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Facial expression recognition using active contour-based face detection, facial movement-based feature extraction, and non-linear feature selection

机译:使用基于主动轮廓的面部检测,基于面部运动的特征提取和非线性特征选择进行面部表情识别

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Knowledge about people's emotions can serve as an important context for automatic service delivery in context-aware systems. Hence, human facial expression recognition (FER) has emerged as an important research area over the last two decades. To accurately recognize expressions, FER systems require automatic face detection followed by the extraction of robust features from important facial parts. Furthermore, the process should be less susceptible to the presence of noise, such as different lighting conditions and variations in facial characteristics of subjects. Accordingly, this work implements a robust FER system, capable of providing high recognition accuracy even in the presence of aforementioned variations. The system uses an unsupervised technique based on active contour model for automatic face detection and extraction. In this model, a combination of two energy functions: Chan-Vese energy and Bhattacharyya distance functions are employed to minimize the dissimilarities within a face and maximize the distance between the face and the background. Next, noise reduction is achieved by means of wavelet decomposition, followed by the extraction of facial movement features using optical flow. These features reflect facial muscle movements which signify static, dynamic, geometric, and appearance characteristics of facial expressions. Post-feature extraction, feature selection, is performed using Stepwise Linear Discriminant Analysis, which is more robust in contrast to previously employed feature selection methods for FER. Finally, expressions are recognized using trained HMM(s). To show the robustness of the proposed system, unlike most of the previous works, which were evaluated using a single dataset, performance of the proposed system is assessed in a large-scale experimentation using five publicly available different datasets. The weighted average recognition rate across these datasets indicates the success of employing the proposed system for FER.
机译:有关人的情绪的知识可以用作上下文感知系统中自动服务交付的重要上下文。因此,在过去的二十年中,人脸表情识别(FER)已经成为重要的研究领域。为了准确识别表情,FER系统需要自动面部检测,然后再从重要的面部部位提取鲁棒的特征。此外,该过程应较少受到噪声的影响,例如不同的光照条件和对象面部特征的变化。因此,该工作实现了鲁棒的FER系统,即使在存在上述变化的情况下也能够提供高识别精度。该系统使用基于主动轮廓模型的无监督技术来自动检测和提取人脸。在此模型中,两个能量函数(Chan-Vese能量和Bhattacharyya距离函数)结合使用,以最大程度地减少人脸内的差异并最大化人脸与背景之间的距离。接下来,通过小波分解实现降噪,然后使用光流提取面部运动特征。这些特征反映了面部肌肉的运动,这些运动表示面部表情的静态,动态,几何和外观特征。使用逐步线性判别分析来进行特征后提取,特征选择,与以前采用的FER特征选择方法相比,该方法更加健壮。最后,使用受过训练的HMM识别表达式。为了显示所提出系统的鲁棒性,与大多数以前的工作不同,后者使用单个数据集进行了评估,所提出的系统的性能是使用五个可公开获得的不同数据集在大规模实验中进行评估的。这些数据集的加权平均识别率表明了将建议的系统用于FER的成功。

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