A Fast Learning Algorithm for Robotic Emotion Recognition

Jung-Wei Hong, M. Han, K. Song, F. Chang
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引用次数: 9

Abstract

The capability of robotic emotion recognition is an important factor for human-robot interaction. In order to facilitate a robot to function in daily live environments, a emotion recognition system needs to accommodate itself to various persons. In this paper, an emotion recognition system that can adapt to new facial data is proposed. The main idea of the proposed learning algorithm is to adjust parameters of SVM hyperplane for learning emotional expressions of a new face. After mapping the input space to Gaussian-kernel space, support vector pursuit learning (SVPL) is applied to retrain the hyperplane in the new feature space. To expedite the retraining procedure, only samples classified incorrectly in previous iteration are combined with critical historical sets to restrain a new SVM classifier. After adjusting hyperplane parameters, the new classifier will recognize previous erroneous facial data. Experimental results show that the proposed system recognize new facial data with high correction rates after fast retraining the hyperplane. Moreover, the proposed method also keeps satisfactory recognition rate of old facial samples.
机器人情感识别的快速学习算法
机器人情感识别能力是实现人机交互的重要因素。为了使机器人在日常生活环境中发挥作用,情感识别系统需要适应不同的人。本文提出了一种能够适应新的人脸数据的情感识别系统。该学习算法的主要思想是调整支持向量机超平面的参数来学习新面孔的情绪表情。将输入空间映射到高斯核空间后,应用支持向量追踪学习(SVPL)在新的特征空间中对超平面进行再训练。为了加快再训练过程,只有在之前迭代中被错误分类的样本才与关键历史集相结合来约束新的SVM分类器。在调整超平面参数后,新的分类器将识别先前错误的人脸数据。实验结果表明,该系统在对超平面进行快速再训练后,具有较高的识别正确率。此外,该方法对旧的人脸样本也保持了令人满意的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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