首页> 外文会议>IEEE International Conference on Acoustics Speech and Signal;ICASSP 2010 >Lip tracking using adaptive fuzzy particle filter in the context of car driving simulator under low contrast near-infrared illumination
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Lip tracking using adaptive fuzzy particle filter in the context of car driving simulator under low contrast near-infrared illumination

机译:在低对比度近红外照明下的汽车驾驶模拟器中,使用自适应模糊粒子滤波器进行嘴唇跟踪

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A real-time lip tracking on very low contrast images acquired under near-infrared illumination is presented. We developed a modified particle filter tracker based on fuzzy logic that is appropriate for non-linear modeling and robust to the non-Gaussian noise. Fuzzy model is used to normalize the particle filter samples weights. Fuzzy membership functions are applied to geometric and appearance features. Lip modeling and tracking are done by sampling around lip regions using a particle filter and scoring sample features are done based on a fuzzy rule. The performance of the tracking algorithm is evaluated for different people with various mouth changes, such as smile and speech. More than 78% of the lip corners are correctly detected within distances less than 5% of the lip length from the ground truth.
机译:提出了在近红外照明下获取的对比度非常低的图像的实时嘴唇跟踪。我们基于模糊逻辑开发了一种改进的粒子滤波跟踪器,该跟踪器适用于非线性建模并且对非高斯噪声具有鲁棒性。模糊模型用于归一化粒子过滤器样本的权重。模糊隶属度函数应用于几何和外观特征。嘴唇建模和跟踪是通过使用粒子滤波器对嘴唇区域进行采样来完成的,并基于模糊规则对样本特征进行评分。针对具有各种嘴巴变化(例如微笑和言语)的不同人群评估跟踪算法的性能。在距地面真相不到唇长的5%的距离内,可以正确检测到超过78%的唇角。

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