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Effects of Training Set Selection on Pain Recognition Via Facial Expressions

机译:训练集选择对通过面部表情进行疼痛识别的影响

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This paper presents an approach to pain expression classification based on Gabor energy filters with Support Vector Machines (SVMs), followed by analyzing the effects of training set variations on the systems classification rate. This approach is tested on the UNBC-McMaster Shoulder Pain Archive, which consists of spontaneous pain images, hand labelled using the Prkachin and Solomon Pain Intensity scale. In this paper, the subjects pain intensity level has been quantized into three disjoint groups: no pain, weak pain and strong pain. The results of experiments show that Gabor energy filters with SVMs provide comparable or better results to previous filter-based pain recognition methods, with precision rates of 74%, 30% and 78% for no pain, weak pain and strong pain, respectively. The study of effects of intra-class skew, or changing the number of images per subject, show that both completely removing and over-representing poor quality subjects in the training set has little effect on the overall accuracy of the system. This result suggests that poor quality subjects could be removed from the training set to save offline training time and that SVM is robust not only to outliers in training data, but also to significant amounts of poor quality data mixed into the training sets.
机译:本文提出一种基于Gabor能量滤波器和支持向量机(SVM)的疼痛表情分类方法,然后分析训练集变化对系统分类率的影响。此方法在UNBC-McMaster肩膀疼痛档案库中进行了测试,该档案库包含自发性疼痛图像,并使用Prkachin和Solomon疼痛强度量表进行了手工标记。在本文中,受试者的疼痛强度水平已被量化为三个不相交的组:无疼痛,弱疼痛和强疼痛。实验结果表明,带有SVM的Gabor能量过滤器可提供与以前基于过滤器的疼痛识别方法相当或更好的结果,无疼痛,弱疼痛和强疼痛的准确率分别为74%,30%和78%。对类内偏斜的影响或更改每个对象的图像数量的研究表明,完全消除和过度代表训练集中质量较差的对象对系统的整体准确性几乎没有影响。该结果表明,可以从训练集中删除质量较差的主题,以节省离线训练时间,并且SVM不仅对训练数据中的异常值具有鲁棒性,而且对于混合到训练集中的大量劣质数据也具有较强的鲁棒性。

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