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Facial emotion recognition in the elderly using a SVM classifier

机译:使用SVM分类器的老年人的面部情感识别

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Facial expressions are a spontaneous way of perceiving emotions, which can provide information related to the cognitive state of a person. Facial expression recognition of the elderly is an important aid to better care them, according to their state of mind, although it can be a difficult task because their expressions might not be as easily perceived as those from younger persons. We proposed a model to classify the facial expressions of the elderly, presenting the differences between facial expression recognition in the elder and in other age group, as well as methods to surpass these difficulties. Viola Jones with Haar Features was used to extract the faces and Gabor Filter to extract the facial characteristics. These characteristics are classified using a Multiclass Support Vector Machine. We got an accuracy of 90.32%, 84.61%and 66.6%, when detecting the neutral state, happiness and sadness respectively in the elderly. In the other age group, we got an accuracy of 95.24%, 88.57%, and 80%, while detecting the neutral, happiness, and sadness states and concluded that aging influences negatively the facial expressions recognition tasks.
机译:面部表情是一种感知情绪的自发方式,可以提供与人的认知状态有关的信息。根据他们的心态,虽然它可能是一项艰巨的任务,但对老年人来说,老年人的表情识别是一个重要的援助,因为它可能是一项艰巨的任务,因为他们的表达可能不会像年轻人那样容易被视为那些人。我们提出了一个模型来分类老年人的面部表情,呈现老年人和其他年龄组的面部表情识别之间的差异,以及超越这些困难的方法。使用HAAR功能的Viola Jones用于提取面部和Gabor过滤器以提取面部特性。使用多键支持向量机进行分类这些特性。当在老年人中分别检测中立状态,幸福和悲伤时,我们的准确性为90.32%,84.61%和66.6%。在另一个年龄组中,我们的准确性为95.24%,88.57%和80%,同时检测中性,幸福和悲伤状态,并得出结论,老龄化影响面部表情识别任务的消极影响。

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