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Facial expression recognition based on dual-feature fusion and improved random forest classifier

机译:基于双特征融合和改进的随机森林分类器的人脸表情识别

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摘要

Facial expression recognition (FER) is an important means for machines to understand the changes in the facial expression of human beings. Expression recognition using single-modal facial images, such as gray scale, may suffer from illumination changes and the lack of detailed expression-related information. In this study, multi-modal facial images, such as facial gray scale, depth, and local binary pattern (LBP), are used to recognize six basic facial expressions, namely, happiness, sadness, anger, disgust, fear, and surprise. Facial depth images are used for robust face detection initially. The deep geometric feature is represented by point displacement and angle variation in facial landmark points with the help of depth information. The local appearance feature, which is obtained by concatenating LBP histograms of expression-prominent patches, is utilized to recognize those expression changes that are difficult to capture by only the geometric changes. Thereafter, an improved random forest classifier based on feature selection is used to recognize different facial expressions. Results of comparative evaluations in benchmarking datasets show that the proposed method outperforms several state-of-the-art FER approaches that are based on hand-crafted features. The capability of the proposed method is comparable to that of the popular convolutional neuralnetwork-based FER approach but with fewer demands for training data and a high-performance hardware platform.
机译:面部表情识别(FER)是机器了解人类面部表情变化的重要手段。使用单模式面部图像(例如灰度)的表情识别可能会受到光照变化和缺少详细的表情相关信息的困扰。在这项研究中,多模式面部图像(例如面部灰度,深度和局部二值模式(LBP))用于识别六种基本面部表情,即幸福,悲伤,愤怒,厌恶,恐惧和惊奇。面部深度图像最初用于鲁棒的面部检测。在深度信息的帮助下,深部几何特征由面部界标点中的点位移和角度变化表示。通过将表达突出的贴片的LBP直方图连接起来而获得的局部外观特征被用来识别那些仅通过几何变化难以捕获的表达变化。此后,基于特征选择的改进的随机森林分类器用于识别不同的面部表情。基准数据集中的比较评估结果表明,所提出的方法优于基于手工特征的几种最新FER方法。所提出的方法的能力可与流行的基于卷积神经网络的FER方法相媲美,但对训练数据和高性能硬件平台的需求却更少。

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