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Classification of facial-emotion expression in the application of psychotherapy using Viola-Jones and Edge-Histogram of Oriented Gradient

机译:应用中提琴-琼斯和定向梯度边缘直方图在心理治疗中对面部情绪表达的分类

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Psychotherapy requires appropriate recognition of patient's facial-emotion expression to provide proper treatment in psychotherapy session. To address the needs this paper proposed a facial emotion recognition system using Combination of Viola-Jones detector together with a feature descriptor we term Edge-Histogram of Oriented Gradients (E-HOG). The performance of the proposed method is compared with various feature sources including the face, the eyes, the mouth, as well as both the eyes and the mouth. Seven classes of basic emotions have been successfully identified with 96.4% accuracy using Multi-class Support Vector Machine (SVM). The proposed descriptor E-HOG is much leaner to compute compared to traditional HOG as shown by a significant improvement in processing time as high as 1833.33% (p-value = 2.43E-17) with a slight reduction in accuracy of only 1.17% (p-value = 0.0016).
机译:心理治疗需要正确识别患者的面部表情,以便在心理治疗期间提供适当的治疗。为了满足需求,本文提出了一种使用Viola-Jones检测器与特征描述符相结合的面部表情识别系统,我们将其称为“定向梯度边缘直方图”(E-HOG)。将该方法的性能与包括脸部,眼睛,嘴巴以及眼睛和嘴巴在内的各种特征源进行了比较。使用多类别支持向量机(SVM)已成功识别出7类基本情感,准确率达到96.4%。与传统的HOG相比,拟议的描述符E-HOG的计算更加精益求精,这表明处理时间显着改善,高达1833.33%(p值= 2.43E-17),而准确性仅略微降低了1.17%( p值= 0.0016)。

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