电子商务中基于模糊模型的人机交互面部情感识别

A. Jamshidnejad, A. Jamshidined
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引用次数: 8

摘要

为了进一步检测电子商务中的人的行为,本文提出了一种基于模糊技术的人脸表情识别模型。在该模型中,提出模糊聚类模型对图像进行分类,提取图像特征作为分类系统的输入。模型的结果是预先选择的情绪类别之一。该模型的动机是为了解决人类感知与机器识别之间的不一致。为此,我们使用模糊c均值(FCM)将给定数据集划分为同质聚类,以解释人脸图像的情感;同质是指同一聚类中的所有点具有相似的属性,并且它们与其他聚类中的点不具有相似的属性。由于每个聚类过程本质上都是不确定的,因此模糊分类方法最初应用于该领域。相对于传统的清晰集,模糊集的概念提供了真实词对象模型的更健壮的表示。该模型基于理论基础和FCM经验结果,通过对不同的真实数据集进行划分,展示了聚类算法的实用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial emotion recognition for human computer interaction using a fuzzy model in the e-business
In this paper we present a facial expression recognition model using fuzzy techniques in order to further detect human behaviors in the e-business. In this model, fuzzy clustering model is proposed to classify images, after extract the features that are used as inputs into a classification system. The outcome of the model is one of the preselected emotion categories. The motivation for the model is to deal with the inconsistency between human perception and the machine recognition. For this purpose, we use the Fuzzy c-Means (FCM) to partition a given data set into homogeneous clusters for interpreting the emotion of a face image; by homogeneous we mean that all points in the same cluster share similar attributes and they do not share similar attributes with points in other clusters. Since every clustering process is uncertain in nature, fuzzy classification methods are initially applied in this field. Regarding conventional crisp sets, the concepts of fuzzy sets provides more robust representations of the model of real word objects. The proposed model is based on the theoretical foundations and FCM empirical results in which it is presented the usefulness and effectiveness of the clustering algorithm by partitioning different real data sets.
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