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Error-correcting output codes for multi-label emotion classification

机译:用于多标签情感分类的纠错输出代码

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摘要

Multi-modal affective data such as EEG and physiological signals is increasingly utilized to analyze of human emotional states. Due to the noise existed in collected affective data, however, the performance of emotion recognition is still not satisfied. In fact, the issue of emotion recognition can be regarded as channel coding, which focuses on reliable communication through noise channels. Using affective data and its label, the redundant codeword would be generated to correct signals noise and recover emotional label information. Therefore, we utilize multi-label output codes method to improve accuracy and robustness of multi-dimensional emotion recognition by training a redundant codeword model, which is the idea of error-correcting output codes. The experiment results on DEAP dataset show that the multi-label output codes method outperforms other traditional machine learning or pattern recognition methods for the prediction of emotional multi-labels.
机译:诸如EEG和生理信号之类的多模式情感数据越来越多地用于分析人类的情绪状态。但是,由于收集到的情感数据中存在噪声,因此仍无法满足情绪识别的性能。实际上,情感识别的问题可以看作是信道编码,其重点在于通过噪声信道的可靠通信。使用情感数据及其标签,将生成冗余码字以纠正信号噪声并恢复情感标签信息。因此,我们通过训练冗余码字模型(即纠错输出码的思想),利用多标签输出码方法来提高多维情感识别的准确性和鲁棒性。在DEAP数据集上的实验结果表明,多标签输出代码方法在情感多标签预测方面优于其他传统的机器学习或模式识别方法。

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