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Real-Time Sign Language Recognition in Complex Background Scene Based on a Hierarchical Clustering Classification Method

机译:基于分层聚类分类方法的复杂背景场景中实时手语识别

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Cameras are embedded in many mobile/wearable devices and can be used for gesture recognition or even sign language recognition to help the deaf people communicate with others. In this paper, we proposed a vision-based gesture recognition system which can be used in environments with complex background. We design a method to adaptively update the skin color model for different users and various lighting conditions. Three kinds of features are combined to describe the contours and the salient points of hand gestures. Principle Component Analysis (PCA), Linear Discriminant Analysis (LDA), and Support Vector Machine (SVM) are integrated to construct a novel hierarchical classification scheme. We evaluated the proposed recognition method on two datasets: (1) the CSL dataset collected by ourselves, in which images were captured in complex background. (2) The public ASL dataset, in which images of the same gesture were captured in different lighting conditions. Our method achieves the accuracies of 99.8% and 94%, respectively, which outperforms the existing works.
机译:相机嵌入许多移动/可穿戴设备中,可用于手势识别甚至手术识别,以帮助聋人与他人沟通。在本文中,我们提出了一种基于视觉的手势识别系统,可用于复杂背景的环境中。我们设计一种自适应更新不同用户和各种照明条件的肤色模型的方法。组合三种特征来描述手势的轮廓和突出点。原理成分分析(PCA),线性判别分析(LDA)和支持向量机(SVM)被集成以构建新颖的分层分类方案。我们在两个数据集中评估了所提出的识别方法:(1)由自己收集的CSL数据集,其中在复杂的背景中捕获图像。 (2)公共ASL数据集,在不同的照明条件下捕获相同手势的图像。我们的方法分别实现了99.8%和94%的准确性,这优于现有的作品。

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