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Dynamic Facial Features for Inherently Safer Face Recognition

机译:动态面部特征,本质上更安全地识别人脸

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Among the many known type of intra-class variations, facial expressions are considered particularly challenging, as witnessed by the large number of methods that have been proposed to cope with them. The idea inspiring this work is that dynamic facial features (DFF) extracted from facial expressions while a sentence is pronounced, could possibly represent a salient and inherently safer biometric identifier, due to the greater difficulty in forging a time variable descriptor instead of a static one. We therefore investigated on how a set of geometrical features, defined as distances between landmarks located in the lower half of face, changes across time while a sentence is uttered to find the most effective yet compact representation. The features vectors built upon these time-series were used to train a deep feed-forward neural network on the OuluVS visual-speech database. Testing in identification modality resulted in 98.2% of average recognition accuracy, 0.64% of equal error rate and a remarkable robustness to how the sentence is pronounced.
机译:在许多已知类型的类内变异中,面部表情被认为是特别具有挑战性的,正如已经提出的应对它们的大量方法所证明的那样。启发这项工作的想法是,在发音时从面部表情中提取的动态面部特征(DFF)可能代表一个显着且本质上更安全的生物特征识别符,因为伪造时间变量描述符而不是静态变量的难度更大。因此,我们研究了一组几何特征(定义为位于脸部下半部分之间的地标之间的距离)如何随时间变化,同时发出一句话以找到最有效而紧凑的表示形式。在这些时间序列上建立的特征向量用于在OuluVS视觉语音数据库上训练深层前馈神经网络。在识别方式上的测试产生了98.2%的平均识别准确度,0.64%的均等错误率,并且对句子的发音具有显着的鲁棒性。

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