手部形状识别的多阶段分层算法

M. Farouk, Alistair Sutherland, Amin A. Shoukry
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引用次数: 6

摘要

提出了一种基于主成分分析(PCA)降维和特征提取的多阶段分层手形识别算法。本文讨论了图像模糊对PCA构建数据流形的影响,以及构建数据流形的不同方法。为了对输入符号对象的手部形状进行分类,并对平移和旋转等线性变换保持不变,使用了多级分层分类器结构。测试中使用了计算机生成的不同爱尔兰手语形状的图像。实验结果表明了该算法的准确性和性能。
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A Multistage Hierarchical Algorithm for Hand Shape Recognition
This paper represents a multistage hierarchical algorithm for hand shape recognition using principal component analysis (PCA) as a dimensionality reduction and a feature extraction method. The paper discusses the effect of image blurring to build data manifolds using PCA and the different ways to construct these manifolds. In_order to classify the hand shape of an incoming sign object and to be invariant to linear transformations like translation and rotation, a multistage hierarchical classifier structure is used. Computer generated images for different Irish Sign Language shapes are used in testing. Experimental results are given to show the accuracy and performance of the proposed algorithm.
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