Optoelectronics Letters, Volume. 17, Issue 7, 444(2021)

WB-KNN for emotion recognition from physiological signals

Weilun XIE1...2 and Wanli XUE12,* |Show fewer author(s)
Author Affiliations
  • 1School of Computer Science and Engineering, Tianjin University of Technology, Tianjin 300384, China
  • 2Engineering Research Center of Learning-Based Intelligent System, Ministry of Education, Tianjin 300384, China
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    K-nearest neighbor (KNN) has yielded excellent performance in physiological signals based on emotion recognition. But there are still some issues: the majority vote only by the nearest neighbors is too simple to deal with complex (like skewed) class distribution; features with the same contribution to the similarity will degrade the classification accuracy; samples in boundaries between classes are easily misclassified when k is larger. Therefore, we propose an improved KNN algorithm called WB-KNN, which takes into account the weight (both features and classification) and boundaries between classes. Firstly, a novel weighting method based on the distance and farthest neighbors named WDF is proposed to weight the classification, which improves the voting accuracy by making the nearer neighbors contribute more to the classification and using the farthest neighbors to reduce the weight of non-target class. Secondly, feature weight is introduced into the distance formula, so that the significant features contribute more to the similarity than noisy or irrelevant features. Thirdly, a voting classifier is adopted in order to overcome the weakness of KNN in boundaries between classes by combining different classifiers. Results of WB-KNN algorithm are encouraging compared with the traditional KNN and other classification algorithms on the physiological dataset with a skewed class distribution. Classification accuracy for 29 participants achieves 94.219 2% for the recognition of four emotions.

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    XIE Weilun, XUE Wanli. WB-KNN for emotion recognition from physiological signals[J]. Optoelectronics Letters, 2021, 17(7): 444

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    Paper Information

    Received: Jul. 13, 2020

    Accepted: Aug. 28, 2020

    Published Online: Sep. 2, 2021

    The Author Email: Wanli XUE (xuewanli@email.tjut.edu.cn)

    DOI:10.1007/s11801-021-0118-2

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