中面部表情的时间行为。我们的面部表情理解方法是在一个概率框架中,从心理学的角度将dbn与面部动作单元(AUs)相结合。dbn提供了一个连贯和统一的层次概率框架来表示与面部表情相关的时空信息,并从可用信息中主动选择最具信息量的视觉线索,以最大限度地减少识别中的模糊性。面部表情的识别不仅要融合当前的视觉观察,还要融合之前的视觉证据。因此,通过建模面部表情的时间行为,识别变得更加鲁棒和准确。实验结果表明,该方法更适合于图像序列中的面部表情分析。
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Facial expression understanding in image sequences using dynamic and active visual information fusion
This paper explores the use of multisensory information fusion technique with dynamic Bayesian networks (DBNs) for modeling and understanding the temporal behaviors of facial expressions in image sequences. Our approach to the facial expression understanding lies in a probabilistic framework by integrating the DBNs with the facial action units (AUs) from psychological view. The DBNs provide a coherent and unified hierarchical probabilistic framework to represent spatial and temporal information related to facial expressions, and to actively select the most informative visual cues from the available information to minimize the ambiguity in recognition. The recognition of facial expressions is accomplished by fusing not only from the current visual observations, but also from the previous visual evidences. Consequently, the recognition becomes more robust and accurate through modeling the temporal behavior of facial expressions. Experimental results demonstrate that our approach is more admissible for facial expression analysis in image sequences.
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