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Long term facial parts tracking in thermal imaging for uncooperative emotion recognition

机译:用于不合作情绪识别的热成像中的长期面部部件跟踪

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This paper proposes a tracking approach for regions of interest (ROI) in thermal image videos, where vital signs can be measured for emotion recognition. The proposed tracking framework overcomes a number of problems associated with this goal; mainly size of the ROI, appearance variations in the ROI with physiological changes, and the duration of tracking in a practical setting. The proposed framework consists of three modules: An adaptive particle filter tracker, an online detector, and finally a module to integrate the outputs of the two previous modules for learning as well as the final decision. The template of the adaptive particle filter tracker is updated based on the learning decision module to avoid drifting. In the detector module, a randomized classifier is used to detect the ROI. Then the output of this classifier is enhanced by removing false positives using a proposed geometrical constraint. The proposed framework is tested and compared to the state of art approaches on 32 human subjects with different physiological changes. Experimental results show that proposed method outperforms the others.
机译:本文提出了热图像视频中感兴趣区域(ROI)的跟踪方法,可以测量生命体征以进行情感识别。拟议的跟踪框架克服了与此目标相关的许多问题;主要是ROI的大小,具有生理变化的ROI的外观变化,以及在实际设置中跟踪的持续时间。所提出的框架由三个模块组成:自适应粒子滤波器跟踪器,在线检测器,最后是一个模块,用于集成两个先前模块的输出来学习以及最终决定。基于学习决策模块更新自适应粒子滤波器跟踪器的模板,以避免漂移。在检测器模块中,随机分类器用于检测ROI。然后使用所提出的几何约束删除假阳性来增强该分类器的输出。该拟议的框架进行了测试,并与32人受试者的艺术状态相比,具有不同的生理变化。实验结果表明,提出的方法优于其他方法。

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