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Pairwise Conditional Random Forests for Facial Expression Recognition

机译:成对条件随机森林的面部表情识别

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Facial expression can be seen as the dynamic variation of one's appearance over time. Successful recognition thus involves finding representations of high-dimensional spatiotemporal patterns that can be generalized to unseen facial morphologies and variations of the expression dynamics. In this paper, we propose to learn Random Forests from heterogeneous derivative features (e.g. facial fiducial point movements or texture variations) upon pairs of images. Those forests are conditioned on the expression label of the first frame to reduce the variability of the ongoing expression transitions. When testing on a specific frame of a video, pairs are created between this frame and the previous ones. Predictions for each previous frame are used to draw trees from Pairwise Conditional Random Forests (PCRF) whose pairwise outputs are averaged over time to produce robust estimates. As such, PCRF appears as a natural extension of Random Forests to learn spatio-temporal patterns, that leads to significant improvements over standard Random Forests as well as state-of-the-art approaches on several facial expression benchmarks.
机译:面部表情可以看作是一个人的外表随时间的动态变化。因此,成功的识别涉及寻找高维时空模式的表示形式,这些模式可以推广到看不见的面部形态和表情动态变化。在本文中,我们建议从成对图像上的异类衍生特征(例如面部基准点移动或纹理变化)中学习随机森林。这些森林以第一帧的表达标签为条件,以减少正在进行的表达转换的可变性。在视频的特定帧上进行测试时,会在此帧与先前的帧之间创建配对。每个前一帧的预测用于从成对条件随机森林(PCRF)中绘制树,其成对输出随时间平均,以生成可靠的估计。因此,PCRF似乎是随机森林的自然延伸,可以学习时空模式,从而大大提高了标准随机森林的水平,并提高了几种面部表情基准的最新技术水平。

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