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A New Information Fusion Method for SVM-Based Robotic Audio-Visual Emotion Recognition

机译:基于SVM的机器人视听情感识别的新信息融合方法

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Emotion recognition has become an important research area for advanced human-robot interaction. Through recognizing facial expressions, a robot can interact with a person with a more friendly manner. In this paper, we proposed a bimodal emotion recognition system by combining image and speech information. A novel information fusion strategy is proposed to set proper weights to two feature modalities based on their recognition reliability. The fusion weights are determined by the distance between test data and the classification hyperplane and the standard deviation of training samples. After normalization using the mean distance between training samples and the hyperplane, the fusion weight is set to represent the classification reliability of individual modality. In the latter bimodal SVM classification, the recognition result with higher weight is selected. The complete procedure has been implemented in a DSP-based system to recognize five facial expressions on-line in real time. The experimental results show that a recognition rate of 86.9% is achieved, an improvement of 5% compared with using only image information.
机译:情感识别已成为高级人体机器人互动的重要研究领域。通过识别面部表情,机器人可以与更友好的方式与人交互。在本文中,我们通过组合图像和语音信息提出了双峰情绪识别系统。提出了一种新颖的信息融合策略,根据其识别可靠性将适当的权重设置为两个特征方式。融合重量由测试数据与分类超平面之间的距离和训练样本的标准偏差决定。在使用训练样本和超平面之间的平均距离之间归一化之后,熔化重量被设定为表示单个模态的分类可靠性。在后一双峰SVM分类中,选择具有更高权重的识别结果。完整的过程已在基于DSP的系统中实现,以实时在线识别五个面部表情。实验结果表明,识别率为86.9%,与仅使用图像信息相比,5%的提高。

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