基于决策树的面部表情识别

Fatima Zahra Salmam, Abdellah Madani, M. Kissi
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引用次数: 51

摘要

面部表情的情感识别一般分为三个步骤:人脸检测、特征提取和表情分类。本文的工作主要集中在两个方面:首先,提出了一种基于几何方法的图像提取方法。这种方法包括计算六个距离,以测量面部的部分,更好地描述面部表情。其次,在两个数据库(JAFEE和COHEN)上应用了一种称为决策树的自动监督学习方法,为了拥有一个具有七种可能类别(六种基本情绪加上中性)的面部表情分类系统,该系统使用先前计算的每个面部的六个距离(使用欧几里得距离,曼哈顿距离或闵可夫斯基距离)作为输入。我们的结果在JAFFE和COHEN数据库中的识别率分别为89.20%和90.61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Expression Recognition Using Decision Trees
Emotion recognition from facial expressions is generally performed in three steps: face detection, features extraction and classification of expressions. The present work focuses on two points: Firstly, a new extraction method is presented based on the geometric approach. This method consists of calculating six distances in order to measure parts of the face that better describe a facial expression. Secondly, an automatic supervised learning method called decision tree is applied on two databases (JAFEE and COHEN), in order to have a facial expressions classifying system with seven possible classes (six basic emotions plus neutral), this system uses as input the six distances previously calculated (using Euclidian, Manhattan or Minkowski distance) for each face. Our results achieved a recognition rate of 89.20% and 90.61% respectively in JAFFE and COHEN database.
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