论文标题

面部运动协同作用和动作单元从远端可穿戴肌电图和计算机视觉中检测

Facial movement synergies and Action Unit detection from distal wearable Electromyography and Computer Vision

论文作者

Perusquia-Hernandez, Monica, Dollack, Felix, Tan, Chun Kwang, Namba, Shushi, Ayabe-Kanamura, Saho, Suzuki, Kenji

论文摘要

远端面部肌电图(EMG)可用于以合理的精度检测微笑和皱眉。即使电极未直接放在源肌肉上,它也将其大写以检测相关的肌肉活动。该方法的主要优点是防止面部表达产生的阻塞和阻塞,同时允许EMG测量。但是,测量EMG远端需要表明面部运动的确切来源尚不清楚。我们提出了一种新的方法,可以从远端面部EMG和计算机视觉(CV)估算特定的面部动作单元(AUS)。该方法基于独立的组件分析(ICA),非负矩阵分解(NNMF)和所得组件的排序,以确定哪个最有可能与每个CV标记的动作单元(AU)相对应。通过计算与人类编码者的一致性,可以估算检测Au06(Orbicularis oculi)和Au12(Zygomaticus Major)的性能。我们提出的算法的结果显示,AU6的精度为81%,Cohen的Kappa为0.49; Au12的精度为82%,Cohen的Kappa为0.53。这证明了远端EMG检测单个面部运动的潜力。使用此多模式方法,确定了几种AU协同作用。我们使用连续的CV标签量化了Au6和Au12在摆姿势和自发的微笑中的同发生和时机。还对基于EMG的标签进行了共发生分析,以发现肌肉协同作用与可见面部运动的运动学之间的关系。

Distal facial Electromyography (EMG) can be used to detect smiles and frowns with reasonable accuracy. It capitalizes on volume conduction to detect relevant muscle activity, even when the electrodes are not placed directly on the source muscle. The main advantage of this method is to prevent occlusion and obstruction of the facial expression production, whilst allowing EMG measurements. However, measuring EMG distally entails that the exact source of the facial movement is unknown. We propose a novel method to estimate specific Facial Action Units (AUs) from distal facial EMG and Computer Vision (CV). This method is based on Independent Component Analysis (ICA), Non-Negative Matrix Factorization (NNMF), and sorting of the resulting components to determine which is the most likely to correspond to each CV-labeled action unit (AU). Performance on the detection of AU06 (Orbicularis Oculi) and AU12 (Zygomaticus Major) was estimated by calculating the agreement with Human Coders. The results of our proposed algorithm showed an accuracy of 81% and a Cohen's Kappa of 0.49 for AU6; and accuracy of 82% and a Cohen's Kappa of 0.53 for AU12. This demonstrates the potential of distal EMG to detect individual facial movements. Using this multimodal method, several AU synergies were identified. We quantified the co-occurrence and timing of AU6 and AU12 in posed and spontaneous smiles using the human-coded labels, and for comparison, using the continuous CV-labels. The co-occurrence analysis was also performed on the EMG-based labels to uncover the relationship between muscle synergies and the kinematics of visible facial movement.

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