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Detection of Tongue Protrusion Gestures from Video

机译:从视频中检测舌头突出手势

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We propose a system that, using video information, segments the mouth region from a face image and then detects the protrusion of the tongue from inside the oral cavity. Initially, under the assumption that the mouth is closed, we detect both mouth corners. We use a set of specifically oriented Gabor filters for enhancing horizontal features corresponding to the shadow existing between the upper and lower lips. After applying the Hough line detector, the extremes of the line that was found are regarded as the mouth corners. Detection rate for mouth corner localization is 85.33%. These points are then input to a mouth appearance model which fits a mouth contour to the image. By segmenting its bounding box we obtain a mouth template. Next, considering the symmetric nature of the mouth, we divide the template into right and left halves. Thus, our system makes use of three templates. We track the mouth in the following frames using normalized correlation for mouth template matching. Changes happening in the mouth region are directly described by the correlation value, i.e., the appearance of the tongue in the surface of the mouth will cause a decrease in the correlation coefficient through time. These coefficients are used for detecting the tongue protrusion. The right and left tongue protrusion positions will be detected by analyzing similarity changes between the right and left half-mouth templates and the currently tracked ones. Detection rates under the default parameters of our system are 90.20% for the tongue protrusion regardless of the position, and 84.78% for the right and left tongue protrusion positions. Our results demonstrate the feasibility of real-time tongue protrusion detection in vision-based systems and motivates further investigating the usage of this new modality in human-computer communication.
机译:我们提出了一种系统,该系统使用视频信息从面部图像中分割嘴巴区域,然后从口腔内部检测舌头的伸出。最初,在假设嘴巴闭合的情况下,我们检测到两个嘴角。我们使用一组专门定向的Gabor滤镜来增强与上嘴唇和下嘴唇之间存在的阴影相对应的水平特征。应用霍夫线检测器后,发现的线的极端被视为嘴角。嘴角定位的检出率为85.33%。然后将这些点输入到使嘴部轮廓适合图像的嘴部外观模型。通过分割其边界框,我们可以获得口模板。接下来,考虑到嘴的对称性质,我们将模板分为左右两半。因此,我们的系统使用了三个模板。我们使用归一化相关性对嘴模板进行匹配,在以下帧中跟踪嘴。在口腔区域中发生的变化由相关值直接描述,即,舌头在口腔表面的出现将导致相关系数随时间降低。这些系数用于检测舌头突出。通过分析左右半口模板与当前跟踪的模板之间的相似性变化,可以检测到左右舌头的突出位置。在我们系统的默认参数下,无论位置在哪里,对于舌头突出的检测率为90.20%,对于左右舌头突出的位置,检测率为84.78%。我们的结果证明了在基于视觉的系统中实时舌头突出检测的可行性,并激发了人们对这种新模式在人机通信中的应用进行进一步调查的动机。

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