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Hand gesture recognition based on HOG-LBP feature

机译:基于HOG-LBP特征的手势识别

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摘要

With the rapid development of information technology, human-computer interaction (HCI) is now experiencing the transition from traditional command line interface to novel natural user interface such as speech and gesture, thus vision-based hand gesture recognition is one of the key technologies to realize natural HCI. However, the performance of gesture recognition is often influenced by variations among lighting conditions, complex backgrounds and so on. This paper proposes a new fusion approach of hand gesture recognition by combining the HOG and uniform LBP feature on blocks, in which HOG features depict hand shape and LBP features depict hand texture. Support Vector Machine with radial basis function (RBF) as kernel function is adopted to train the hand gesture classifier. Experimental results show that HOG-LBP fused feature performs well on two sub-datasets from NUS hand posture dataset-II, reaching a relative high recognition accuracy of 97.8% and 95.07% respectively. The comparison experiments among HOG-LBP, HOG and LBP features also show that the HOG-LBP feature performs better than one single feature.
机译:随着信息技术的飞速发展,人机交互(HCI)正在经历从传统的命令行界面到新型自然用户界面(如语音和手势)的过渡,因此基于视觉的手势识别是其中的关键技术之一。实现自然的人机交互。但是,手势识别的性能通常受光照条件,复杂背景等之间的变化影响。通过结合块上的HOG和统一的LBP特征,提出了一种新的手势识别融合方法,其中HOG特征描述了手的形状,LBP特征描述了手的纹理。采用以径向基函数(RBF)为核函数的支持向量机训练手势分类器。实验结果表明,HOG-LBP融合特征在NUS手姿数据集-II的两个子数据集上表现良好,分别达到了97.8 \%和95.07 \%的相对较高的识别精度。 HOG-LBP,HOG和LBP特征之间的比较实验还表明,HOG-LBP特征的性能优于单个特征。

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