首页> 外文会议>9th International conference on language resources and evaluation >3D Face Tracking and Multi-scale, Spatio-temporal Analysis of Linguistically Significant Facial Expressions and Head Positions in ASL
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3D Face Tracking and Multi-scale, Spatio-temporal Analysis of Linguistically Significant Facial Expressions and Head Positions in ASL

机译:3D面部跟踪和多尺度,时空分析ASL中的语言显着的面部表情和头部位置

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Essential grammatical information is conveyed in signed languages by clusters of events involving facial expressions and movements of the head and upper body. This poses a significant challenge for computer-based sign language recognition. Here, we present new methods for the recognition of nonmanual grammatical markers in American Sign Language (ASL) based on: (1) new 3D tracking methods for the estimation of 3D head pose and facial expressions to determine the relevant low-level features; (2) methods for higher-level analysis of component events (raised/lowered eyebrows, periodic head nods and head shakes) used in grammatical markings-with differentiation of temporal phases (onset, core, offset, where appropriate), analysis of their characteristic properties, and extraction of corresponding features; (3) a 2-level learning framework to combine low- and high-level features of differing spatio-temporal scales. This new approach achieves significantly better tracking and recognition results than our previous methods.
机译:基本的语法信息通过涉及头部和上半身的面部表情和运动的事件群以签名语言传达。这为基于计算机的手语识别构成了重大挑战。在这里,我们基于以下:(1)用于估计3D头部姿势和面部表达的新3D跟踪方法来识别美国手语(ASL)中的非Manual语法标记的新方法,以确定相关的低级功能; (2)在语法标记中使用的组件事件(凸起/降低眉毛,周期性头部点和头部摇晃)的更高级别分析方法 - 随着时间阶段的分化(发病,核心,偏移,适当的情况),其特征分析属性,以及相应特征的提取; (3)一个2级学习框架,以结合不同的时空尺度的低级和高级功能。这种新方法比我们之前的方法实现了更好的跟踪和识别结果。

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