Detection and analysis model for grammatical facial expressions in sign language

M. S. Bhuvan, D. Rao, Siddhartha Jain, T. Ashwin, Ram Mohana Reddy Guddetti, S. Kulgod
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引用次数: 9

Abstract

The proposed research explores a relatively new area of expression detection through facial points in a sign language to enhance the computer interaction with the deaf and hard of hearing. The research mainly focuses on facial points collected from Kinect as basis for expression detection as opposed to numerous gesture based studies on sign language. This helps in deploying the applications in smart phones as it is feasible to capture facial point easily rather than hand gestures. Exhaustive experimentation is carried out with ten different machine learning algorithms for detecting nine different types of expression modeled as different binary classification problem for each expression. This is done for user dependent model and user independent model scenarios. The optimal classifier for each expression is found to outperform the current state-of-the-art techniques and has ROC area greater than 0.95 for each expression. It is found that user independent model's performance is comparable to user dependent model, hence is suggested as it is easy and efficient to deploy in practical applications. Finally, the importance of each facial point in detecting each type of expression has been mined, which can be instrumental for future research and for various application using facial points as basis for decision making.
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手语语法面部表情的检测与分析模型
本研究探索了一个相对较新的领域,即通过手语中的面部点来检测表情,以增强计算机与聋人和重听人的互动。该研究主要集中于从Kinect收集的面部点作为表情检测的基础,而不是大量基于手势的手语研究。这有助于在智能手机上部署应用程序,因为捕捉面部点比捕捉手势更容易。用十种不同的机器学习算法进行了详尽的实验,以检测九种不同类型的表情,每种表情都被建模为不同的二元分类问题。这适用于用户依赖模型和用户独立模型场景。发现每个表达的最佳分类器优于当前最先进的技术,并且每个表达的ROC面积大于0.95。发现用户独立模型的性能与用户依赖模型相当,因此建议在实际应用中易于部署和高效。最后,挖掘了每个面部点在检测每种表情类型中的重要性,这可以为未来的研究和使用面部点作为决策依据的各种应用提供帮助。
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