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An integrated approach for efficient analysis of facial expressions

机译:一种有效分析面部表情的综合方法

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This paper describes a new automated facial expression analysis system that integrates Locality Sensitive Hashing (LSH) with Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) to improve execution efficiency of emotion classification and continuous identification of unidentified facial expressions. Images are classified using feature-vectors on two most significant segments of face: eye segments and mouth-segment. LSH uses a family of hashing functions to map similar images in a set of collision-buckets. Taking a representative image from each cluster reduces the image space by pruning redundant similar images in the collision-buckets. The application of PCA and LDA reduces the dimension of the data-space. We describe the overall architecture and the implementation. The performance results show that the integration of LSH with PCA and LDA significantly improves computational efficiency, and improves the accuracy by reducing the frequency-bias of similar images during PCA and SVM stage. After the classification of image on database, we tag the collision-buckets with basic emotions, and apply LSH on new unidentified facial expressions to identify the emotions. This LSH based identification is suitable for fast continuous recognition of unidentified facial expressions
机译:本文介绍了一种新的自动面部表情分析系统,将具有主要成分分析(PCA)和线性判别分析(LDA)集成了地区敏感散列(LSH),以提高情感分类的执行效率和未识别的面部表情。使用特征向量分类图像在两个最重要的面部:眼段和口段。 LSH使用一系列散列函数来映射一组碰撞桶中的类似图像。从每个群集中获取代表性图像通过在碰撞桶中修剪冗余类似图像来减少图像空间。 PCA和LDA的应用降低了数据空间的尺寸。我们描述了整体架构和实施。性能结果表明,LSH与PCA和LDA的集成显着提高了计算效率,并通过降低PCA和SVM阶段的相似图像的频率偏压来提高准确性。在数据库上进行图像的分类后,我们标记具有基本情绪的碰撞桶,并在新的身份不明的面部表情上应用LSH以识别情绪。基于LSH的识别适用于不识别未识别的面部表情

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