Grammatical Facial Expression Recognition Basing on a Hybrid of Fuzzy Rough Ant Colony Optimization and Nearest Neighbor Classifier

M. Gafar
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引用次数: 3

Abstract

Humans use facial expressions in many contexts to communicate their ideas or weigh their emotions. Deaf people depend on these expressions mainly in daily communications. They use the facial expressions to add the grammatical meaning for sentences of similar words. Therefore, developing smart systems to recognize facial expressions becomes a necessity. The main obstacle comes from the uncertainty and ambiguity of grammatical facial decisions. Hence, fuzzy and fuzzy rough artificial intelligent algorithms formulate feasible solutions to make decisions in such situations. This paper presents a hybrid of fuzzy rough feature selection inspired by ANT Colony Optimization (FRFS-ACO) and fuzzy rough nearest neighbor (FRNN) classification algorithms to decide about different facial expressions. The proposed hybrid is compared to other artificial algorithms and hybrids to judge its accuracy and efficiency. The experiments are accomplished using a standard grammatical facial expressions data set with nine different emotions recorded by Microsoft Kinect sensor and kept on the UCI machine learning repository. The experiments and comparisons clarified that the proposed hybrid provide feasible average accuracy level of 93.7% and dramatically reduced the required classification time.
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基于模糊粗糙蚁群优化和最近邻分类器混合的语法面部表情识别
人类在很多情况下使用面部表情来交流想法或权衡情绪。聋人在日常交流中主要依靠这些表达。他们用面部表情来为相似单词的句子添加语法意义。因此,开发识别面部表情的智能系统成为必要。主要的障碍来自于面部语法决定的不确定性和模糊性。因此,模糊和模糊粗糙人工智能算法为这种情况下的决策制定了可行的方案。本文提出了一种基于蚁群优化(FRFS-ACO)的模糊粗糙特征选择与模糊粗糙近邻(FRNN)分类算法的混合方法来确定不同的面部表情。将该算法与其他人工算法和混合算法进行比较,判断其准确性和效率。实验是使用微软Kinect传感器记录的九种不同情绪的标准语法面部表情数据集完成的,并保存在UCI机器学习存储库中。实验和比较表明,该混合算法的平均准确率可达93.7%,大大缩短了所需的分类时间。
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