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Online learning design of an image-based facial expression recognition system

机译:基于图像的面部表情识别系统的在线学习设计

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In order to serve people and support them in daily life, a domestic or service robot needs to accommodate itself to various individuals. Emotional and intelligent human–robot interaction plays an important role for a robot to gain attention of its users. Facial expression recognition is a key factor in interactive robotic applications. In this paper, an image-based facial expression recognition system that adapts online to a new face is proposed. The main idea of the proposed learning algorithm is to adjust parameters of the support vector machine (SVM) hyperplane for learning facial expressions of a new face. After mapping the input space to Gaussian-kernel space, support vector pursuit learning (SVPL) is employed to retrain the hyperplane in the new feature space. To expedite the retraining step, we propose to retrain a new SVM classifier by using only samples classified incorrectly in previous iteration in combination with critical historical sets. After adjusting the hyperplane parameters, the new classifier will recognize more effectively previous unrecognizable facial datasets. Experiments of using an embedded imaging system show that the proposed system recognizes new facial datasets with a recognition rate of 92.7%. Furthermore, it also maintains a satisfactory recognition rate of 82.6% of old facial samples.
机译:为了服务于人们并在日常生活中提供支持,家用或服务机器人需要适应各种不同的人。情感和智能人机交互在机器人赢得用户关注方面起着重要作用。面部表情识别是交互式机器人应用程序中的关键因素。本文提出了一种基于图像的面部表情识别系统,该系统可以在线适应新面孔。所提出的学习算法的主要思想是调整支持向量机(SVM)超平面的参数,以学习新面孔的面部表情。将输入空间映射到高斯核空间后,采用支持向量追踪学习(SVPL)在新的特征空间中重新训练超平面。为了加快重新训练步骤,我们建议通过仅使用先前迭代中错误分类的样本与关键历史集相结合来重新训练新的SVM分类器。调整了超平面参数之后,新的分类器将更有效地识别以前无法识别的面部数据集。使用嵌入式成像系统的实验表明,该系统能够以92.7%的识别率识别新的面部数据集。此外,它还保持了令人满意的旧面部样本识别率达82.6%。

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