Robust facial expressions recognition using 3D average face and ameliorated adaboost

Jinhui Chen, Y. Ariki, T. Takiguchi
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引用次数: 18

Abstract

One of the most crucial techniques associated with Computer Vision is technology that deals with facial recognition, especially, the automatic estimation of facial expressions. However, in real-time facial expression recognition, when a face turns sideways, the expressional feature extraction becomes difficult as the view of camera changes and recognition accuracy degrades significantly. Therefore, quite many conventional methods are proposed, which are based on static images or limited to situations in which the face is viewed from the front. In this paper, a method that uses Look-Up-Table (LUT) AdaBoost combining with the three-dimensional average face is proposed to solve the problem mentioned above. In order to evaluate the proposed method, the experiment compared with the conventional method was executed. These approaches show promising results and very good success rates. This paper covers several methods that can improve results by making the system more robust.
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基于三维平均脸和改进adaboost的鲁棒面部表情识别
与计算机视觉相关的最关键技术之一是处理面部识别的技术,特别是面部表情的自动估计。然而,在实时面部表情识别中,当人脸侧转时,由于相机视角的变化,面部表情特征提取变得困难,识别精度显著降低。因此,提出了许多传统的方法,这些方法都是基于静态图像或仅限于从正面观看面部的情况。本文提出了一种利用查找表(LUT) AdaBoost结合三维平均人脸的方法来解决上述问题。为了对该方法进行评价,与传统方法进行了对比实验。这些方法显示出有希望的结果和非常好的成功率。本文介绍了几种可以通过提高系统鲁棒性来改善结果的方法。
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