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Smile or smirk? Automatic detection of spontaneous asymmetric smiles to understand viewer experience

机译:微笑或傻笑?自动检测自发的不对称微笑,了解观众体验

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Asymmetric facial expressions, such as a smirk, are strong emotional signals indicating valence as well as discrete emotion states such as contempt, doubt and defiance. Yet, the automated detection of asymmetric facial action units has been largely ignored to date. We present the first automated system for detecting spontaneous asymmetric lip movements as people watched online video commercials. Many of these expressions were subtle, fleeting and co-occurred with head movements. For each frame of the video, the face is located, cropped, scaled and flipped around the vertical axis. Both the normalized and flipped versions of the face feed a right hemiface trained (RHT) classifier. The difference between both outputs indicates the presence of asymmetric facial actions on a framebasis. The system was tested on over 500 facial videos that were crowdsourced over the Internet, with an overall 2AFC score of 88.2% on spontaneous videos. A dynamic model based on template matching is then used to identify asymmetric events that have a clear onset and offset. The event detector reduced the false alarm rate due to tracking inaccuracies, head movement, eating and non-uniform lighting. For an event that happens once every 20 videos, we are able to detect half of the occurrences with a false alarm rate of 1 event every 85 videos. We demonstrate the application of this work to measuring viewer affective responses to video content.
机译:非对称面部表情,例如傻笑,是强烈的情绪信号,表明价值观以及离散情绪状态,如蔑视,怀疑和蔑视。然而,迄今为止已经大大忽略了非对称面部动作单位的自动检测。我们介绍了第一系统,用于检测人们观看在线视频广告的自发不对称唇部运动。其中许多表达是微妙的,稍纵即逝,并与头部运动相同。对于视频的每个帧,面部位于,裁剪,缩放并在垂直轴线上翻转。面部的归一化和翻转的版本都喂养右血液训练(RHT)分类器。两个输出之间的差异表示帧内上存在非对称面部动作。该系统在超过500个面部视频上进行了测试,这些影片遍布互联网,总体2AFC得分为88.2%的自发性视频。然后,基于模板匹配的动态模型用于识别具有清除发出和偏移的非对称事件。由于跟踪不准确,头部运动,进食和非均匀照明,事件检测器降低了误报率。对于每20个视频发生一次的事件,我们能够每85个视频中检测到1个事件的误报率的一半发生。我们展示了这项工作的应用来测量对视频内容的观众情感响应。

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