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首页> 外文期刊>EURASIP journal on applied signal processing >Spatio-temporal graphical-model-based multiple facial feature tracking
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Spatio-temporal graphical-model-based multiple facial feature tracking

机译:基于时空图形模型的多人脸特征跟踪

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摘要

it is challenging to track multiple facial features simultaneously when rich expressions are presented on a face. We propose a two-step solution. In the first step, several independent condensation-style particle filters are utilized to track each facial feature in the temporal domain. Particle filters are very effective for visual tracking problems; however multiple independent trackers ignore the spatial constraints and the natural relationships among facial features. In the second step, we use Bayesian inference-belief propagation-to infer each facial feature's contour in the spatial domain, in which we learn the relationships among contours of facial features beforehand with the help of a large facial expression database. The experimental results show that our algorithm can robustly track multiple facial features simultaneously, while there are large interframe motions with expression changes.
机译:当面部表情丰富时,要同时跟踪多个面部特征是一项挑战。我们提出了两步解决方案。第一步,利用几个独立的冷凝式粒子滤波器跟踪时域中的每个面部特征。粒子过滤器对于视觉跟踪问题非常有效;但是,多个独立的跟踪器忽略了空间限制以及面部特征之间的自然关系。在第二步中,我们使用贝叶斯推理-置信度传播来推断空间域中每个面部特征的轮廓,在此之前,我们借助大型面部表情数据库预先了解面部特征的轮廓之间的关系。实验结果表明,在表情变化较大的帧间运动的同时,我们的算法可以同时强大地跟踪多个面部特征。

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