不同情况下面部表情的非语言交流

Mahesh M. Goyani
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引用次数: 0

摘要

本章研究了人脸表情识别的计算机视觉技术,提高了人脸表情的识别率和计算效率。局部和全局基于外观的特征相结合,以结合精确的局部纹理和全局形状。我们提出了一种基于多级Haar (MLH)特征的系统,该系统计算简单,速度快。使用Haar背后的驱动因素是它的两个有趣的特性——信号压缩和能量保存。为了描述面部几何的重要性,我们首先对眉毛、眼睛和嘴巴等面部成分进行分割,然后仅对这些面部成分进行特征提取。实验在三个已知的公开可用的表达数据集CK、JAFFE、TFEID和内部WESFED数据集上进行。性能是根据各种模板匹配和机器学习分类器来衡量的。我们使用判别分析分类器对所提出的算子取得了最高的识别率。我们研究了该方法在低分辨率表情识别、小训练样本空间识别、存在噪声的识别等场景下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonverbal Communication through Facial Expression in Diverse Conditions
In this chapter, we investigated computer vision technique for facial expression recognition, which increase both - the recognition rate and computational efficiency. Local and global appearance-based features are combined in order to incorporate precise local texture and global shapes. We proposed Multi-Level Haar (MLH) feature based system, which is simple and fast in computation. The driving factors behind using the Haar were its two interesting properties - signal compression and energy preservation. To depict the importance of facial geometry, we first segmented the facial components like eyebrows, eye, and mouth, and then applied feature extraction on these facial components only. Experiments are conducted on three well known publicly available expression datasets CK, JAFFE, TFEID and in-house WESFED dataset. The performance is measured against various template matching and machine learning classifiers. We achieved highest recognition rate for proposed operator with Discriminant Analysis Classifier. We studied the performance of proposed approach in several scenarios like expression recognition from low resolution, recognition from small training sample space, recognition in the presence of noise and so forth.
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