Face expression image detection and recognition based on big data technology

Shuji Deng
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引用次数: 0

Abstract

This research addresses the deficiencies in current dynamic sequence facial expression recognition methods, which suffer from limited accuracy and effectiveness. The primary objective is to introduce an innovative approach that leverages big data technology for improved facial expression detection and recognition. The methodology encompasses several vital steps. The integral graph method is employed to capture dynamic sequences of facial expressions, and a weak facial feature classifier is utilized for image preprocessing. To enhance accuracy, a dynamic sequence model is devised for feature extraction. The study combines the personalized learning algorithm with the optical flow technique to pinpoint critical facial expression junctures and facilitate dynamic sequence recognition. The investigation reveals the inadequacy of current dynamic sequence facial expression recognition methods in accurately categorizing expressions. The proposed approach yields promising results, achieving a peak expression division accuracy of 91.78% in simulations. Notably, the personalized learning recognition method demonstrates enhanced robustness in categorizing expressions, effectively capturing intricate facial details and augmenting overall recognition efficacy. This research thus contributes to advancing facial expression recognition technology, addressing critical shortcomings in current methods.

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基于大数据技术的人脸表情图像检测与识别
本研究解决了当前动态序列人脸表情识别方法的不足,这些方法的准确性和有效性有限。主要目标是引入一种利用大数据技术改进面部表情检测和识别的创新方法。该方法包括几个重要步骤。采用积分图方法获取人脸表情的动态序列,并采用弱人脸特征分类器进行图像预处理。为了提高精度,设计了一个动态序列模型用于特征提取。该研究将个性化学习算法与光流技术相结合,以精确定位关键的面部表情转折点,并促进动态序列识别。研究揭示了当前动态序列人脸表情识别方法在准确分类表情方面的不足。所提出的方法产生了有希望的结果,在模拟中实现了91.78%的峰值表达划分精度。值得注意的是,个性化学习识别方法在对表情进行分类方面增强了鲁棒性,有效地捕捉了复杂的面部细节,并提高了整体识别效率。因此,这项研究有助于推进面部表情识别技术,解决当前方法中的关键缺陷。
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