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Facial Expressions Recognition Using Markov Stationary Feature - Vector Quantization and Support Vector Machine Method

机译:使用Markov固定功能的面部表达识别 - 矢量量化和支持向量机方法

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Facial expression is a form of nonverbal communication that can convey the emotional state of someone to the person who observes it. Research on the recognition of facial expressions is one of the interesting fields in computer science. This research aims to improve the accuracy of recognition performance. The process carried out in this research is to perform feature extraction and image classification. Markov Stationary Feature - Vector Quantization (MSF-VQ) method is used for feature extraction and Support Vector Machine (SVM) for image classification. Data set in used is 1440 data with six classifications of facial expressions. The results of the testing showed 97.41% which stated that this method could be recommended to be applied in the facial expressions recognition.
机译:面部表情是一种非语言沟通形式,可以向观察它的人传达某人的情绪状态。 对面部表情的认可是计算机科学的有趣领域之一。 本研究旨在提高识别性能的准确性。 本研究执行的过程是执行特征提取和图像分类。 Markov静止功能 - 矢量量化(MSF-VQ)方法用于图像分类的特征提取和支持向量机(SVM)。 使用中的数据集是1440个数据,具有六种面部表情分类。 测试结果表明,97.41%,该方法表示可以建议在面部表情识别中应用这种方法。

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